Comparison of Atmospheric Correction Methods in Mapping Timber Volume with Multitemporal Landsat Images in Kainuu, Finland

Size: px
Start display at page:

Download "Comparison of Atmospheric Correction Methods in Mapping Timber Volume with Multitemporal Landsat Images in Kainuu, Finland"

Transcription

1 Comparison of Atmospheric Correction Methods in Mapping Timber Volume with Multitemporal Landsat Images in Kainuu, Finland I. Norjamäki and T. Tokola Abstract Using remote sensing to monitor large forest areas usually requires large field datasets. The need for extensive data collection can be reduced through interpretation of several images simultaneously. This study focused evaluating the accuracy and functionality of stand volume models in overlapping multi-temporal images that could form large areas covering a mosaic of scenes. Various atmospheric correction methods were tested to generalize field information outside the coverage of single images. A dataset consisting of three overlapping Landsat ETM images taken on different dates was used to compare atmospheric correction methods with uncorrected raw data. The methods tested were 6S, SMAC, and DOS. Aerosol data from MODIS were used in retrieving parameters for the 6S algorithm. The coefficient of determination values for the regression models used in estimating the total volume of the standing crop varied from 0.46 to 0.62 and standard error from 57 to 77 m 3 /ha, depending on the image calibration method used. All the atmospheric correction methods improved the classification of the multitemporal images. In comparison to the uncorrected data, the relative RMSE values for the multitemporal images decreased by an average of 6 percent on with DOS, 14 percent with SMAC, and 15 percent with 6S. Introduction Material from remote sensing is typically combined with low-intensity field sampling to obtain a general view of forest resources. Earth observation data provide a practical tool for the mapping and frequent monitoring of landcover over large regions. Current optical satellite systems were used in regional forest inventories (Jaakkola and Saukkola, 1979; Jaakkola et al., 1988; Muinonen and Tokola 1990; Tomppo 1993; Bauer et al., 1994). The use of high-resolution data in regional surveys is limited mainly by the cost and difficulty of automatically interpreting detailed and complexly textured information (Hyppänen, 1996). The main methods used for the estimation of forest characteristics have been stratification of digital remotesensing data to homogeneous spectral classes, either according to an unsupervised or supervised scheme (e.g., Poso et al., 1984 and 1987; Horler and Ahern, 1986; Häme, 1991; Brockhaus and Khorram, 1992) and direct estimation of characteristics using regression analysis (e.g., Tomppo, 1987, 1992; Ripple et al., 1991; Ardö, 1992). The non- Department of Forest Resource Management, University of Helsinki, Finland (timo.tokola@helsinki.fi). parametric weighted knn-based method (Kilkki and Päivinen, 1986; Muinonen and Tokola, 1990; Tomppo 1993 and 1998; Tokola et al. 1996; Trotter et al. 1997; Nilsson and Ranneby, 1997) was also used for similar purposes. All estimates derived using these methods will eventually be based on field data, while remote-sensing data are generally used to expand the data by interpolation over non-sampled areas. The variables of interest are modeled separately in the regression approach. In the stratification and weighted knn approaches, however, several variables can be estimated simultaneously. A nonparametric method, such as the knn approach, needs extensive reference field data and therefore is very expensive for large-scale forest inventories. The accuracy of satellite image-based forest inventories is highly dependent on the quality of the satellite data interpreted. The average time window for acquiring optical images for forest inventory purposes in Finland is under four months. The relatively long repeat time for alternative satellites, cloud-free images for creating multi-image mosaics are frequently not available. When such data exist, they usually consist of images from many different phases of the growing period of the forest, and the spectral characteristics of different optical satellite systems need to be calibrated. Since the cost of Landsat images has recently decreased, there has been growing interest in the use of multitemporal Landsat imagery, and this imagery type was previously studied (Helmer et al., 2000; Lefsky et al., 2001; Oetter et al., 2001; Song and Woodcock, 2002 and 2003; Hadjimitsis, et al., 2004). Often other satellite data are required to fill the gaps between existing Landsat mosaics. There are many factors that cause uncertainty in the use of multitemporal satellite data: aging of the instrument, atmospheric conditions, topography, phenology, distance of the target to the sun, and sun and view angles. However, the problem is normally avoided using relative normalization among images (Olsson, 1993 and 1995; Tokola et al., 1999; Cohen et al., 2001). Another approach, absolute image calibration, is still an attractive alternative, although there are many difficulties in modeling all the physical conditions required. In optical remote sensing, the atmosphere is the primary source of noise preventing the accurate measurement of surface reflectance Photogrammetric Engineering & Remote Sensing Vol. 73, No. 2, February 2007, pp /07/ /$3.00/ American Society for Photogrammetry and Remote Sensing PHOTOGRAMMETRIC ENGINEERING & REMOTE SENSING February

2 (Song and Woodcock, 2003). These factors are additive or act in combination with multiplicative factors; thus ratiobased techniques give only approximate results (Egan, 2004). An important atmosphere-related factor that reduces radiometric accuracy is the proportion of aerosols and gases present, which directly affects the amount of scattering and absorption registered by the instrument. Another important effect is caused by satellite-sun geometry. Various algorithms were proposed for removing these effects from the satellite data; including image-based algorithms (Chavez, 1988, 1989, and 1996; Liang, 2001 and 2002; Song et al., 2001; Song and Woodcock, 2003) and a number of methods that use radiative transfer codes (RTCs), which require in situ measurements of atmospheric conditions (Kneizys et al., 1988; De Haan et al., 1991; Rahman and Dedieu 1994; Vermote et al., 1997; Hu et al., 2001). In addition, combinatorial methods that use timedependent aerosol measurements and image-based information were developed (Liang et al., 1997; Ouaidrari and Vermote, 1999; Wen et al., 1999). Algorithms were well reviewed in Liang (2004). In Finland, environmental authorities, paper companies, and teleoperators use regional forest maps on scales of 1: : for planning tasks as well as for timber procurement. Large-area forest inventory based on Landsat image interpretation is often a suitable method for producing such maps. Normally, the interpretation of multiple images requires large field datasets from the areas in each scene, which makes interpretation costly. Here, various atmospheric correction methods were tested to create a multitemporal image mosaic covering the target area and apply the same interpretation procedure to the entire area. The method can be used when a large area covering the same field dataset (training data) is used for the entire area of the image mosaic. This study is mainly focused on evaluating the accuracy and functionality of stand volume models in multitemporal Landsat images after atmospheric correction and image calibration. Other variables of interest include height and the proportion of different tree species. The models predicting the proportion of different tree species are used to estimate the dominant tree species. Material Tests for the atmospheric correction methods were performed using three Landsat ETM images taken on different dates (Table 1) in the region of Kainuu, northern Finland (Figure 1). About 95 percent of the land area of Kainuu is forested and the dominant tree species is Scotch pine (Pinus sylvestris L.). The average volume for the forests is 73 m 3 /ha. Dryish mineral soils predominate in the eastern and northern parts of the province, while peatlands are characteristic for the western areas. Most of the forests within the study area are privately owned and relatively intensively managed. The data were distributed in two datasets, located about 150 km apart (Figure 1). The first of the datasets was measured during the summer of 2002 and included 277 sample plots. The remaining sample plots (167) were measured during the summer of Sampling of the field data was done from U-shaped clusters, each of which contained 8 to 15 sample plots 150 to 200 m apart. Advance information (old classification data and visual interpretation) was used so that the data to be collected would include as much variation in height, basal area, and tree species composition as possible. The sample plots were located using GPS, and the suitability of the plot was evaluated. If the field plot hit a stand in which recent cutting or natural damage had occurred, it was rejected. It was also required that the measured plot be located in a stand with a minimum area of 0.5 ha and that the distance TABLE 1. LANDSAT ETM IMAGES USED IN THE STUDY Path Row Acquisition Date Figure 1. Study area and coverage of the Landsat images used. 156 February 2007 PHOTOGRAMMETRIC ENGINEERING & REMOTE SENSING

3 TABLE 2. MEAN VOLUMES OF THE FIELD DATA AND THE SHARE OF PINE, SPRUCE AND DECIDIOUS PLOTS BY FOREST CLASSES Mean Vol. (m 3 /ha) No. of Plots Pine Plots (%) Spruce Plots (%) Decidious Plots (%) Mineral soils Seedling stands Young aged stands Middle aged stands Old forest stands Peatlands Seedling stands Young aged stands Middle aged stands Old forest stands TABLE 3. VOLUME CLASS DISTRIBUTION OF THE FIELD DATA TABLE 4. KEY STATISTICS FOR THE REFERENCE MODELS Class to the stand border be more than 25 m. The basal area (m 2 /ha) and mean height were measured by tree species, and the volume was calculated using the volume equations of Nyyssönen (1954). Other variables such as fertility and age were also assessed. Of the 444 sample plots, 315 were situated in mineral soils and 129 on peatlands (Table 2). The mean volume for the sample plots was 130 m 3 /ha in mineral soils and 104 m 3 /ha on peatlands. Scotch Pine was the dominant tree species in the field data collected. There was a lack of deciduous stands on peatlands, which was due to the natural tree species composition of the study area. The volume distribution of the field data was also reviewed by classifying the sample plots into volume classes of 50 m 3 /ha (Table 3). The distribution between classes was fairly even to as much as 20 m 3 /ha, after which the number of sample plots per class decreased. Methods Plots in Class 50 m 3 /ha m 3 /ha m 3 /ha m 3 /ha m 3 /ha m 3 /ha 30 Estimation Method for Stand Characteristics The present study was based on multitemporal Landsat images and field data that were used to in supervised estimation. Separate stand volume models based on the field data and spectral values were created for raw images, as well as for atmospherically corrected images, referred to as reference models. The quality of the reference models was tested by comparison with other images. The result was evaluated by classifying the estimates in classes of 50 m 3 /ha. The proportions of estimates falling into the correct class and neighboring classes were calculated. The 50 m 3 /ha classes were chosen for practical purposes (Table 4). After the most viable atmospheric correction method was found, new regression models were created to predict the proportion of different tree species (deciduous trees, pine, and spruce). For modeling the volume, an ordinary least squares (OLS) regression was applied, and for modeling the proportions of tree species a seemingly unrelated regression (SUR) method (e.g., Zellner, 1962; Johnston, 1972; Binkley and Nelson, 1988) was used. An SUR can be used for estimating the result of several equations simultaneously when a set of equations is assumed to have cross-equation Reference Calibration S e, Bias, Image Method m 3 /ha r 2 m 3 /ha sd b n Raw Raw Raw DOS DOS DOS SMAC SMAC SMAC S S S error correlation. If disturbances in the various equations are correlated, joint estimation with SUR is in general more efficient than a separate estimation using OLS (Binkley and Nelson, 1988). The coefficients for the set of models are obtained first with OLS, the covariance matrix between the error terms of the models is calculated, and finally new coefficients for the set of equations are estimated. The estimates of tree species proportions were used to classify the pixels according to the estimated dominant tree species. The kappa value (Rosenfeld and Fitzpatrick-Lins, 1986) was used as a measure of classification accuracy, and the statistical significance of the differences in kappa values before and after correction were tested with the t-test. The t-test values were calculated from the standard error of the kappa estimates (Terry, 1987). The form of the stand growing stock models (m 3 /ha) was y e, and for the proportion of species volumes the form of the model was arcsin(sqrt(y)) f( ), where the linear combination of spectral values from Landsat bands 2 through 5 and their transformations to reflectance following atmospheric correction. The ratio, product, logarithm, and square root of the original bands were used in the transformations. Atmospheric Correction Methods Three different methods were tested with image calibration: (a) Dark Object Subtraction (DOS), (b) Simplified Method for Atmospheric Correction (SMAC), and (c) the Second Simulation of the Satellite Signal in the Solar Spectrum (6S) atmospheric model. The first is a nonparametric image-based method that is suitable for areas with dense vegetation. PHOTOGRAMMETRIC ENGINEERING & REMOTE SENSING February

