Autonomous Navigation and Map building Using Laser Range Sensors in Outdoor Applications

Size: px
Start display at page:

Download "Autonomous Navigation and Map building Using Laser Range Sensors in Outdoor Applications"

Transcription

1 Autonomous Navgaton and Map buldng Usng aser Range Sensors n Outdoor Applcatons Jose Guvant, Eduardo Nebot and Stephan Baker Australan Centre for Feld Robotcs Department of Mechancal and Mechatronc Engneerng The Unversty of Sydney, NSW 2006, Australa Abstract Ths paper presents the desgn of a hgh accuracy outdoor navgaton system based on standard dead reckonng sensors and laser range and bearng nformaton. The data valdaton problem s addressed usng laser ntensty nformaton. The beacon desgn aspect and locaton of landmarks are also dscussed n relaton to desred accuracy and requred area of operaton. The results are mportant for Smultaneous ocalzaton and Map buldng applcatons, (SAM), snce the feature extracton and valdaton are resolved at the sensor level usng laser ntensty. Ths facltates the use of addtonal natural landmarks to mprove the accuracy of the localzaton algorthm. The modellng aspects to mplement SAM wth beacons and natural features are also presented. These results are of fundamental mportance because the mplementaton of the algorthm does not requre the surveyng of beacons. Furthermore we demonstrate that by usng natural landmarks hgh accurate localzaton can be acheved by only requrng the ntal estmate of the poston of the vehcle. The algorthms are valdated n outdoor envronments usng a standard utlty car retroftted wth the navgaton sensors and a 1 cm precson Knematc GPS used as ground truth. 1 Introducton Relable localzaton s an essental component of any autonomous vehcle. The basc navgaton loop s based on dead reckonng sensors that predct the vehcle hgh frequency manoeuvres and low frequency absolute sensors that bound the postonng errors [1]. For almost every land navgaton applcaton we can always fnd an approprate combnaton of dead reckonng sensors that can be used to obtan a reasonable predcton of the trajectory of the vehcle, [2],[3]. Wth external sensors the problem s more complcated. Although there are many dfferent types of external sensors, only few of them can be used n a partcular applcaton and the relablty wll be functon of the envronment of operaton, [4]. It s well known that wth the dfferent GPS mplementatons, poston fxes wth errors of the order of 1 cm. to 100 m. can be obtaned n real tme. Nevertheless ths accuracy cannot be guarantee all the tme n most workng envronments where partal satellte occluson and multpath effects can prevent normal GPS recever operaton. Smlar problems are experenced wth some other type of sensors such as Stereo Vson, Ultrasonc, aser and Radars. A sgnfcant amount of work has been devoted to the use of range and bearng sensors for localzaton purposes. Ultrasonc sensors have been wdely used n ndoor applcatons [5], but they are not adequate for most outdoor applcatons due to range lmtatons and bearng uncertantes.

2 Stereovson has been the object of research n many mportant research laboratores around the world. Recently n [6], stereoscopc omn drectonal systems were used n ndoor localzaton applcatons. Ths type of sensor s based on a concal mrror and a camera that returns a panoramc mage of the envronment surroundng the vehcle. Although a promsng technology, the complexty and ts poor dynamc range made ths technque stll not very relable for outdoor applcatons. Mllmeter Wave Radar [7], s an emergng technology that has enormous potental for obstacle detecton, map buldng and navgaton n ndoor and outdoor applcatons. The man drawback of ths technology s ts actual cost but ths s expected to change n the near future. Mllmeter Wave Radar had been used for localzaton purposes n [8] and n SAM applcatons n [9]. In ths case, specal beacons were desgned to ncrease the echo return ntensty such that smple threshold or more sophstcated polarzaton technques can be used to dscrmnate beacons from background at the sensor level. Range and bearng lasers have become one of the most attractve sensors for localzaton and map buldng purposes due to ther accuracy and low cost. Most common lasers provde range and bearng nformaton wth sub degree resoluton and accuraces of the order of 1-10 cm n meter ranges. There are a number of works that addressed the localzaton usng pose nformaton [10], [11]. These works update the poston of the vehcle based on the determnaton of the transformaton between the pose of the robot and the laser measurements. aser has also been used to determne natural features n ndoor envronments. In [12] a comparson of the behavour monocular, trnocular and laser n localzaton applcatons s presented. One of the most dffcult problems for any beacon localzaton based algorthm s not feature extracton, but feature valdaton and data assocaton. That s to confrm that the extracted feature s a vald feature and to assocate t wth a known or estmated feature n the world map. Data assocaton s essental for the SAM problem. Ths problem has been addressed n prevous works usng redundant nformaton by lookng for stable features [9] or usng a combnaton of sensors such as n [13], where vson nformaton s used to valdate certan type of features extracted form laser nformaton. Ths work makes use of laser ntensty nformaton to recognze landmarks. It presents the characterzaton of the laser and desgn ssues for landmark detecton usng ths type of laser. It demonstrates that hgh accurate localzaton can be obtaned wth ths nformaton. A full SAM mplementaton usng beacon and beacons and natural features s presented. Analyss of absolute and relatve errors are also dcussed. The navgaton algorthm s mplemented n nformaton form. Ths algorthm becomes more attractve that the standard Kalman flter for applcaton where the external nformaton s avalable from dfferent sources and at dfferent tmes [1]. Ths paper begns n Secton 2 by descrbng the modellng aspects of the navgaton loop and the extenson to SAM. The characterzaton of the sensor s presented n Secton 3 and the nformaton flter n Secton 4. Fnally Secton 5 and 6 present the expermental results and conclusons 2 Navgaton loop The navgaton loop s based on encoders and range/ bearng nformaton provded by a laser sensor. The models for the process and observaton are non-lnear. The encoders provde velocty and steerng angle nformaton that s used wth a knematc model of the vehcle to predct poston and orentaton. The predcton s updated wth external range and bearng nformaton provded by a laser sensor.

