Spectral Response for DigitalGlobe Earth Imaging Instruments



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Spectral Response for DigitalGlobe Earth Imaging Instruments IKONOS The IKONOS satellite carries a high resolution panchromatic band covering most of the silicon response and four lower resolution spectral bands. The four multispectral bands are roughly based on four bands used on the Landsat satellite series, including blue, green, red and near-infrared. The spectral responses of the bands are shown in Figure 1, individually normalized to the maximum value. Table 1 gives the 5% response upper and lower edges and center wavelengths for each. Figure1. Spectral Response of the IKONOS panchromatic and multispectral imagery.

Table 1. IKONOS Spectral Band Edges and Center s Edge Panchromatic 729 409 1048 Blue 480 421 539 Green 552 480 624 Red 666 602 729 NIR 803 713 893 2

Relative Response QuickBird The QuickBird satellite also carries a high resolution panchromatic band covering most of the silicon response and four lower resolution spectral bands. The spectral responses of the bands are shown in Figure 2, individually normalized to the maximum value. Table 2 gives the 5% response upper and lower edges and center wavelengths for each. QuickBird Relative Spectral Radiance Response 1 0.9 0.8 0.7 0.6 0.5 Panchromatic Blue Green Red NIR 0.4 0.3 0.2 0.1 0 350 450 550 650 750 850 950 1050 Figure 2. Spectral Response of the QuickBird panchromatic and multispectral imagery. Table 2. QuickBird Spectral Band Edges and Center s Edge Panchromatic 729 405 1053 Blue 488 430 545 Green 543 466 620 Red 650 590 710 NIR 817 715 918 3

Relative Response WorldView-1 The WorldView-1 satellite carries a panchromatic only instrument to produce basic black and white imagery for users who do not require color information. The spectral response band includes both visible and near infrared light for maximum sensitivity. The estimated spectral radiance response, expressed as output counts per unit radiance as a function of wavelength, normalized to unity at the peak response wavelength is shown in figure 3. Table 3 gives the 5% response upper and lower edges and center wavelengths for each. WV01 Relative Spectral Radiance Response 1 0.9 0.8 0.7 0.6 0.5 Panchromatic 0.4 0.3 0.2 0.1 0 350 450 550 650 750 850 950 1050 Figure 3. Spectral Response of the WorldView-1 panchromatic imagery. Table 3. WorldView-1 Spectral Band Edges and Center s Edge Panchromatic 651 397 905 4

GeoEye-1 The GeoEye-1 satellite also carries a high resolution panchromatic band with reduced infrared and blue response and four lower resolution spectral bands similar but not identical to the IKONOS multispectral bands. The spectral responses of the bands are shown in Figure 4, individually normalized to the maximum value. Table 4 gives the 5% response upper and lower edges and center wavelengths for each. Figure 4. Spectral Response of the GeoEye-1 panchromatic and multispectral imagery. Table 4. GeoEye-1 Spectral Band Edges and Center s Edge Panchromatic 627 447 808 Blue 484 446 522 Green 547 506 587 Red 676 655 697 NIR 851 773 929 5

Relative Response WorldView-2 The WorldView-2 satellite carries an imaging instrument containing a high-resolution panchromatic band with a reduced infrared and blue response and eight lower spatial resolution spectral bands. The multispectral bands are capable of providing excellent color accuracy and bands for a number of unique applications. The four primary multispectral bands include traditional blue, green, red and near-infrared bands, similar but not identical to the QuickBird satellite. Four additional bands include a shorter wavelength blue band, centered at approximately 427 nm, called the coastal band for its applications in water color studies; a yellow band centered at approximately 608 nm; a red edge band centered strategically at approximately 724 nm at the onset of the high reflectivity portion of vegetation response; and an additional, longer wavelength near-infrared band, centered at approximately 949 nm, which is sensitive to atmospheric water vapor. The spectral responses of the bands are shown in Figure 5, individually normalized as in Figure 5. Table 5 gives the 5% response upper and lower edges and center wavelengths for each band. WV02 Relative Spectral Radiance Response 1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 Panchromatic Blue Green Red NIR1 Coastal Yellow Red Edge NIR2 0.2 0.1 0 350 450 550 650 750 850 950 1050 Figure 5. Spectral Response of the WorldView-2 panchromatic and multispectral imagery. 6

Table 5. WorldView-2 Spectral Band Edges and Center s Edge Panchromatic 627 447 808 Coastal Blue 427 396 458 Blue 478 442 515 Green 546 506 586 Yellow 608 584 632 Red 659 624 694 Red Edge 724 699 749 NIR1 833 765 901 NIR 2 949 856 1043 7

WorldView-3 The WorldView-3 satellite carries an imaging instrument containing a high-resolution panchromatic band with a reduced infrared and blue response and eight lower spatial resolution spectral bands, all similar to WorldView-2. It also has an additional 8 spectral bands of Short Wave Infrared (SWIR) at yet lower spatial resolution, for material identification purposes and the ability to see through smoke and haze. The spectral responses of the visible and near infrared bands are shown in Figure 6, individually normalized. The spectral responses of the SWIR bands are shown in Figure 7. Table 6 gives the 5% response upper and lower edges and center wavelengths all WorldView-3 bands.. Figure 6. Spectral Response of the WorldView-3 panchromatic and multispectral imagery, visible and near infrared bands. 8

Figure 7. Spectral Response of the WorldView-3 short wave infrared bands. 9

Table 6. WorldView-3 Spectral Band Edges and Center s Edge Panchromatic 627 445 808 Coastal Blue 426 397 454 Blue 481 445 517 Green 547 507 586 Yellow 605 580 629 Red 661 626 696 Red Edge 724 698 749 NIR1 832 765 899 NIR 2 948 857 1039 SWIR1 1210 1184 1235 SWIR2 1572 1546 1598 SWIR3 1661 1636 1686 SWIR4 1730 1702 1759 SWIR5 2164 2137 2191 SWIR6 2203 2174 2232 SWIR7 2260 2228 2292 SWIR8 2329 2285 2373 10