4 When atmospheric scattering optical depths and aerosol parameters are known from external sources, RTCs, such as SMAC and 6S, can be used in atmospheric calibration. The results from atmospherically corrected images were compared with those calculated from raw data with no atmospheric correction applied. DOS-based methods are widely used for atmospheric correction because they are relatively simple to use and utilize only the information derived from the image itself. The DOS-based approach assumes the existence of such objects that have zero or near zero surface reflectance. With this assumption, the minimum sensor signal (DN) value in the histogram is considered to be an effect of the atmosphere and is subtracted from all the pixels (Chavez, 1989). Song et al. (2001) studied the accuracy of four different DOS-based methods with respect to classification and change detection. The best results were achieved using a DOS3 method. This model was adopted for our study with the exception that the diffuse downward radiation at the surface was considered to be zero. Surface reflectance is calculated in the DOS3 model as presented by Kaufman and Sendra (1988) and by using certain simplifying assumptions. The model computes atmospheric transmittance from the target towards the sensor and the transmittance in the illumination direction, assuming the presence of only Rayleigh scattering but no aerosols. The optical thickness for Rayleigh scattering is estimated using the method of Kaufman (1989). Due to atmospheric scattering effects, the path radiance is estimated assuming 1 percent surface reflectance for dark objects (Chavez, 1989 and 1996; Moran et al., 1992; Song et al., 2001). The second technique used here was the SMAC method (Rahman and Dedieu, 1994; Häme et al., 2001), which is a semi-empirical atmospheric correction method based on the 5S model (a Simplified Method for the Atmospheric Correction of Satellite Measurements in the Solar Spectrum). In this model, the raw digital counts are first converted to top-ofatmosphere (TOA) reflectances, using time-dependent calibration coefficients. These reflectances are then converted to atmospherically corrected reflectances. The most important of the input parameters for the algorithm is aerosol optical depth (AOD). The ratio of the TOA reflectances of ETM channels 3 and 7 are used for defining the AOD value. Here, an AOD surface was computed, and the mean AOD value was used in atmospheric correction and calibration. The water and ozone contents were assigned default values. The third method, the 6S model, is based on the radiative transfer theory developed by Chandsarekhar (1950) and takes into account the main atmospheric effects: gaseous absorption by water vapor, oxygen, ozone, and carbon dioxide and scattering caused by aerosols and molecules. The input parameters for the model are the sun-sensor geometry, atmospheric model for gaseous components, aerosol model (type and concentration), AOD, ground reflectance, and spectral band. The model requires several measurements of atmospheric optical properties at the time of image acquisition, which often limits the use of the model. The unavailability of accurate atmospheric data is one of the main reasons why in many applications only such correction algorithms that use the information derived from the image itself are used operationally. Many of the parameters used in the 6S model can be derived using the data from the Moderate-Resolution Imaging Spectroradiometer (MODIS) satellite (e.g., Kaufman et al., 1997). The accuracy of MODIS was studied by comparing the observed data with the data measured using ground-based sun photometers in the Aerosol Robotic Network (AERONET) which can achieve an AOD accuracy of ( a ) (Holben et al., 1998 and 2001). Most of the MODIS aerosol retrievals, according to Chu et al. (2002), are found within the retrieval error of a ( a ). In present study, the parameters derived from the MODIS data included the altitude, pressure, temperature, and H 2 O and O 3 densities, which were computed from the MODIS Atmosphere Profile product (MOD07_L2) dataset (Menzel et al., 2002). The AOD at 550 nm was computed from the MODIS Atmosphere Profile product (MOD04_L2) dataset (Kaufman and Tanré, 1998). Parameters were calculated as averages from cloud-free pixels in a window of 10 km 10 km. Here, the aerosol model was maintained at constant levels. Prior to running the code, the sensor signal was converted to at-satellite radiance using the relation L sat G(DN) B, where G is the sensor gain, and B the bias. However, the applicability of MODIS data is dependent on the vegetation cover. Estimation of aerosol parameters is based on the DOS approach and requires dense vegetation in the target area. This requirement is fulfilled in widespread areas of Scandinavia. Results The methods used for retrieving the AOD were different for 6S and SMAC. AOD estimates derived for SMAC were generally larger than for 6S. The mean AOD values computed for SMAC were 0.15 (image ), 0.18 (image ), and 0.21 (image ); the AOD values retrieved from MODIS were 0.08, 0.04, and 0.16, respectively. Variation also existed in AOD within the coverage of the images (Figure 2); the effect of intra image AOD variation was ignored in both cases (6S and SMAC). Since the image acquired in August was relatively cloudy (14 percent), its atmospheric optical properties greatly differed from those of the other two images. The most significant differences were in the AOD value and water vapor content. This increased the uncertainty of image correction, which can also be seen in the volume estimation accuracy (Table 5). The standard error values for the reference models were between and m 3 /ha and the bias was between 0.35 and 2.46 m 3 /ha (Table 3). Atmospheric correction did not significantly affect the accuracy of the reference models. Regardless of the correction method employed, the most accurate models were achieved when Figure 2. The interpolated AOD surface ( ) within the study area (100 km 100 km) at 550 nm (MODIS retrieval). 158 February 2007 PHOTOGRAMMETRIC ENGINEERING & REMOTE SENSING

5 TABLE 5. EFFECT OF ATMOSPHERIC CORRECTION ON KEY STATISTICS Correction Method Reference Image Compared Image s e, m 3 /ha RMSE, % Bias, m 3 /ha Correct Class (%) Class 1 (%) Raw Raw Raw DOS DOS DOS SMAC SMAC SMAC S S S the satellite data from July and the most inaccurate when the satellite data from late May were used; the differences were, however, insignificant. The reference model was applied to two similarly processed images from another point in time, and the statistics were calculated. The result was evaluated by classifying the estimates in classes of 50 m 3 /ha. The proportions of estimates falling into the correct class and neighboring classes were calculated. In general, the standard error estimates for overlapping images increased to some extent, but the most significant was the increment of bias (Table 5 and Figure 3). When the raw reference models were applied (with no correction procedure) to two other neighboring images, the bias was between and m 3 /ha. The amount of bias has a direct deteriorating effect on the classification results. All atmospheric correction methods improved the classification results of the multitemporal images used. When the SMAC and 6S results were compared with the uncorrected data, SMAC decreased the bias by a mean of 67 percent whereas 6S decreased the bias by 61 percent (Figure 3). The biases for the DOS3-corrected images remained quite high decreasing a mean of 12 percent. Then, differences between relative root-meansquare-error (RMSE) values were minor compared to differences in bias values (Table 5). This indicates that atmospheric correction method mainly correct systematic error. The results from the 6S and SMAC corrections were similar. When the reference SMAC models were applied, the biases for the two overlapping images were between and m 3 /ha. Of the estimates, to percent fell into the correct class and to percent into the correct or neighboring class. The biases for the 6S-corrected datasets were between and m 3 /ha. Of the estimates, to percent fell into the correct class and to percent into the correct or neighboring class. The classification accuracy decreased when the volume of the sample plot exceeded 200 m 3 /ha (Figure 4). As generated with the classification method proposed, the total volume of growing stock at the municipal level was overestimated by a mean of 12 percent compared with the statistics from the ninth National Forest Inventory (NFI). The test was done using the statistics from five municipalities around the study area. The effect of atmospheric correction on the enhancement of tree species estimation accuracy was inconsequential, since the tree species models did not perform particularly well in any situation. When uncorrected reference datasets were used, an average of 62 percent of the plots were included in the correct dominant tree species class, and when the compared overlapping datasets were used, the result was 57 percent. The corresponding figures for 6S-corrected images were 62 percent (reference datasets) and 58 percent (compared datasets). When kappa figures were computed for the dominant tree species classification result, the kappa values were between and for models using uncorrected spectral values, whereas in 6S-corrected models they were between and (Table 6). When the models were applied to the overlapping images, the kappa values were to for uncorrected images and to for 6S-corrected images. Pure deciduous stands (with a proportion of deciduous species of over 95 percent) were recognized accurately in uncorrected reference images and compared images for a mean of 59 percent and 40 percent of PHOTOGRAMMETRIC ENGINEERING & REMOTE SENSING February

6 Figure 3. The root of difference of mean square error (m 3 /ha) between reference model and calibrated image model shows the overall error caused by different calibration methods (line). The bias (m 3 /ha) indicates correct level of calibration of different methods for the compared multitemporal images. the time, respectively. The corresponding figures for 6S corrected images were 53 percent and 49 percent. When the number of species increased, the accuracy of dominant tree species estimation decreased. Distinguishing between pine and spruce plots was rather unreliable. In all cases less than 20 percent of the spruce plots were recognized, since they were dominated by pine plots. Almost all the pine plots were classified correctly, but many of the spruce and deciduous plots were also classified as pine. Figure 4. Timber volume classification accuracy for two multitemporal images corrected with 6S. The reference model is created using the July image. Discussion The standard error for reference models predicting total timber volume varied between 57 and 63 m 3 /ha, and the coefficient of determination values were 0.47 to In Landsat images, the results were similar to those obtained here (Tomppo, 1987; Ardö, 1992; Tokola et al., 1996). Atmospheric correction had little effect on the classification of the reference image, which was also shown in several TABLE 6. COMPARISON OF TREE SPECIES CLASSIFICATION BETWEEN UNCORRECTED AND 6S CORRECTED DATASETS. SIGNIFICANCY FIGURES ARE ALL SIGNIFICANT AT THE 0.05 LEVEL Reference Kappa (Uncorrected Image Kappa (6S Corrected Image Sig. of Differences Between Model Classification) Classification) Uncorrected and 6S, t May July August May July August May July August May July August February 2007 PHOTOGRAMMETRIC ENGINEERING & REMOTE SENSING