3 r r r z(k)=(r,b) Modellng Aspect A smple knematc model s used for ths expermentaton. Ths model can be extended to consder other parameters such as wheel radus and slp angle that can have sgnfcant mportance n other applcatons [3]. The vehcle poston s represented n global coordnates as shown n Fgure 1. The steerng control α s defned n vehcle coordnate frame. The laser sensor s located n the front of the vehcle and returns range and bearng related to objects at dstances of up to 50 meters. Hgh ntensty reflecton can be obtaned by placng hgh reflectvty beacons n the area of operaton. These landmarks are labelled as B (=1..n) and measured wth respect to the vehcle coordnates (x l,y l ), that s zk ( ) = ( r, β, I), where r s the dstance from the beacon to the laser, β s the sensor bearng measured wth respect to the vehcle coordnate frame and I s the ntensty nformaton. y B B3 b y l l x f a B1 x Fgure 1 Vehcle coordnate system Consderng that the vehcle s controlled through a demanded velocty v c and steerng angle α the process model that predct the trajectory of the centre of the back axle s gven by x& c v c cos( φ ) y& c = vc sn ( φc) (1) & φ c v c tan ( α ) The laser s located n the front of the vehcle. To facltate the update stage, the knematc model of the vehcle s desgned to represent the trajectory of the centre of the laser. Based on Fgure 1 and 2, the translaton of the centre of the back axle can be gven P = P + a T + b T C φ φ + π 2 (2) Beng P and P C the poston of the laser and the centre of the back axle n global coordnates. The transformaton s defned by the orentaton angle, accordng to the followng vectoral expresson: ( cos ( ),sn ( )) T φ = φ φ The scalar representaton s (3)

4 ( φ) cos( φ π 2) ( φ) sn ( φ π ) x = x + a cos + b + c y = y + a sn + b + c 2 (4) Encoder aser H Pc (yc, xc) y l x l b y x a Fnally the full state representaton can be wrtten vc vc cos( φ ) ( a sn ( φ) + b cos( φ) ) tan ( α) x& vc y& vc sn ( φ ) ( a cos ( φ) b sn ( φ) ) tan ( α) = + & φ v c tan ( α ) Fgure 2 Knematcs parameters (5) The velocty s generated wth an encoder located n the back left wheel. Ths velocty s translated to the centre of the axle wth the followng equaton: v c ν e = 1-tan ( α ) H (6) Where for ths car H = 0.75m, =2.83 m, b = 0.5 and a = m. Fnally the dscrete model n global coordnates can be approxmated wth the followng set of equatons: ( φ ) xk ( 1) + tv c ( k 1) cos ( k 1) xk () v yk () c = ( a sn ( φ( k 1) ) + b cos ( φ( k 1) )) φ() k tan ( α( k 1) ) yk ( 1) + tv c ( k 1) sn ( φ( k 1) ) + v c ( k 1) ( a cos ( φ( k 1) ) b sn ( φ( k 1) )) tan ( α( k 1) ) v c ( k 1) tan ( α ( k 1) ) (7) where T s the samplng tme, that n our case s not constant. The process can then be wrtten as a nonlnear equaton

5 X( k) = f( X( k 1), u( k 1) + µ ( k 1)) + ω ( k 1) X( k) f( X( k 1), u( k 1)) + ω ( k 1) + ω ( k 1) u f f (8) where X(k-1) and u(k-1) are the estmate and nput at tme k-1 and µ ( k 1) and ω ( k 1) are process noses. The process nose s manly due to measurements error n the velocty and steerng nput nformaton. The model for ω ( ) s gven by: [ u ] u( k 1) ω ( k) = f ( X, u) µ ( k) where f fu = = u (9) ( x, y, φ ) s the gradent of f wth respect to the nput u = ( u1, u2) = ( v, α ) and ( k ) ( u, u ) 1 2 The equaton that relates the observaton wth the states s 2 2 ( x x) + ( y y ) z r = h( X, x, y) = ( y y z ) β atan φ π + ( x ) 2 x where z and [ xyφ,, ] are the observaton and state values respectvely, and (, ) (10) natural landmarks. The observaton equaton can be expressed n short form as zk ( ) = hxk ( ( )) + η( k) (11) wth f u k µ s Gaussan nose. x y are the postons of the beacons or η R ( k) η( k) = (12) ηβ ( k) The noses µ ( k) and η( k) are assumed to be Gaussan, temporally uncorrelated and zero mean, that s E[ µ ( k)] = E[ η( k)] = 0 (13) wth correspondng covarance T T E µ () µ ( j) = δjq, (), E αν η() η ( j) = δjrr, β() (14) Smultaneous ocalzaton and Map Buldng The localzaton and map buldng problem can also be approached wth ths combnaton of sensors. In ths case the estmated locaton of the features or beacon becomes part of the state vector. The vehcle start at an unknown poston wth a gven uncertanty and obtan measurements of the envronment relatve to ts poston. Ths nformaton s used to ncrementally buld and mantan a navgaton map and localze wth respect to ths map. The state vector s now gven by:

6 X Îx Þ v = Ï x ß V = (,, f ) ³ (,,..,, ) x x y R x = x y x y ³ R Ð à 1 1 n n 3 N (15) where x v and x are the states of the vehcle and actual landmarks. The landmarks can be natural features of specal desgned beacon located at unknown locaton. The dynamc model of the extended system that consders the new states can now be wrtten: V ( ) ( + 1) = V ( ) ( + 1) = ( ) x k f x k x k x k It can be seen that the dynamc of the states x s nvarant snce the landmarks are assumed to be statc. Then the Jacoban matrx for the extended system becomes Î f Þ F «Î J1 «Þ = Ï x ß V = T X Ï ß Ï T «I ß Ï«I ß Ð à Ð à J R R I R 3x3 3xN NxN 1 ³, «³, ³ (16) (17) The observatons obtaned wth a range and bearng devce are relatve to the vehcle poston. The observaton equaton s a functon of the state of the vehcle and the states representng the poston of the landmark: ( ) (, ) (, ) ( ) ( ) 2 Ë( y- y ) Û p a = h ( X) = atan f a Ì - + ( x x ) Ü Í - Ý r = h X = x y - x y = x- x + y- y r (18) where (x,y) s the poston of the vehcle, (x,y ) the poston of the landmark numbered and Φ the orentaton of the car. Then the Jacoban matrx of the vector (r,α ) respect to the varables (x,y, Φ,x,y ) can be evaluated usng: Î h Þ Î r r h Ï X ß Ï ( xy,, f,{ x, y} ) ß Ï ß = Ï ß = X Ï ha ß Ï a ß Ï Ð X ßà ÏÐ ( x, y, f,{ x, y} ) ßà wth Þ (19)