7 previous studies (Fraser et al., 1977; Kawata et al., 1990; Song et al., 2001). As expected, estimation of dominant tree species was quite unreliable. Similar results for speciesspecific estimation were obtained in other studies (e.g., Franklin, 1994; Tokola et al., 1996; Huguenin et al., 1997). Although SUR models resulted in more stable results than separate regression models, the overall accuracy was only slightly better than with separate model groups. Pure deciduous tree plots can be recognized with reasonable accuracy, but separation between pine and spruce stands using the empirical models presented here is prone to extensive bias. The dominant coniferous tree species in the field data also predominated in the estimation. In practical forest inventories it may not be realistic to attempt to separate different coniferous species, but rather classify the desired area into deciduous and coniferous pixels. Using auxiliary information, it may be possible to improve tree species estimation. If the tree species composition is known by sub-area, it could be used to assign weights for the estimation. The selection of the dark object is a crucial step in DOSbased models. The use of a wrong dark object value in computation can lead to a significant increment in bias. Song et al. (2001) studied the accuracy of image-based correction algorithms and showed that the DOS3 model gave the best results with respect to classification and change detection. In another study carried out by Song et al. (2003), the simple DOS3 method was compared with methods that use externally measured aerosol data. They found that DOS3 improved the vegetation index (NDVI) value, but still under-corrected the image. Moreover, in estimating greenness DOS3 did not give as favorable a result as the other two algorithms that utilized aerosol data. In our study DOS3 improved the estimation of forest characteristics to some extent, but not enough for empirical models to work well in classifying multitemporal images. Absolute atmospheric correction methods can convert satellite measurements accurately into surface reflectances (Holm et al., 1989; Moran et al., 1992), and this leads to improved classification results when multitemporal satellite images are used. Time-dependent input parameters are needed for the SMAC and 6S methods. This makes their use more complicated than the use of purely image-based algorithms. The atmospheric degradations are expressed in terms of optical depths, in which an optical depth of unity results in an attenuation of 63 percent (Egan, 2004). The vertical optical depth of mid-latitude aerosols undergoes a factor 2 to 10 seasonal variation, depending on the land-use (Egan, 2004). At present, there are sources such as MODIS from which many of these parameters can be obtained with sufficient accuracy. Cloudiness and haze (when the scene includes semitransparent cloud and aerosol layers) can dilute the quality of MODIS data. As was the case here, atmospherically clear scenes are seldom encountered in Finland. Haze can arise from a variety of atmospheric elements, such as water droplets, ice crystals, or fog/smog particles (Kaufman, 1989). The influence of haze on measured radiance is most significant in the visible spectral region (Zhang et al., 2002). For hazy scenes, ancillary data upon which to base an absolute atmospheric correction are often lacking. The imagebased method presented by Liang et al. (2001) showed good results in separating heterogeneous aerosol scattering effects, especially when small scale-variation was clear and identification of hazy regions was obvious. The MODIS data used in this study were unsuitable for the image acquired in August, which evidently increased the uncertainty of the 6S correction. In the present study, differences of no more than 10 to 15 percent after correction at most were seen in forest area reflectance between the images used. Several factors in Finland s forests could lead to bias when a large-area field sample is used in a small-area estimation. One significant factor in uncertainty is the variability in surface reflectance due to phenology (Song and Woodcock, 2003). Even if the leaf spectral properties and the amount of leaves in the canopy could be assumed to be similar among the images used, the observed reflectance may vary within the season. This is due to the changing sun angle, which causes variability in the amount of shadows cast in the canopy. The images used in this study were acquired in different sections of the growing period. Local variation in the development of different plants always occurs especially at the beginning of the growing period. If forest canopies have varying phenology on different acquisition dates, atmospheric correction may not always allow empirical models from one date to be applied to another image. Due to the relatively warm summer of 2002, the leaves of deciduous trees were already full-grown by late May within the study area, although the phenology difference from May to August was quite significant. On the other hand, the phenology between the July and August datasets was hardly notable. Differences in forest stand structure between forest ownership groups are another reason for local variation in forested areas. Soil fertility factors also vary locally within the vegetation zones. Even though the sample plots used in this study (Figure 1) were located within the same plant ecological zone, variability was shown in the soil factors. In the conditions prevailing in Finland, soil type affects the spectral responses received from forested areas. If digital ancillary data are available, e.g., forest or soil type maps concerning the target area, the reliability of sub-area estimation can be improved and more representative field samples chosen based on a priori information (Tokola and Heikkilä, 1997). Geographic distance between sample areas can as easily cause bias in estimates. The best interpretation results using satellite images are achieved when the field data are collected within a 20 km search radius (Tokola, 2000; Katila and Tomppo, 2001; Lappi, 2001). Even though the distance between the remotest plots used in this study was more than 100 km, the distribution of the error terms in the models did not appear to be geographically dependent. The reliability of estimates is also dependent on the size of the forest stand (Poso et al., 1987). The western part of the study area is located in a region with no significant changes in elevation, whereas the eastern part is hilly but slopes gently. Topographic variation may cause bias in satellite image interpretation if no normalization is applied. The primary topographic effect is the change in direct solar radiation on a sloping surface, due to the changing incidence angle between the sun and surface normal. In more mountainous areas, the state of the atmosphere and vegetation is also highly influenced by the relief (Ekstrand, 1996). Song et al. (2003) showed that the NDVI and wetness indices are more resistant to topographic influence than brightness and greenness. Topographic normalization of Landsat TM image pixels improved the interpretation of results of forest site fertility classes (Tomppo, 1992). Here, no topographic normalization was applied, because the sample data were collected only from gently sloping or totally flat surfaces. Still, topographic variation caused uncertainty in classification of other parts of the image. In comparison to the uncorrected data, the relative RMSE values for the multitemporal images decreased by a mean of 6 percent with DOS, 14 percent with SMAC, and 15 percent with 6S. Atmospheric correction methods mainly correct systematic error of timber volume estimation. Although all the atmospheric correction methods improved the classification of the multitemporal images, the importance of ground truth is obvious. There are several reasons, why similar spectral responses are recorded in the satellite from different objects. PHOTOGRAMMETRIC ENGINEERING & REMOTE SENSING February

8 Still, the MODIS data can provide a good data source for estimating optical variation within Landsat scenes. For regional planning and large-scale inventories, the importance of unbiased estimates can be more important than precision pixel estimates. Estimates could be calibrated regionally to a more reliable level, through the use of statistically accurate background information. In Finland, for example, NFI municipal estimates or forest center statistics could be used as calibration references and consistency with different data sources could be achieved. References Ardö, J., Volume quantification of coniferous forest compartments using spectral radiance recorded by Landsat Thematic Mapper, International Journal of Remote Sensing, 13: Bauer, M.E., T.E. Burk, A.R. Ek, P.R. Coppin, S.D. Lime, T.A. Walsh, D.K. Walters, W. Befort, and D.F. Heinzen, Satellite inventory of Minnesota forest resources, Photogrammetric Engineering & Remote Sensing, 60: Binkley, J.K., and C.H. Nelson, A note on the efficiency of seemingly unrelated regression, American Statistician, 42: Brockhaus, J.A., and S. Khorram, A comparison of SPOT and Landsat TM data for use in conducting inventories of forest resources, International Journal of Remote Sensing, 13: Chandrasekhar, S Radiative Transfer, Oxford University Press, U.K., 393 p. Chavez, P.S., Jr., An improved dark-object subtraction technique for atmospheric scattering correction of multispectral data, Remote Sensing of Environment, 24: Chavez, P.S., Jr., Radiometric calibration of Landsat Thematic Mapper multispectral images, Photogrammetric Engineering & Remote Sensing, 55: Chavez, P.S., Jr., Image-based atmospheric corrections Revisited and improved, Photogrammetric Engineering & Remote Sensing, 62: Chu, D.A., Y.J. Kaufman, C. Ichoku, L.A. Remer, D. Tanré, and B.N. Holben, Validation of MODIS aerosol optical depth retrieval overland, Geophysical Research Letters, 29(12). Cohen, W.B., T.K. Maiersperger, T.A. Spies, and D.R. Oetter, Modeling forest cover attributes as continuous variables in a regional context with Thematic Mapper data, International Journal of Remote Sensing, 22(12): De Haan, J.F., J.W. Hovenier, J.M.M. Kokke, and H.T.C. Stokkom, Removal of atmospheric influences on satellite-borne imagery: A radiative transfer approach, Remote Sensing of Environment, 37:1 21. Egan, W.G., Optical Remote Sensing, Science and Technology, Marcel Dekker, Inc., New York, 506 p. Ekstrand, S Landsat -TM based forest damage assessment: Correction for topographic effects, Photogrammetric Engineering & Remote Sensing, 62: Franklin, S.E., Discrimination of subalpine forest species and canopy density using digital CASI, SPOT PLA, and Landsat TM data, Photogrammetric Engineering & Remote Sensing, 60: Fraser, R.S., O.P. Bahethi, and A.H. Al-Abbas, The effect of atmosphere on the classification of satellite observation to identify surface features, Remote Sensing of Environment, 6: Hadjimitsis, D.G., C.R.I. Clayton, and V.S. Hope, An assessment of the effectiveness of atmospheric correction algorithms through the remote sensing of some reservoirs, International Journal of Remote Sensing, 25: Häme, T Spectral interpretation of changes in forest using satellite scanner images, Helsinki, Acta Forestalia Fennica, 222, 111 p. Häme, T., P. Stenberg, K. Andersson, Y. Rauste, P. Kennedy, S. Folving, and J. Sarkeala, AVHRR-based forest proportion map of the Pan-European area, Remote Sensing of Environment, 77: Helmer, E.H., S. Brown, and W.B. Cohen, Mapping montane tropical forest successional stage and land use with multi-date Landsat imagery, International Journal of Remote Sensing, 21: Holben, B.N., T.F. Eck, I. Slutsker, D. Tanré, J.P. Buis, A. Setzer, E. Vermote, J.A. Reagan, Y.J. Kaufman, T. Nakajima, F. Lavenu, I. Jankowiak, and A. Smirnov, AERONET A federated instrument network and data archive for aerosol characterization, Remote Sensing of Environment, 66:1 16. Holben, B.N., D. Tanré, A. Smirnov, T.F. Eck, I. Slutsker, N. Abuhassan, W.W. Newcomb, J.S. Schafer, B. Chatenet, F. Lavenu, Y.J. Kaufman, J. Vande Castle, A. Setzer, B. Markham, D. Clark, R. Frouin, R. Halthore, A. Karnieli, N.T. O Neill, C. Pietras, R.T. Pinker, K. Voss, and G. Zibordi, An emerging groundbased aerosol climatology: Aerosol optical depth from AERONET, Journal of Geophysical Research, 106: Holm, R.G., R.D. Jackson, B. Yuan, M.S. Moran, P.N. Slater, and S.F. Bigger, Surface reflectance factor retrieval from Thematic Mapper data, Remote Sensing of Environment, 27: Horler, D.N.H., and F.J. Ahern, Forestry information content of Thematic Mapper data, International Journal of Remote Sensing, 7: Hu, C., F.E. Muller-Karger, S. Andrefouet, and K.L. Carder, Atmospheric correction and cross-calibration of LANDSAT-7/ETM imagery over aquatic environments: A multiplatform approach using SeaWiFS/MODIS, Remote Sensing of Environment, 78: Huguenin, R.L., M.A. Karaska, D. Van Blariconi, and J.R. Jensen, Subpixel classification of bald cypress and tupelo gum trees in Thematic Mapper imagery, Photogrammetric Engineering & Remote Sensing, 63: Hyppänen, H., Spatial autocorrelation and optimal spatial resolution of optical remote sensing data in boreal forest environment, International Journal of Remote Sensing, 17: Jaakkola, S., and P. Saukkola, Timber volume estimation and cutting opportunity mapping using multispectral remote sensing techniques, The Photogrammetric Journal of Finland, 8(1). Jaakkola, S., S. Poso, and G. Skråmo, Satellite remote sensing for forest inventory - Experiences in the Nordic countries, Scandinavian Journal of Forest Research, 3: Johnston, J Econometric Methods, 2nd edition. McGraw-Hill. 437 p. Katila, M., and E. Tomppo, Selecting estimation parameters for the Finnish multisource National Forest Inventory, Remote Sensing of Environment, 76: Kaufman, Y.J., and C. Sendra, Algorithm for automatic atmospheric corrections to visible and near-ir satellite imagery, International Journal of Remote Sensing, 9: Kaufman, Y.J., The atmospheric effect on remote sensing and its corrections, Theory and Applications of Optical Remote Sensing (G. Asrar, editor), Wiley & Sons, Inc., New York, pp Kaufman, Y.J., A.E. Wald, L.A. Remer, Bo-Cai Gao, Rong-Rong Li, and L. Flynn, The MODIS 2.1-um channel Correlation with visible reflectance for use in remote sensing of aerosol, IEEE Transactions in Geoscience and Remote Sensing, 35: Kaufman, Y.J., and D. Tanré, Algorithm for Remote Sensing of Tropospheric Aerosol from MODIS Algorithm Theoretical Basis Document, Products: MOD04_L2, MOD08_D3, MOD08_E3, MOD08_M3, ATBD Reference Number: ATBD-MOD-02, URL: (last date accessed: 13 November 2006). Kawata, Y., A. Ohtani, T. Kusaka, and S. Ueno, Classification accuracy for the MOS-1 MESSR data before and after the atmospheric correction, IEEE Transactions in Geoscience and Remote Sensing, 28: Kilkki, P., and R. Päivinen, Reference sample plots to combine field measurements and satellite data in forest inventory, Remote Sensing-aided Forest Inventory, Proceedings of seminars organized by SNS, Hyytiälä, Finland, December, University 162 February 2007 PHOTOGRAMMETRIC ENGINEERING & REMOTE SENSING