7 hr 1 = ¼[ Dx, Dy,0,0,0,..., -Dx,-Dy,0,...,0,0] X D h Î Dy Dx Dy Dx Þ a = -,,-1,0,0,...,,-,0,...,0, X Ï Ð D D D D ß à ( ), ( ), ( ) ( ) 2 2 D x = x- x D y = y- y D = D x + Dy (20) These equatons can be used to buld and mantan a navgaton map of the envronment and to track the poston of the vehcle. 3 Range/Bearng/Intensty laser nformaton Ths secton presents the descrpton of the laser and the beacon desgn aspects. The laser used n ths experment s the MS200 model manufactured by SICK. It can return up to 361 range values spaced 0.5 degrees. The current verson returns ntensty nformaton wth eght dfferent levels of magntude. Ths nformaton s used to detect beacons. The laser returns ntensty nformaton only from surfaces wth hgh reflectvty. Ths nformaton s extremely relable and becomes of fundamental mportance for navgaton purposes. The beacon desgn s of fundamental mportance for the successful operaton of the system. In a gven area of operaton, the accuracy of the navgaton system wll be a functon of the sze, shape and type of materal of the reflector. In order to optmally desgn the reflector t s essental to characterze the laser beam. A set of experments was desgned to obtan the laser parameters. A retro reflectve tape (1.5x15cm) was radally moved at a constant dstance R n steps of 5mm perpendcular to the laser beam. The Intensty output of the scanner was recorder for dfferent radus. The results correspondng to two dfferent radus are shown n fgures 3 and 4. level 2 level 1 R=5m Fgure 3. Intensty at 5m, beam 30mm, shadow 5 mm ( 5mm reflector)

8 level 2 level 1 R=10m Fgure 4. Intensty at 10m, beam 50mm, shadow 30 mm. ( 5mm reflector) Wth ths nformaton the angular resoluton of the scanner as well as the openng angle of the beam was evaluated. The characterzaton of the laser obtaned s shown n Fgure 5. The beam angle becomes approxmately 0.2 degrees. Ths determnes the mnmum area of a beacon that wll be able to return maxmum ntensty at a gven dstance. In our expermentaton we used standard damond grade reflectve tape. It was determned that the laser was able to detect beacons at dstances of over 35 meters usng reflectors wth an area of 900 cm 2. The sze and shape of the beacon also becomes mportant when hgh accuracy s requred. One of the problem s that at short ranges the landmarks wll be detected at dfferent bearng angles. Fgure 5 aser Characterstcs Ths problem s shown n Fgure 6 for a flat and cylndrcal reflector. It can be seen that dependng of the orentaton and poston of the vehcle the same beacon wll be detected a dfferent locatons. The beacon shape s also of mportance to be able to see the landmarks form dfferent vehcle orentatons. The cylnder shape shown n Fgure 6 becomes very attractve for vsblty purposes but t can generate dfferent range and bearng returns dependng on the poston of the vehcle. These problems make the observaton of the poston of landmarks less accurately. Fnally the V shape wth an angle of 40 degrees provded the best results as trade-off between vsblty and poston determnaton. For each applcaton the fnal selecton of the shape and sze of the landmarks wll depend on the number of landmarks, the requred accuracy and the area of operatons n relaton to the characterstc of the laser.

9 Aeff α α A0 Fgure 6 Dfferent type of Beacons Ths secton presented the man characterstcs of the laser scanner and addressed the beacon desgn problem. Ths nformaton s essental to evaluate the maxmum accuracy that can be obtaned wth ths navgaton system. 4 Informaton Flter In ths work we used the nformaton Flter, also known as nverse covarance flter [1], to mplement the navgaton algorthm. The nformaton flter s a Kalman flter that expresses the optmal estmate n terms of the nverse of the covarance matrx 1 Y ( j) = P ( j) (21) and the nformaton state vector 1 y( j) = P ( j) x( j). (22) Consder a lnear system represented by x( k) = F( k) x ( k 1) +ω( k), (23) where x (k) s the state vector at tme k, F (k) s the state transton matrx and ω ( k) s a whte process nose sequence wth T E[ ω( ) ω ( j)] = δ Q ( ). The observaton s modelled as j z( k) = H( k) x ( k) +η( k), (24) where z (k) s the observaton vector, (k) sequence wth E[ η( ) η ( j)] = δ R ( ). The nformaton flter can be wrtten as: T y ( k k) = y( k k 1) + ( k) (25) Y ( k k) = Y( k k 1) + I( k), (26) where 1 ( k) = H( k) R ( k) z( k) (27) j H s the observaton model and ( k) s the nformaton state contrbuton from the observaton z (k) and η s a whte observaton (measurement) nose 1 T I( k) = H( k) R ( k) H ( k) (28) s ts assocated nformaton matrx. The predctons are gven by: 1 y ( k k 1) = Y( k k 1) F( k) Y ( k 1 k 1) y( k 1 k 1) (29)

10 and [ 1 T ( 1) ( ) ( 1 1) ( ) ( ) Y k k = F k Y k k F k + Q k ] 1. (30) The update stage has the followng form: N y ( k k) = yˆ ( k k 1) + ( k) (31) j j= 1 N Y ( k k) = Yˆ ( k k 1) + I ( k), (32) j j= 1 where N s the total number external sensors. The nformaton flter has several advantages over the covarance form of the Kalman flter. It allows for the ntalsaton of the flter for the cases where P 0 1 s sngular. Furthermore, for mult-sensor systems, the computatonal requrement of the flter s less than those of the standard Kalman flter. The reason s that the nformaton flter requres the nverson of the nformaton matrx that s of the dmenson of the state vector, whle the standard form requres the nverson of the composte nnovaton covarance matrx whch s of the dmenson of the observaton vector. Also, as shown by equatons 25 and 26, the flter only requres addtons at the estmaton (update) stage. Ths property can be exploted for effcent data fuson for systems wth multple sources of nformaton. Ths wll be the case where more than one external sensor s avalable to update the dead reckonng nformaton. In our case the beneft are obtaned updatng the states n a sequental manner wth each landmark detected. Nonlnear Informaton Flter The predcton and observaton models for the vehcle under nvestgaton are non-lnear. For such system, a nonlnear nformaton flter can be used. Ths flter s equvalent to the Extended Kalman Flter and lnearses the nonlnear model around the nomnal state to obtan the best lnearsed estmates for the nonlnear system. Consder a nonlnear system represented by x( k) = f[ k, x ( k 1)] +ω( k) (33) wth the observaton model z( k) = h[ k, x ( k)] +η( k). (34) The nformaton contrbuton from an observaton for ths case s agan obtaned from equatons 27 and 28, substtutng H( k) = xh[ k, x( k k)] (35) and replacng z by ( h[ k, x( k k 1)] h[ k, x( k k 1)] x( k 1) ) z = z x k (36) where hx s the Jacoban of h wth respect to x. The nonlnear form of the nformaton flter s dentcal to ts lnear form. However, for the calculaton of the partal nformaton state vector (k) and ts assocated nformaton matrx I (k), equatons 35 and 36 must be used. The predcton equaton 29 s replaced by

11 y ( k k 1) = Y( k k 1) f[ k, x( k 1 k 1)]. (37) and the nverse covarance s updated wth: 1 T [ ] 1 Y( k k 1) = f ( k) Y ( k 1 k 1) f ( k) + Q ( k) (38) 5 Results x x The navgaton system was tested wth a utlty vehcle retroftted wth the sensors descrbed. The utlty car used for the experment s shown n Fgure 7. The laser and the GPS antenna are mounted n front of the vehcle. A map of the testng ste (landmarks postons) and a typcal car trajectory s shown n Fgure 8. The vehcle was drven at speed of up to 4 m/sec. The expermental runs were performed n the top level of the car park buldng of the unversty campus. Ths testng ste was chosen to maxmze the number of satellte n vew. A Knematc Glonass/GPS system of 1 cm accuracy was used to generate ground truth nformaton. The stars n the map represent potental natural landmarks and the crcles are the artfcal reflectve beacons. Although ths envronment s very rch wth respect to the number of natural landmarks, the data assocaton becomes very dffcult snce most of the landmarks are very close together. Under a small poston error the navgaton algorthm wll not be able to assocate the extracted features correctly. The ncluson of beacons becomes equvalent to the ntroducton of a dfferent type of landmark that s valdated at the sensor level. Ths wll make the data assocaton of the natural landmark possble wth the potental of a sgnfcant reducton of the localzaton error. Fgure 7. Utlty car used for the experments.

12 south < attude >North West < ongtude > East Fgure 8 andmark Postons and a typcal trajectory ( attude and ongtude n meters ) Fgure 9 shows a typcal laser frame wth the vehcle postoned at (0,0). The lnes ndcate hgh ntensty reflecton and concde wth the reflectve beacons Y (n meters) X (n meters) Fgure 9 A typcal laser frame