9 of Helsinki, Department of Forest Mensuration and Management, Research Notes, No. 19: Kneizys, F.X., E.P. Shettle, W.O. Gallery, J.H. Chetwynd, L.W. Abreu, J.E.A. Selby, S.A. Clough, and R.W. Fenn, Atmospheric Transmittance/Radiance: Computer Code LOWTRAN-7, Air Force Geophysics Lab, Hanscom AFB, Massachusetts, AFGL-TR Lappi, J., Forest inventory of small areas combining the calibration estimator and a spatial model, Canadian Journal of Forest Research, 31: Lefsky, M.A., W.B. Cohen, and T.A. Spies, An evaluation of alternate remote sensing products for forest inventory, monitoring, and mapping of Douglas-fir forests in western Oregon, Canadian Journal of Forest Research, 31: Liang, S., H. Fallah-Adl, S. Kalluri, J. JaJa, Y.J. Kaufman, and J.R.G. Townshend, An operational atmospheric correction algorithm for Landsat Thematic Mapper imagery over the land, Journal of Geophysical Research Atmospheres, 102(D14), Liang, S., H. Fang, and M. Chen, Atmospheric correction of Landsat ETM land surface imagery Part I: Methods, IEEE Transactions on Geoscience and Remote Sensing, 39: Liang, S., H. Fang, J. Morisette, M. Chen, C. Walthall, C. Daughtry, and C. Shuey, Atmospheric correction of Landsat ETM land surface imagery Part II: Validation and applications, IEEE Transactions on Geoscience and Remote Sensing, 40(12): Liang, S Quantitative Remote Sensing of Land Surfaces, John Wiley and Sons, Inc., 534 p. Menzel, W.P., S.W. Seemann, J. Li, and L.E. Gumley, MODIS Atmospheric Profile Retrieval Algorithm Theoretical Basis Document. Products: MOD07_L2, MOD08_D3, MOD08_E3, MOD08_M3, ATBD Reference Number: ATBD-MOD-07, URL: (last date accessed: 13 November 2006). Moran, M.S., R.D. Jackson, P.N. Slater, and P.M. Teillet, Evaluation of simplified procedures for retrieval of land surface reflectance factors from satellite sensor output, Remote Sensing of Environment, 41: Muinonen, E., and T. Tokola, An application of remote sensing for communal forest inventory, Proceedings from SNS/IUFRO Workshop in Umeå, February, Remote Sensing Laboratory, Swedish University of Agricultural Sciences, Report 4: Nilsson, M., and B. Ranneby, Estimation of Wood Volume Using Satellite Spectral Data A simulation Study, Estimation of Forest Variables Using Satellite Image Data and Airborne Lidar (Ph.D. dissertation by M. Nilsson), Swedish University of Agricultural Sciences, Umeå. Nyyssönen, A., Metsikön Kuutiomäärän Arvioiminen Relaskoopin Avulla (English title: Estimation of Stand Volume by Means of the Relascope), Communicationes Instituti Forestalis Fenniae, 44:30. Oetter, D.R., W.B. Cohen, M. Berterretche, T.K. Maiersperger, and R.E. Kennedy, Land cover mapping in an agricultural setting using multiseasonal Thematic Mapper data, Remote Sensing of Environment, 76: Olsson, H., Regression functions for multitemporal relative calibration of Thematic Mapper data over boreal forest, Remote Sensing of Environment, 46: Olsson, H., Reflectance calibration of Thematic Mapper data for forest change detection, International Journal of Remote Sensing, 16: Ouaidrari, H., and E.F. Vermote, Operational atmospheric correction of Landsat data, Remote Sensing of Environment, 70:4 15. Poso, S., T. Häme, and R. Paananen, A method for estimating the stand characteristics of a forest compartment using satellite imagery, Silva Fennica, 18: Poso, S., R. Paananen, and M. Similä, Forest inventory by compartments using satellite imagery, Silva Fennica, 21: Rahman, H., and G. Dedieu, SMAC: A simplified method for the atmospheric correction of satellite measurements in the solar spectrum, International Journal of Remote Sensing, 15: Ripple, W.J., S. Wang, D.L. Isaacson, and D.P. Paine, A preliminary comparison of Landsat Thematic Mapper and SPOT-1 HRV multispectral data for estimating coniferous forest volume, International Journal of Remote Sensing, 12: Rosenfeld, G.H., and K. Fitzpatrick-Lins, A coefficient of agreement as a measure of thematic classification accuracy, Photogrammetric Engineering & Remote Sensing, 52: Song, C., C.E. Woodcock, K.C. Seto, M.P. Lenney, and S.A. Macomber, Classification and change detection using Landsat TM data: When and how to correct atmospheric effects?, Remote Sensing of Environment, 75: Song, C., C.E. Woodcock, and X. Li, The spectral/temporal manifestation of forest succession in optical imagery: The potential of multitemporal imagery, Remote Sensing of Environment, 82: Song, C., and C.E. Woodcock, Monitoring forest succession with multitemporal Landsat images: Factors of uncertainty, IEEE Transactions on Geoscience and Remote Sensing, 41: Teillet, P.M., and G. Fedosejevs, On the dark target approach to atmospheric correction of remotely sensed data, Canadian Journal of Remote Sensing, 21: Terry, R.A Generating kappa statistics and testing useful hypothesis with PROC CATMOD, Proceedings of the Twelfth Annual SAS Users Group International Conference, February, Dallas, Texas, SAS Technical Note TS-188, p Tokola, T., J. Pitkänen, S. Partinen, and E. Muinonen, Point accuracy of a non-parametric method in estimation of forest characteristics with different satellite materials, International Journal of Remote Sensing, 17: Tokola, T., and J. Heikkilä, A priori site quality information in satellite image based forest inventory, Silva Fennica, 31(1): Tokola, T., S. Löfman, and A. Erkkilä, Relative calibration of multitemporal Landsat data for forest cover change detection, Remote Sensing of Environment, 68(1):1 11. Tokola, T., The influence of field sample data location on growing stock volume estimation in Landsat TM-based forest inventory in Eastern Finland, Remote Sensing of Environment, 73: Tomppo, E., Stand delineation and estimation of stand variates by means of satellite images, Remote Sensing-Aided Forest Inventory, University of Helsinki, Department of Forest Mensuration and Management, Research Notes No. 19: Tomppo, E., Satellite image aided forest site fertility estimation for forest income taxation, Acta Forestalia Fennica, 229, 70 p. Tomppo, E., Multi-source national forest inventory of Finland, Proceedings of Ilvessalo Symposium on National Forest Inventories, Finland, August, The Finnish Forest Research Institute, Research Papers, 444: Trotter, C.M., J.R. Dymond, and C. Goulding, Estimation of timber volume in a coniferous plantation forest using Landsat TM, International Journal of Remote Sensing, 18: Vermote, E., D. Tanré, J.L. Deuzé, M. Herman, and J.J. Morcrette, Second simulation of the satellite signal in solar spectrum: An overview, IEEE Transactions on Geoscience and Remote Sensing, 35: Wen, G., S. Tsay, R.F. Cahalan, and L. Oreopoulos, Path radiance technique for retrieving aerosol optical thickness over land, Journal of Geophysical Research, 104(D24): Zellner, A., An efficient method of estimating seemingly unrelated regressions and tests for aggregation bias, Journal of the American Statistical Association, 57: Zhang, Y., B. Guindon, and J. Cihlar, An image transform to characterize and compensate for spatial variations in thin cloud contamination of Landsat images, Remote Sensing of Environment, 82: (Received 26 April 2005; accepted 25 August 2005; revised 19 October 2005) PHOTOGRAMMETRIC ENGINEERING & REMOTE SENSING February