13 The data assocaton s then performed consderng the a-pror estmates and uncertantes n landmarks postons and the covarance of vehcle poston and orentaton. Navgaton usng beacon at known locatons The frst set of results corresponds to the localzaton algorthms usng the reflectve beacons at known locatons. The fnal trajectory wth the beacons used s presented n Fgure Vehcle Trajectory and andmarks "*" lattude (meters) longtude (meters) Fgure 10. Fnal estmaton usng artfcal landmarks Fgure 11 presents the 95 % confdence bounds of the estmated poston of the vehcle, contnuous lne, wth the true error, dotted lne. It can be seen that most of the errors are bounded by the 95 % confdence bounds estmated by the flter. It s also mportant to note that the localzer s able to estmate the poston of the vehcle wth and error of approxmate 6 centmetres. Ths s a very mportant achevement consderng the systematc errors present n the surveyng and detecton of the landmarks and vehcle model errors. A better representaton of the uncertanty n estmaton process can be obtaned consderng the complete covarance submatrx P xy. Fgure 12 presents the uncertanty n x and y consderng the off dagonal terms of P xy. The 2-D standard devaton errors are presented wth the ground truth provded by the GPS poston nformaton. It can be noted that the error regon reduces abruptly when the number of observatons ncrease, coordnate (-8.4,-1), that s ncreasng the number of beacons used n the update stage. Ths plot also presents the evoluton of the magntude of the uncertanty regons when no observatons are obtaned. Ths s due to the cumulatve effects of the model uncertanty.

14 Fnally, a subset of the trajectory presented n Fgure 13 when the vehcle s turnng, coordnate (-11,-33). At ths moment the model s expected to have some systematc errors due to slp and steerng nonlneartes. It can be seen that a strong correcton of few centmetres s performed by the flter n the update stage. Ths can be reduced usng a larger number of beacons or wth the addton of artfcal landmarks as wll be shown later Total Errors and 2 sgma devatons Total Errors (n meters) Tme Fgure 11 Standard devaton wth beacons attude (meters) ongtude (meters) Fgure 12, Poston estmates and varances

15 Vehcle Trajectory and andmarks "*" lattude (meters) longtude (meters) Fgure 13 Enhanced Trajectory. Navgaton usng SAM wth artfcal beacons The second expermental results correspond to SAM usng only beacons. In ths case t s not necessary to survey the poston of the beacons. Ths nformaton s obtaned whle the vehcle navgates. The system bulds a map of the envronment and localze tself. The accuracy of ths map s determned by the ntal uncertanty of the vehcle and the qualty of the combnaton of dead reckonng and external sensors. In ths expermental results an ntal uncertan of 10 cm n coordnates x and y was assumed. Fgure 14 shows the ntal part of the expermental run wth only few beacons detected. The actual trajectory s plotted as a contnuous lne whle the total GPS trajectory s drawn as a dotted lne. Fgure 15 presents the absolute error and the predcted standard devaton ( 2 σ bounds, 95 % confdence bounds ). These plots show that the bounds are consstent wth the actual error. It s also mportant to remark that the uncertanty n poston does not reduce below the ntal uncertanty. Ths s expected snce the laser nformaton s obtaned relatve to the vehcle poston. The only way the uncertanty can be reduced s by ncorporatng addtonal nformaton that s not correlated to the vehcle poston, such as GPS poston nformaton or recognzng a beacon wth known poston.

16 The laser range nnovaton sequence can be seen n Fgure 16. It remans whte and valdates the assumed statstc for the model and sensors. The landmark covarance estmaton s shown n Fgure 17. Ths fgure presents the varance of poston x and y and the estmated uncertanty of a selected group of landmarks. The ones wth oscllatory behavour correspond to the uncertanty of the vehcle. Ths s expected snce no external absolute nformaton s ncorporated by the flter. The orgnal uncertanty of a new landmark wll be a functon of the actual vehcle uncertanty and sensor nose. It can be seen that the landmark once created are started wth dfferent ntal covarances. Ths value s a functon of the current vehcle uncertanty and the qualty of the observaton. It then decrease wth tme to a value that wll not be smaller that the ntal uncertanty of the vehcle. It can also be apprecated from ths plot that the due to the correlaton of the map all landmarks are beng updated all the tme. Fnally Fgure 18 shows that snce we are stll usng the same number of beacons, there s no mprovement wth respect to the smoothness of the updates when compared to the absolute navgaton algorthm. There s a stll a strong correcton due to the falure of the vehcle s model, coordnate (-11,-33). Vehcle Trajectory and andmarks "*" lattude (meters) longtude (meters) Fgure 14. Intal part of the trajectory usng SAM wth beacons

17 0.9 Total Errors and 2 sgma devatons Total Errors (n meters) Tme Fgure 15 Absolute poston error and standard devaton. 0.5 Innovaton sequence & sgma and 2 sgma devatons for all beacons Innovaton ( Meters ) Observatons Fgure 16 Innovaton sequence SAM wth beacons

18 0.45 devaton of Xv,Yv, X1,Y1, X5,Y5, X10,Y10, Fgure 17 Estmated devaton of poston and beacons 31.4 Vehcle Trajectory and andmarks "*" lattude (meters) longtude (meters) Fgure 18 Enhanced Trajectory

19 Navgaton usng SAM wth Natural Features The fnal expermental results correspond to SAM usng all the features avalable n the envronment. In ths case t s not requred to modfy the nfrastructure of the envronment wth the addton of beacons. The most relevant navgaton features are obtaned whle the vehcle navgates. The vehcle bulds a navgaton map of the envronment, mantans t and localzes tself. The accuracy of ths map s determned by the ntal uncertanty of the vehcle and the qualty of the combnaton of dead reckonng and external sensors nstalled n the vehcle and frequency of external observatons. In ths expermental results an ntal uncertan of 10 cm n coordnates x and y was also assumed. Fgure 19 shows the ntal part of the expermental run whle the system s stll ncorporatng new landmarks. The actual trajectory s drawn wth a contnuous lne whle the total GPS trajectory s plot as a dotted lne. Fgure 20 presents the absolute error wth the predcted standard devaton ( 2 σ bounds, 95 % confdence bounds ). These plots show that the bounds obtaned usng all landmarks are consstent wth the actual errors. It s also mportant to remark that the uncertanty n poston become sgnfcantly smaller than the SAM wth beacons only. Ths s due to a larger number of landmarks that ncorporate more nformaton to the flter. The uncertanty does not become smaller than the ntal uncertan. Ths s expected snce the laser nformaton s obtaned relatve to the vehcle poston. The laser range nnovaton sequence can be seen n Fgure 21. It remans whte and valdates the assumed statstc for the model and sensors. The landmark dentfcaton covarance s shown n Fgure 22. Ths fgure presents the varance of poston x and y wth the uncertanty of some selected landmarks. The ones wth oscllatory behavour correspond to the uncertanty of the vehcle. The landmarks are orgnally ncorporated wth an ntal uncertanty functon of vehcle and sensor covarances. The postons are then updated and ts uncertantes are reduced as shown n the Fgure. It can also be apprecated from ths plot that the due to the correlaton between landmarks and landmarks and vehcle s states, the landmark are beng updated all the tme even f they are not beng observed at the present tme. Fnally Fgure 23 shows that snce we are usng a larger number of features there s a consderable mprovement wth respect to the smoothness of the updates. Ths trajectory can be compared to Fgures 13 and 18 where a much smaller number of landmarks are beng used. Ths can be mportant for vehcle control purposes snce less demand wll be mposed on the control and actuators.

20 15 Vehcle Trajectory and andmarks "*" lattude (meters) longtude (meters) Fgure 19. Intal part of the trajectory usng SAM wth natural features and beacons 0.7 Total Errors and 2 sgma devatons Total Errors (n meters) Tme Fgure 20 Absolute poston error and standard devaton.

21 0.5 Innovaton sequence & sgma and 2 sgma devatons for all beacons Innovaton ( Meters ) Observatons Fgure 21 Innovaton sequence SAM wth natural features 0.3 devaton of Xv,Yv, X1,Y1, X5,Y5, X10,Y10, Fgure 22 Estmated devaton of poston and selected features