MODIS IMAGES RESTORATION FOR VNIR BANDS ON FIRE SMOKE AFFECTED AREA

MODIS IMAGES RESTORATION FOR VNIR BANDS ON FIRE SMOKE AFFECTED AREA MODIS IMAGES RESTORATION FOR VNIR BANDS ON FIRE SMOKE AFFECTED AREA Li-Yu Chang and Chi-Farn Chen Center for Space and Remote Sensing Research, National Central University, No. 300, Zhongda Rd., Zhongli

More information

WATER BODY EXTRACTION FROM MULTI SPECTRAL IMAGE BY SPECTRAL PATTERN ANALYSIS

WATER BODY EXTRACTION FROM MULTI SPECTRAL IMAGE BY SPECTRAL PATTERN ANALYSIS WATER BODY EXTRACTION FROM MULTI SPECTRAL IMAGE BY SPECTRAL PATTERN ANALYSIS Nguyen Dinh Duong Department of Environmental Information Study and Analysis, Institute of Geography, 18 Hoang Quoc Viet Rd.,

More information

LiDAR for vegetation applications

LiDAR for vegetation applications LiDAR for vegetation applications UoL MSc Remote Sensing Dr Lewis plewis@geog.ucl.ac.uk Introduction Introduction to LiDAR RS for vegetation Review instruments and observational concepts Discuss applications

More information

Evaluation of the Effect of Upper-Level Cirrus Clouds on Satellite Retrievals of Low-Level Cloud Droplet Effective Radius

Evaluation of the Effect of Upper-Level Cirrus Clouds on Satellite Retrievals of Low-Level Cloud Droplet Effective Radius Evaluation of the Effect of Upper-Level Cirrus Clouds on Satellite Retrievals of Low-Level Cloud Droplet Effective Radius F.-L. Chang and Z. Li Earth System Science Interdisciplinary Center University

More information

Generation of Cloud-free Imagery Using Landsat-8

Generation of Cloud-free Imagery Using Landsat-8 Generation of Cloud-free Imagery Using Landsat-8 Byeonghee Kim 1, Youkyung Han 2, Yonghyun Kim 3, Yongil Kim 4 Department of Civil and Environmental Engineering, Seoul National University (SNU), Seoul,

More information

Analysis of Cloud Variability and Sampling Errors in Surface and Satellite Measurements

Analysis of Cloud Variability and Sampling Errors in Surface and Satellite Measurements Analysis of Cloud Variability and Sampling Errors in Surface and Satellite Measurements Z. Li, M. C. Cribb, and F.-L. Chang Earth System Science Interdisciplinary Center University of Maryland College

More information

Remote Sensing Method in Implementing REDD+

Remote Sensing Method in Implementing REDD+ Remote Sensing Method in Implementing REDD+ FRIM-FFPRI Research on Development of Carbon Monitoring Methodology for REDD+ in Malaysia Remote Sensing Component Mohd Azahari Faidi, Hamdan Omar, Khali Aziz

More information

Lectures Remote Sensing

Lectures Remote Sensing Lectures Remote Sensing ATMOSPHERIC CORRECTION dr.ir. Jan Clevers Centre of Geo-Information Environmental Sciences Wageningen UR Atmospheric Correction of Optical RS Data Background When needed? Model

More information

Digital image processing

Digital image processing 746A27 Remote Sensing and GIS Lecture 4 Digital image processing Chandan Roy Guest Lecturer Department of Computer and Information Science Linköping University Digital Image Processing Most of the common

More information

Methods for Monitoring Forest and Land Cover Changes and Unchanged Areas from Long Time Series

Methods for Monitoring Forest and Land Cover Changes and Unchanged Areas from Long Time Series Methods for Monitoring Forest and Land Cover Changes and Unchanged Areas from Long Time Series Project using historical satellite data from SACCESS (Swedish National Satellite Data Archive) for developing

More information

The Role of SPOT Satellite Images in Mapping Air Pollution Caused by Cement Factories

The Role of SPOT Satellite Images in Mapping Air Pollution Caused by Cement Factories The Role of SPOT Satellite Images in Mapping Air Pollution Caused by Cement Factories Dr. Farrag Ali FARRAG Assistant Prof. at Civil Engineering Dept. Faculty of Engineering Assiut University Assiut, Egypt.

More information

Partitioning the Conterminous United States into Mapping Zones for Landsat TM Land Cover Mapping

Partitioning the Conterminous United States into Mapping Zones for Landsat TM Land Cover Mapping Partitioning the Conterminous United States into Mapping Zones for Landsat TM Land Cover Mapping Collin Homer Raytheon, EROS Data Center, Sioux Falls, South Dakota 605-594-2714 homer@usgs.gov Alisa Gallant

More information

A KNOWLEDGE-BASED APPROACH FOR REDUCING CLOUD AND SHADOW ABSTRACT

A KNOWLEDGE-BASED APPROACH FOR REDUCING CLOUD AND SHADOW ABSTRACT A KNOWLEDGE-BASED APPROACH FOR REDUCING CLOUD AND SHADOW Mingjun Song, Graduate Research Assistant Daniel L. Civco, Director Laboratory for Earth Resources Information Systems Department of Natural Resources

More information

P.M. Rich, W.A. Hetrick, S.C. Saving Biological Sciences University of Kansas Lawrence, KS 66045

P.M. Rich, W.A. Hetrick, S.C. Saving Biological Sciences University of Kansas Lawrence, KS 66045 USING VIEWSHED MODELS TO CALCULATE INTERCEPTED SOLAR RADIATION: APPLICATIONS IN ECOLOGY by P.M. Rich, W.A. Hetrick, S.C. Saving Biological Sciences University of Kansas Lawrence, KS 66045 R.O. Dubayah

More information

Lidar Remote Sensing for Forestry Applications

Lidar Remote Sensing for Forestry Applications Lidar Remote Sensing for Forestry Applications Ralph O. Dubayah* and Jason B. Drake** Department of Geography, University of Maryland, College Park, MD 0 *rdubayah@geog.umd.edu **jasdrak@geog.umd.edu 1

More information

RESOLUTION MERGE OF 1:35.000 SCALE AERIAL PHOTOGRAPHS WITH LANDSAT 7 ETM IMAGERY

RESOLUTION MERGE OF 1:35.000 SCALE AERIAL PHOTOGRAPHS WITH LANDSAT 7 ETM IMAGERY RESOLUTION MERGE OF 1:35.000 SCALE AERIAL PHOTOGRAPHS WITH LANDSAT 7 ETM IMAGERY M. Erdogan, H.H. Maras, A. Yilmaz, Ö.T. Özerbil General Command of Mapping 06100 Dikimevi, Ankara, TURKEY - (mustafa.erdogan;

More information

VCS REDD Methodology Module. Methods for monitoring forest cover changes in REDD project activities

VCS REDD Methodology Module. Methods for monitoring forest cover changes in REDD project activities 1 VCS REDD Methodology Module Methods for monitoring forest cover changes in REDD project activities Version 1.0 May 2009 I. SCOPE, APPLICABILITY, DATA REQUIREMENT AND OUTPUT PARAMETERS Scope This module

More information

ANALYSIS OF FOREST CHANGE IN FIRE DAMAGE AREA USING SATELLITE IMAGES

ANALYSIS OF FOREST CHANGE IN FIRE DAMAGE AREA USING SATELLITE IMAGES ANALYSIS OF FOREST CHANGE IN FIRE DAMAGE AREA USING SATELLITE IMAGES Joon Mook Kang, Professor Joon Kyu Park, Ph.D Min Gyu Kim, Ph.D._Candidate Dept of Civil Engineering, Chungnam National University 220

More information

Nature Values Screening Using Object-Based Image Analysis of Very High Resolution Remote Sensing Data

Nature Values Screening Using Object-Based Image Analysis of Very High Resolution Remote Sensing Data Nature Values Screening Using Object-Based Image Analysis of Very High Resolution Remote Sensing Data Aleksi Räsänen*, Anssi Lensu, Markku Kuitunen Environmental Science and Technology Dept. of Biological

More information

The empirical line method for the atmospheric correction of IKONOS imagery

The empirical line method for the atmospheric correction of IKONOS imagery INT. J. REMOTE SENSING, 2003, VOL. 24, NO. 5, 1143 1150 The empirical line method for the atmospheric correction of IKONOS imagery E. KARPOUZLI* and T. MALTHUS Department of Geography, University of Edinburgh,

More information

SAMPLE MIDTERM QUESTIONS

SAMPLE MIDTERM QUESTIONS Geography 309 Sample MidTerm Questions Page 1 SAMPLE MIDTERM QUESTIONS Textbook Questions Chapter 1 Questions 4, 5, 6, Chapter 2 Questions 4, 7, 10 Chapter 4 Questions 8, 9 Chapter 10 Questions 1, 4, 7

More information

Some elements of photo. interpretation

Some elements of photo. interpretation Some elements of photo Shape Size Pattern Color (tone, hue) Texture Shadows Site Association interpretation Olson, C. E., Jr. 1960. Elements of photographic interpretation common to several sensors. Photogrammetric

More information

.FOR. Forest inventory and monitoring quality

.FOR. Forest inventory and monitoring quality .FOR Forest inventory and monitoring quality FOR : the asset to manage your forest patrimony 2 1..FOR Presentation.FOR is an association of Belgian companies, created in 2010 and supported by a university

More information

ENVI Classic Tutorial: Atmospherically Correcting Hyperspectral Data using FLAASH 2

ENVI Classic Tutorial: Atmospherically Correcting Hyperspectral Data using FLAASH 2 ENVI Classic Tutorial: Atmospherically Correcting Hyperspectral Data Using FLAASH Atmospherically Correcting Hyperspectral Data using FLAASH 2 Files Used in This Tutorial 2 Opening the Uncorrected AVIRIS

More information

How to calculate reflectance and temperature using ASTER data

How to calculate reflectance and temperature using ASTER data How to calculate reflectance and temperature using ASTER data Prepared by Abduwasit Ghulam Center for Environmental Sciences at Saint Louis University September, 2009 This instructions walk you through

More information

2.3 Spatial Resolution, Pixel Size, and Scale

2.3 Spatial Resolution, Pixel Size, and Scale Section 2.3 Spatial Resolution, Pixel Size, and Scale Page 39 2.3 Spatial Resolution, Pixel Size, and Scale For some remote sensing instruments, the distance between the target being imaged and the platform,

More information

Environmental Remote Sensing GEOG 2021

Environmental Remote Sensing GEOG 2021 Environmental Remote Sensing GEOG 2021 Lecture 4 Image classification 2 Purpose categorising data data abstraction / simplification data interpretation mapping for land cover mapping use land cover class

More information

Measurement of the effect of biomass burning aerosol on inhibition of cloud formation over the Amazon

Measurement of the effect of biomass burning aerosol on inhibition of cloud formation over the Amazon Supporting Online Material for Koren et al. Measurement of the effect of biomass burning aerosol on inhibition of cloud formation over the Amazon 1. MODIS new cloud detection algorithm The operational

More information

Research On The Classification Of High Resolution Image Based On Object-oriented And Class Rule

Research On The Classification Of High Resolution Image Based On Object-oriented And Class Rule Research On The Classification Of High Resolution Image Based On Object-oriented And Class Rule Li Chaokui a,b, Fang Wen a,b, Dong Xiaojiao a,b a National-Local Joint Engineering Laboratory of Geo-Spatial

More information

Information Contents of High Resolution Satellite Images

Information Contents of High Resolution Satellite Images Information Contents of High Resolution Satellite Images H. Topan, G. Büyüksalih Zonguldak Karelmas University K. Jacobsen University of Hannover, Germany Keywords: satellite images, mapping, resolution,

More information

Analysis of Landsat ETM+ Image Enhancement for Lithological Classification Improvement in Eagle Plain Area, Northern Yukon

Analysis of Landsat ETM+ Image Enhancement for Lithological Classification Improvement in Eagle Plain Area, Northern Yukon Analysis of Landsat ETM+ Image Enhancement for Lithological Classification Improvement in Eagle Plain Area, Northern Yukon Shihua Zhao, Department of Geology, University of Calgary, zhaosh@ucalgary.ca,

More information

Resolutions of Remote Sensing

Resolutions of Remote Sensing Resolutions of Remote Sensing 1. Spatial (what area and how detailed) 2. Spectral (what colors bands) 3. Temporal (time of day/season/year) 4. Radiometric (color depth) Spatial Resolution describes how

More information

Land Use/Land Cover Map of the Central Facility of ARM in the Southern Great Plains Site Using DOE s Multi-Spectral Thermal Imager Satellite Images

Land Use/Land Cover Map of the Central Facility of ARM in the Southern Great Plains Site Using DOE s Multi-Spectral Thermal Imager Satellite Images Land Use/Land Cover Map of the Central Facility of ARM in the Southern Great Plains Site Using DOE s Multi-Spectral Thermal Imager Satellite Images S. E. Báez Cazull Pre-Service Teacher Program University

More information

Review for Introduction to Remote Sensing: Science Concepts and Technology

Review for Introduction to Remote Sensing: Science Concepts and Technology Review for Introduction to Remote Sensing: Science Concepts and Technology Ann Johnson Associate Director ann@baremt.com Funded by National Science Foundation Advanced Technological Education program [DUE

More information

Lake Monitoring in Wisconsin using Satellite Remote Sensing

Lake Monitoring in Wisconsin using Satellite Remote Sensing Lake Monitoring in Wisconsin using Satellite Remote Sensing D. Gurlin and S. Greb Wisconsin Department of Natural Resources 2015 Wisconsin Lakes Partnership Convention April 23 25, 2105 Holiday Inn Convention

More information

Data Processing Flow Chart

Data Processing Flow Chart Legend Start V1 V2 V3 Completed Version 2 Completion date Data Processing Flow Chart Data: Download a) AVHRR: 1981-1999 b) MODIS:2000-2010 c) SPOT : 1998-2002 No Progressing Started Did not start 03/12/12

More information

Collection 005 Change Summary for MODIS Aerosol (04_L2) Algorithms

Collection 005 Change Summary for MODIS Aerosol (04_L2) Algorithms Collection 005 Change Summary for MODIS Aerosol (04_L2) Algorithms Lorraine Remer, Yoram Kaufman, Didier Tanré Shana Mattoo, Rong-Rong Li, J.Vanderlei Martins, Robert Levy, D. Allen Chu, Richard Kleidman,

More information

Supporting Online Material for Achard (RE 1070656) scheduled for 8/9/02 issue of Science

Supporting Online Material for Achard (RE 1070656) scheduled for 8/9/02 issue of Science Supporting Online Material for Achard (RE 1070656) scheduled for 8/9/02 issue of Science Materials and Methods Overview Forest cover change is calculated using a sample of 102 observations distributed

More information

Evaluation of Wildfire Duration Time Over Asia using MTSAT and MODIS

Evaluation of Wildfire Duration Time Over Asia using MTSAT and MODIS Evaluation of Wildfire Duration Time Over Asia using MTSAT and MODIS Wataru Takeuchi * and Yusuke Matsumura Institute of Industrial Science, University of Tokyo, Japan Ce-504, 6-1, Komaba 4-chome, Meguro,

More information

Digital Remote Sensing Data Processing Digital Remote Sensing Data Processing and Analysis: An Introduction and Analysis: An Introduction

Digital Remote Sensing Data Processing Digital Remote Sensing Data Processing and Analysis: An Introduction and Analysis: An Introduction Digital Remote Sensing Data Processing Digital Remote Sensing Data Processing and Analysis: An Introduction and Analysis: An Introduction Content Remote sensing data Spatial, spectral, radiometric and

More information

STAR Algorithm and Data Products (ADP) Beta Review. Suomi NPP Surface Reflectance IP ARP Product

STAR Algorithm and Data Products (ADP) Beta Review. Suomi NPP Surface Reflectance IP ARP Product STAR Algorithm and Data Products (ADP) Beta Review Suomi NPP Surface Reflectance IP ARP Product Alexei Lyapustin Surface Reflectance Cal Val Team 11/26/2012 STAR ADP Surface Reflectance ARP Team Member

More information

Adaptive HSI Data Processing for Near-Real-time Analysis and Spectral Recovery *

Adaptive HSI Data Processing for Near-Real-time Analysis and Spectral Recovery * Adaptive HSI Data Processing for Near-Real-time Analysis and Spectral Recovery * Su May Hsu, 1 Hsiao-hua Burke and Michael Griffin MIT Lincoln Laboratory, Lexington, Massachusetts 1. INTRODUCTION Hyperspectral

More information

Application of airborne remote sensing for forest data collection

Application of airborne remote sensing for forest data collection Application of airborne remote sensing for forest data collection Gatis Erins, Foran Baltic The Foran SingleTree method based on a laser system developed by the Swedish Defense Research Agency is the first

More information

IMPERVIOUS SURFACE MAPPING UTILIZING HIGH RESOLUTION IMAGERIES. Authors: B. Acharya, K. Pomper, B. Gyawali, K. Bhattarai, T.

IMPERVIOUS SURFACE MAPPING UTILIZING HIGH RESOLUTION IMAGERIES. Authors: B. Acharya, K. Pomper, B. Gyawali, K. Bhattarai, T. IMPERVIOUS SURFACE MAPPING UTILIZING HIGH RESOLUTION IMAGERIES Authors: B. Acharya, K. Pomper, B. Gyawali, K. Bhattarai, T. Tsegaye ABSTRACT Accurate mapping of artificial or natural impervious surfaces

More information

Using Remote Sensing Imagery to Evaluate Post-Wildfire Damage in Southern California

Using Remote Sensing Imagery to Evaluate Post-Wildfire Damage in Southern California Graham Emde GEOG 3230 Advanced Remote Sensing February 22, 2013 Lab #1 Using Remote Sensing Imagery to Evaluate Post-Wildfire Damage in Southern California Introduction Wildfires are a common disturbance

More information

Validating MOPITT Cloud Detection Techniques with MAS Images

Validating MOPITT Cloud Detection Techniques with MAS Images Validating MOPITT Cloud Detection Techniques with MAS Images Daniel Ziskin, Juying Warner, Paul Bailey, John Gille National Center for Atmospheric Research, P.O. Box 3000, Boulder, CO 80307 ABSTRACT The

More information

ASSESSMENT OF FOREST RECOVERY AFTER FIRE USING LANDSAT TM IMAGES AND GIS TECHNIQUES: A CASE STUDY OF MAE WONG NATIONAL PARK, THAILAND

ASSESSMENT OF FOREST RECOVERY AFTER FIRE USING LANDSAT TM IMAGES AND GIS TECHNIQUES: A CASE STUDY OF MAE WONG NATIONAL PARK, THAILAND ASSESSMENT OF FOREST RECOVERY AFTER FIRE USING LANDSAT TM IMAGES AND GIS TECHNIQUES: A CASE STUDY OF MAE WONG NATIONAL PARK, THAILAND Sunee Sriboonpong 1 Yousif Ali Hussin 2 Alfred de Gier 2 1 Forest Resource

More information

Assessing Cloud Spatial and Vertical Distribution with Infrared Cloud Analyzer

Assessing Cloud Spatial and Vertical Distribution with Infrared Cloud Analyzer Assessing Cloud Spatial and Vertical Distribution with Infrared Cloud Analyzer I. Genkova and C. N. Long Pacific Northwest National Laboratory Richland, Washington T. Besnard ATMOS SARL Le Mans, France

More information

Remote Sensing and GIS Application In Change Detection Study In Urban Zone Using Multi Temporal Satellite

Remote Sensing and GIS Application In Change Detection Study In Urban Zone Using Multi Temporal Satellite Remote Sensing and GIS Application In Change Detection Study In Urban Zone Using Multi Temporal Satellite R.Manonmani, G.Mary Divya Suganya Institute of Remote Sensing, Anna University, Chennai 600 025

More information

16 th IOCCG Committee annual meeting. Plymouth, UK 15 17 February 2011. mission: Present status and near future

16 th IOCCG Committee annual meeting. Plymouth, UK 15 17 February 2011. mission: Present status and near future 16 th IOCCG Committee annual meeting Plymouth, UK 15 17 February 2011 The Meteor 3M Mt satellite mission: Present status and near future plans MISSION AIMS Satellites of the series METEOR M M are purposed

More information

y = Xβ + ε B. Sub-pixel Classification

y = Xβ + ε B. Sub-pixel Classification Sub-pixel Mapping of Sahelian Wetlands using Multi-temporal SPOT VEGETATION Images Jan Verhoeye and Robert De Wulf Laboratory of Forest Management and Spatial Information Techniques Faculty of Agricultural

More information

AN INVESTIGATION OF THE GROWTH TYPES OF VEGETATION IN THE BÜKK MOUNTAINS BY THE COMPARISON OF DIGITAL SURFACE MODELS Z. ZBORAY AND E.

AN INVESTIGATION OF THE GROWTH TYPES OF VEGETATION IN THE BÜKK MOUNTAINS BY THE COMPARISON OF DIGITAL SURFACE MODELS Z. ZBORAY AND E. ACTA CLIMATOLOGICA ET CHOROLOGICA Universitatis Szegediensis, Tom. 38-39, 2005, 163-169. AN INVESTIGATION OF THE GROWTH TYPES OF VEGETATION IN THE BÜKK MOUNTAINS BY THE COMPARISON OF DIGITAL SURFACE MODELS

More information

Sub-pixel mapping: A comparison of techniques

Sub-pixel mapping: A comparison of techniques Sub-pixel mapping: A comparison of techniques Koen C. Mertens, Lieven P.C. Verbeke & Robert R. De Wulf Laboratory of Forest Management and Spatial Information Techniques, Ghent University, 9000 Gent, Belgium

More information

TerraColor White Paper

TerraColor White Paper TerraColor White Paper TerraColor is a simulated true color digital earth imagery product developed by Earthstar Geographics LLC. This product was built from imagery captured by the US Landsat 7 (ETM+)

More information

MOVING FORWARD WITH LIDAR REMOTE SENSING: AIRBORNE ASSESSMENT OF FOREST CANOPY PARAMETERS

MOVING FORWARD WITH LIDAR REMOTE SENSING: AIRBORNE ASSESSMENT OF FOREST CANOPY PARAMETERS MOVING FORWARD WITH LIDAR REMOTE SENSING: AIRBORNE ASSESSMENT OF FOREST CANOPY PARAMETERS Alicia M. Rutledge Sorin C. Popescu Spatial Sciences Laboratory Department of Forest Science Texas A&M University

More information

Using Remote Sensing to Monitor Soil Carbon Sequestration

Using Remote Sensing to Monitor Soil Carbon Sequestration Using Remote Sensing to Monitor Soil Carbon Sequestration E. Raymond Hunt, Jr. USDA-ARS Hydrology and Remote Sensing Beltsville Agricultural Research Center Beltsville, Maryland Introduction and Overview

More information

Satellite Remote Sensing of Volcanic Ash

Satellite Remote Sensing of Volcanic Ash Marco Fulle www.stromboli.net Satellite Remote Sensing of Volcanic Ash Michael Pavolonis NOAA/NESDIS/STAR SCOPE Nowcasting 1 Meeting November 19 22, 2013 1 Outline Getty Images Volcanic ash satellite remote

More information

Myths and misconceptions about remote sensing

Myths and misconceptions about remote sensing Myths and misconceptions about remote sensing Ned Horning (graphics support - Nicholas DuBroff) Version: 1.0 Creation Date: 2004-01-01 Revision Date: 2004-01-01 License: This document is licensed under

More information

Remote Sensing of Clouds from Polarization

Remote Sensing of Clouds from Polarization Remote Sensing of Clouds from Polarization What polarization can tell us about clouds... and what not? J. Riedi Laboratoire d'optique Atmosphérique University of Science and Technology Lille / CNRS FRANCE

More information

T.A. Tarasova, and C.A.Nobre

T.A. Tarasova, and C.A.Nobre SEASONAL VARIATIONS OF SURFACE SOLAR IRRADIANCES UNDER CLEAR-SKIES AND CLOUD COVER OBTAINED FROM LONG-TERM SOLAR RADIATION MEASUREMENTS IN THE RONDONIA REGION OF BRAZIL T.A. Tarasova, and C.A.Nobre Centro

More information

CROP CLASSIFICATION WITH HYPERSPECTRAL DATA OF THE HYMAP SENSOR USING DIFFERENT FEATURE EXTRACTION TECHNIQUES

CROP CLASSIFICATION WITH HYPERSPECTRAL DATA OF THE HYMAP SENSOR USING DIFFERENT FEATURE EXTRACTION TECHNIQUES Proceedings of the 2 nd Workshop of the EARSeL SIG on Land Use and Land Cover CROP CLASSIFICATION WITH HYPERSPECTRAL DATA OF THE HYMAP SENSOR USING DIFFERENT FEATURE EXTRACTION TECHNIQUES Sebastian Mader

More information

Cost Considerations of Using LiDAR for Timber Inventory 1

Cost Considerations of Using LiDAR for Timber Inventory 1 Cost Considerations of Using LiDAR for Timber Inventory 1 Bart K. Tilley, Ian A. Munn 3, David L. Evans 4, Robert C. Parker 5, and Scott D. Roberts 6 Acknowledgements: Mississippi State University College

More information

Cloud detection and clearing for the MOPITT instrument

Cloud detection and clearing for the MOPITT instrument Cloud detection and clearing for the MOPITT instrument Juying Warner, John Gille, David P. Edwards and Paul Bailey National Center for Atmospheric Research, Boulder, Colorado ABSTRACT The Measurement Of

More information

ASSESSING EFFECTS OF LASER POINT DENSITY ON BIOPHYSICAL STAND PROPERTIES DERIVED FROM AIRBORNE LASER SCANNER DATA IN MATURE FOREST

ASSESSING EFFECTS OF LASER POINT DENSITY ON BIOPHYSICAL STAND PROPERTIES DERIVED FROM AIRBORNE LASER SCANNER DATA IN MATURE FOREST ISPRS Workshop on Laser Scanning 2007 and SilviLaser 2007, Espoo, September 12-14, 2007, Finland ASSESSING EFFECTS OF LASER POINT DENSITY ON BIOPHYSICAL STAND PROPERTIES DERIVED FROM AIRBORNE LASER SCANNER

More information

SATELLITE IMAGES IN ENVIRONMENTAL DATA PROCESSING

SATELLITE IMAGES IN ENVIRONMENTAL DATA PROCESSING SATELLITE IMAGES IN ENVIRONMENTAL DATA PROCESSING Magdaléna Kolínová Aleš Procházka Martin Slavík Prague Institute of Chemical Technology Department of Computing and Control Engineering Technická 95, 66

More information

APPLICATION OF TERRA/ASTER DATA ON AGRICULTURE LAND MAPPING. Genya SAITO*, Naoki ISHITSUKA*, Yoneharu MATANO**, and Masatane KATO***

APPLICATION OF TERRA/ASTER DATA ON AGRICULTURE LAND MAPPING. Genya SAITO*, Naoki ISHITSUKA*, Yoneharu MATANO**, and Masatane KATO*** APPLICATION OF TERRA/ASTER DATA ON AGRICULTURE LAND MAPPING Genya SAITO*, Naoki ISHITSUKA*, Yoneharu MATANO**, and Masatane KATO*** *National Institute for Agro-Environmental Sciences 3-1-3 Kannondai Tsukuba

More information

Closest Spectral Fit for Removing Clouds and Cloud Shadows

Closest Spectral Fit for Removing Clouds and Cloud Shadows Closest Spectral Fit for Removing Clouds and Cloud Shadows Qingmin Meng, Bruce E. Borders, Chris J. Cieszewski, and Marguerite Madden Abstract Completely cloud-free remotely sensed images are preferred,

More information

Overview. What is EMR? Electromagnetic Radiation (EMR) LA502 Special Studies Remote Sensing

Overview. What is EMR? Electromagnetic Radiation (EMR) LA502 Special Studies Remote Sensing LA502 Special Studies Remote Sensing Electromagnetic Radiation (EMR) Dr. Ragab Khalil Department of Landscape Architecture Faculty of Environmental Design King AbdulAziz University Room 103 Overview What

More information

CLOUD MASKING AND CLOUD PRODUCTS ROUNDTABLE EXPECTED PARTICIPANTS: ACKERMAN, HALL, WAN, VERMOTE, BARKER, HUETE, BROWN, GORDON, KAUFMAN, SCHAAF, BAUM

CLOUD MASKING AND CLOUD PRODUCTS ROUNDTABLE EXPECTED PARTICIPANTS: ACKERMAN, HALL, WAN, VERMOTE, BARKER, HUETE, BROWN, GORDON, KAUFMAN, SCHAAF, BAUM CLOUD MASKING AND CLOUD PRODUCTS ROUNDTABLE EXPECTED PARTICIPANTS: ACKERMAN, HALL, WAN, VERMOTE, BARKER, HUETE, BROWN, GORDON, KAUFMAN, SCHAAF, BAUM NOMINAL PURPOSE: DISCUSSION OF TESTS FOR ACCURACY AND

More information

Electromagnetic Radiation (EMR) and Remote Sensing

Electromagnetic Radiation (EMR) and Remote Sensing Electromagnetic Radiation (EMR) and Remote Sensing 1 Atmosphere Anything missing in between? Electromagnetic Radiation (EMR) is radiated by atomic particles at the source (the Sun), propagates through

More information

Received in revised form 24 March 2004; accepted 30 March 2004

Received in revised form 24 March 2004; accepted 30 March 2004 Remote Sensing of Environment 91 (2004) 237 242 www.elsevier.com/locate/rse Cloud detection in Landsat imagery of ice sheets using shadow matching technique and automatic normalized difference snow index

More information

Saharan Dust Aerosols Detection Over the Region of Puerto Rico

Saharan Dust Aerosols Detection Over the Region of Puerto Rico 1 Saharan Dust Aerosols Detection Over the Region of Puerto Rico ARLENYS RAMÍREZ University of Puerto Rico at Mayagüez, P.R., 00683. Email:arlenys.ramirez@upr.edu ABSTRACT. Every year during the months

More information

Overview of the IR channels and their applications

Overview of the IR channels and their applications Ján Kaňák Slovak Hydrometeorological Institute Jan.kanak@shmu.sk Overview of the IR channels and their applications EUMeTrain, 14 June 2011 Ján Kaňák, SHMÚ 1 Basics in satellite Infrared image interpretation

More information

Image Analysis CHAPTER 16 16.1 ANALYSIS PROCEDURES

Image Analysis CHAPTER 16 16.1 ANALYSIS PROCEDURES CHAPTER 16 Image Analysis 16.1 ANALYSIS PROCEDURES Studies for various disciplines require different technical approaches, but there is a generalized pattern for geology, soils, range, wetlands, archeology,

More information

Design of a High Resolution Multispectral Scanner for Developing Vegetation Indexes

Design of a High Resolution Multispectral Scanner for Developing Vegetation Indexes Design of a High Resolution Multispectral Scanner for Developing Vegetation Indexes Rishitosh kumar sinha*, Roushan kumar mishra, Sam jeba kumar, Gunasekar. S Dept. of Instrumentation & Control Engg. S.R.M

More information

Cloud Climatology for New Zealand and Implications for Radiation Fields

Cloud Climatology for New Zealand and Implications for Radiation Fields Cloud Climatology for New Zealand and Implications for Radiation Fields G. Pfister, R.L. McKenzie, J.B. Liley, A. Thomas National Institute of Water and Atmospheric Research, Lauder, New Zealand M.J. Uddstrom

More information

A STRATEGY FOR ESTIMATING TREE CANOPY DENSITY USING LANDSAT 7 ETM+ AND HIGH RESOLUTION IMAGES OVER LARGE AREAS

A STRATEGY FOR ESTIMATING TREE CANOPY DENSITY USING LANDSAT 7 ETM+ AND HIGH RESOLUTION IMAGES OVER LARGE AREAS A STRATEGY FOR ESTIMATING TREE CANOPY DENSITY USING LANDSAT 7 ETM+ AND HIGH RESOLUTION IMAGES OVER LARGE AREAS Chengquan Huang*, Limin Yang, Bruce Wylie, Collin Homer Raytheon ITSS EROS Data Center, Sioux

More information

ENVIRONMENTAL MONITORING Vol. I - Remote Sensing (Satellite) System Technologies - Michael A. Okoye and Greg T. Koeln

ENVIRONMENTAL MONITORING Vol. I - Remote Sensing (Satellite) System Technologies - Michael A. Okoye and Greg T. Koeln REMOTE SENSING (SATELLITE) SYSTEM TECHNOLOGIES Michael A. Okoye and Greg T. Earth Satellite Corporation, Rockville Maryland, USA Keywords: active microwave, advantages of satellite remote sensing, atmospheric

More information

SEMI-AUTOMATED CLOUD/SHADOW REMOVAL AND LAND COVER CHANGE DETECTION USING SATELLITE IMAGERY

SEMI-AUTOMATED CLOUD/SHADOW REMOVAL AND LAND COVER CHANGE DETECTION USING SATELLITE IMAGERY SEMI-AUTOMATED CLOUD/SHADOW REMOVAL AND LAND COVER CHANGE DETECTION USING SATELLITE IMAGERY A. K. Sah a, *, B. P. Sah a, K. Honji a, N. Kubo a, S. Senthil a a PASCO Corporation, 1-1-2 Higashiyama, Meguro-ku,

More information

Multiangle cloud remote sensing from

Multiangle cloud remote sensing from Multiangle cloud remote sensing from POLDER3/PARASOL Cloud phase, optical thickness and albedo F. Parol, J. Riedi, S. Zeng, C. Vanbauce, N. Ferlay, F. Thieuleux, L.C. Labonnote and C. Cornet Laboratoire

More information

PIXEL-LEVEL IMAGE FUSION USING BROVEY TRANSFORME AND WAVELET TRANSFORM

PIXEL-LEVEL IMAGE FUSION USING BROVEY TRANSFORME AND WAVELET TRANSFORM PIXEL-LEVEL IMAGE FUSION USING BROVEY TRANSFORME AND WAVELET TRANSFORM Rohan Ashok Mandhare 1, Pragati Upadhyay 2,Sudha Gupta 3 ME Student, K.J.SOMIYA College of Engineering, Vidyavihar, Mumbai, Maharashtra,

More information

A SURVEY OF CLOUD COVER OVER MĂGURELE, ROMANIA, USING CEILOMETER AND SATELLITE DATA

A SURVEY OF CLOUD COVER OVER MĂGURELE, ROMANIA, USING CEILOMETER AND SATELLITE DATA Romanian Reports in Physics, Vol. 66, No. 3, P. 812 822, 2014 ATMOSPHERE PHYSICS A SURVEY OF CLOUD COVER OVER MĂGURELE, ROMANIA, USING CEILOMETER AND SATELLITE DATA S. STEFAN, I. UNGUREANU, C. GRIGORAS

More information

RESULTS FROM A SIMPLE INFRARED CLOUD DETECTOR

RESULTS FROM A SIMPLE INFRARED CLOUD DETECTOR RESULTS FROM A SIMPLE INFRARED CLOUD DETECTOR A. Maghrabi 1 and R. Clay 2 1 Institute of Astronomical and Geophysical Research, King Abdulaziz City For Science and Technology, P.O. Box 6086 Riyadh 11442,

More information

Soil degradation monitoring by active and passive remote-sensing means: examples with two degradation processes

Soil degradation monitoring by active and passive remote-sensing means: examples with two degradation processes Soil degradation monitoring by active and passive remote-sensing means: examples with two degradation processes Naftaly Goldshleger, *Eyal Ben-Dor,* *Ido Livne,* U. Basson***, and R.Ben-Binyamin*Vladimir

More information

Application of Remotely Sensed Data and Technology to Monitor Land Change in Massachusetts

Application of Remotely Sensed Data and Technology to Monitor Land Change in Massachusetts Application of Remotely Sensed Data and Technology to Monitor Land Change in Massachusetts Sam Blanchard, Nick Bumbarger, Joe Fortier, and Alina Taus Advisor: John Rogan Geography Department, Clark University

More information

SMEX04 Land Use Classification Data

SMEX04 Land Use Classification Data Notice to Data Users: The documentation for this data set was provided solely by the Principal Investigator(s) and was not further developed, thoroughly reviewed, or edited by NSIDC. Thus, support for

More information

Object-Oriented Approach of Information Extraction from High Resolution Satellite Imagery

Object-Oriented Approach of Information Extraction from High Resolution Satellite Imagery IOSR Journal of Computer Engineering (IOSR-JCE) e-issn: 2278-0661,p-ISSN: 2278-8727, Volume 17, Issue 3, Ver. IV (May Jun. 2015), PP 47-52 www.iosrjournals.org Object-Oriented Approach of Information Extraction

More information

Virtual constellations, time series, and cloud screening opportunities for Sentinel 2 and Landsat

Virtual constellations, time series, and cloud screening opportunities for Sentinel 2 and Landsat Virtual constellations, time series, and cloud screening opportunities for Sentinel 2 and Landsat Sentinel 2 for Science Workshop 20 22 May 2014 ESA ESRIN, Frascati (Rome), Italy 1 Part 1: Title: Towards

More information

Let s SAR: Mapping and monitoring of land cover change with ALOS/ALOS-2 L-band data

Let s SAR: Mapping and monitoring of land cover change with ALOS/ALOS-2 L-band data Let s SAR: Mapping and monitoring of land cover change with ALOS/ALOS-2 L-band data Rajesh Bahadur THAPA, Masanobu SHIMADA, Takeshi MOTOHKA, Manabu WATANABE and Shinichi rajesh.thapa@jaxa.jp; thaparb@gmail.com

More information

DETECTING LANDUSE/LANDCOVER CHANGES ALONG THE RING ROAD IN PESHAWAR CITY USING SATELLITE REMOTE SENSING AND GIS TECHNIQUES

DETECTING LANDUSE/LANDCOVER CHANGES ALONG THE RING ROAD IN PESHAWAR CITY USING SATELLITE REMOTE SENSING AND GIS TECHNIQUES ------------------------------------------------------------------------------------------------------------------------------- Full length Research Paper -------------------------------------------------------------------------------------------------------------------------------

More information

Authors: Thierry Phulpin, CNES Lydie Lavanant, Meteo France Claude Camy-Peyret, LPMAA/CNRS. Date: 15 June 2005

Authors: Thierry Phulpin, CNES Lydie Lavanant, Meteo France Claude Camy-Peyret, LPMAA/CNRS. Date: 15 June 2005 Comments on the number of cloud free observations per day and location- LEO constellation vs. GEO - Annex in the final Technical Note on geostationary mission concepts Authors: Thierry Phulpin, CNES Lydie

More information

Selecting the appropriate band combination for an RGB image using Landsat imagery

Selecting the appropriate band combination for an RGB image using Landsat imagery Selecting the appropriate band combination for an RGB image using Landsat imagery Ned Horning Version: 1.0 Creation Date: 2004-01-01 Revision Date: 2004-01-01 License: This document is licensed under a

More information

Land Use/ Land Cover Mapping Initiative for Kansas and the Kansas River Watershed

Land Use/ Land Cover Mapping Initiative for Kansas and the Kansas River Watershed Land Use/ Land Cover Mapping Initiative for Kansas and the Kansas River Watershed Kansas Biological Survey Kansas Applied Remote Sensing Program April 2008 Previous Kansas LULC Projects Kansas LULC Map

More information

2 Absorbing Solar Energy

2 Absorbing Solar Energy 2 Absorbing Solar Energy 2.1 Air Mass and the Solar Spectrum Now that we have introduced the solar cell, it is time to introduce the source of the energy the sun. The sun has many properties that could

More information

Big data and Earth observation New challenges in remote sensing images interpretation

Big data and Earth observation New challenges in remote sensing images interpretation Big data and Earth observation New challenges in remote sensing images interpretation Pierre Gançarski ICube CNRS - Université de Strasbourg 2014 Pierre Gançarski Big data and Earth observation 1/58 1

More information

CIESIN Columbia University

CIESIN Columbia University Conference on Climate Change and Official Statistics Oslo, Norway, 14-16 April 2008 The Role of Spatial Data Infrastructure in Integrating Climate Change Information with a Focus on Monitoring Observed

More information

A remote sensing instrument collects information about an object or phenomenon within the

A remote sensing instrument collects information about an object or phenomenon within the Satellite Remote Sensing GE 4150- Natural Hazards Some slides taken from Ann Maclean: Introduction to Digital Image Processing Remote Sensing the art, science, and technology of obtaining reliable information

More information

IMAGINES_VALIDATIONSITESNETWORK ISSUE 1.00. EC Proposal Reference N FP7-311766. Name of lead partner for this deliverable: EOLAB

IMAGINES_VALIDATIONSITESNETWORK ISSUE 1.00. EC Proposal Reference N FP7-311766. Name of lead partner for this deliverable: EOLAB Date Issued: 26.03.2014 Issue: I1.00 IMPLEMENTING MULTI-SCALE AGRICULTURAL INDICATORS EXPLOITING SENTINELS RECOMMENDATIONS FOR SETTING-UP A NETWORK OF SITES FOR THE VALIDATION OF COPERNICUS GLOBAL LAND

More information

High Resolution Spatial Electroluminescence Imaging of Photovoltaic Modules

High Resolution Spatial Electroluminescence Imaging of Photovoltaic Modules High Resolution Spatial Electroluminescence Imaging of Photovoltaic Modules Abstract J.L. Crozier, E.E. van Dyk, F.J. Vorster Nelson Mandela Metropolitan University Electroluminescence (EL) is a useful

More information

INVESTIGATION OF EFFECTS OF SPATIAL RESOLUTION ON IMAGE CLASSIFICATION

INVESTIGATION OF EFFECTS OF SPATIAL RESOLUTION ON IMAGE CLASSIFICATION Ozean Journal of Applied Sciences 5(2), 2012 ISSN 1943-2429 2012 Ozean Publication INVESTIGATION OF EFFECTS OF SPATIAL RESOLUTION ON IMAGE CLASSIFICATION FATIH KARA Fatih University, Department of Geography,

More information