22 Vehcle Trajectory and andmarks "*" lattude (meters) longtude (meters) Fgure 23 Enhanced Trajectory

23 6 Concluson Ths work presented the mplementaton of dfferent types of hgh accuracy navgaton algorthms for outdoor and ndoor applcatons. A characterzaton of a range/bearng/ntensty laser s also presented. Ths task s essental to desgn beacons for a partcular navgaton envronments. The modellng aspect and the desgn of navgaton algorthms are presented wth an mplementaton based on the Informaton Flter. Ths approach becomes more attractve than the standard Kalman flter form for the case where a large number of observaton are present. Sequental processng of the laser landmark nformaton becomes much more effcent snce t does not requre the re-evaluaton of the Kalman gan matrx. The modellng aspect has also been extended to consder Smultaneous ocalzaton and Map buldng (SAM). A full mplementaton of SAM usng beacons s also presented. Ths s an mportant contrbuton snce t does not requre any surveyng of the beacons. The actual results have shown that the algorthm can delver an accuracy n accordance to the ntal uncertanty of the vehcle. It s mportant to remark that the maps obtaned are relatve to the ntal poston and orentaton of the vehcle. In many applcaton ths wll be all that s needed to accomplsh a certan task. In case the absolute poston s requred to use external nformaton such as GPS, then the uncertanty needs to be ncorporated as shown n these two examples. It was also demonstrated that the algorthm successful buld and mantan a map for long runs. Ths expermental results presented a 3 km run and the algorthm remans stable. In fact after revstng the old landmarks the problem transform to the standard navgaton algorthm wth known beacon poston. Fnally SAM consderng all natural features s presented. It s demonstrated that t s not always necessary to use specally desgned beacon for navgaton purposes. In fact n ths case the only requrement for the algorthm was the ntal poston and uncertanty of the vehcle. Wth only ths nformaton the algorthm was able to estmate the poston of the vehcle wth cm accuracy. It s mportant to remarks that although n ths case the beacons were not requred, they can be of fundamental mportance for the data assocaton problem n cases were the dstance between landmarks s smaller than the poston error buld-up that wll eventually appear when explorng new areas. Ths wll always be a functon of the partcular applcaton. Although the Informaton flter mplementaton presented n ths paper s effcent for the navgaton problem t may be computatonally expensve for the SAM n the case where the number of landmarks become large. We are currently nvestgatng more effcent mplementatons of ths algorthm takng nto consderaton the sparseness of the matrx nvolved n SAM. References [1] Nebot E., Durrant-Whyte H., Hgh Integrty Navgaton Archtecture for Outdoor Autonomous Vehcles, Journal of Robotcs and Autonomous Systems, Vol. 26, February 1999, p [2] Sukkareh S., Nebot E., Durrant-Whyte H., A Hgh Integrty IMU/GPS Navgaton oop for Autonomous and Vehcle applcatons, IEEE Transacton on Robotcs and Automaton, June1999, p [3] Schedng S., Dssanayake, Nebot E., Durrant-Whyte H., An Experment n Autonomous Navgaton of an Underground Mnng Vehcle, IEEE Transacton on Robotcs and Automaton, Vol. 15, No 1, February 1999, p [4] Nebot E., "Sensors used for autonomous navgaton", Advances n Intellgent Autonomous Systems, Chapter 7, pp , ISBN , March 1999, Kluwer Academc Publshers, Dordrecht.

24 [5] Elfes A., Sonar based real-world mappng navgaton, IEEE J. Robotcs Automaton, 3(3), p , [6] Drocout C., Delahoche., Pegard C., Clerentn A., Moble Robot ocalzaton Based on an Omndrectonal Stereoscopc Vson Percepton System, Proc. of the 1999 IEEE Conference on Robotcs and Automaton, Detrot, USA, pp [7] Clark S., H. Durrant-Whyte, "Autonomous land vehcle navgaton usng mllmeter wave radar", Int. Proc. of the IEEE Internatonal conference of Robotc and Automaton, Belgum, May 1998, p [8] Durrant-Whyte H., An Autonomous Guded Vehcle for Cargo Handlng Applcatons, Int. Journal of Robotcs Research, 15(5): , [9] Clark S., Dssanayake G., Smultaneous ocalsaton and Map Buldng Usng Mllmetre Wave Radar to Extract Natural Features, Proc. of the 1998 IEEE Conference on Robotcs and Automaton, Detrot, USA 1999, pp [10] Madhavan, R.; Dssanayake, M.; Durrant-Whyte, H.F.; Autonomous Underground Navgaton of an HD usng a combned ICP-EKF approach IEEE Conference on Robotcs and Automaton Proceedngs of the 1998 Belgum, p [11] Jensfelt P., Chrstensen H., aser Based Pose Trackng, Proc. of the 1999 IEEE Conference on Robotcs and Automaton, Detrot, USA, pp [12] Castellanos J., Martnez J., Nera J., Tardos J., Smultaneous Map Buldng and ocalzaton for Moble Robots: A multsensor Fuson Approach, Proc. of the 1998 IEEE Conference on Robotcs and Automaton, p [13] Perez J., Castellanos J., Montel J., Nera J., Tardos J., Contnuous Moble Robot ocalzaton: Vson vs. aser, Proc. Of the 1999 IEEE Conference on Robotcs and Automaton, p [14] Smth C., Feder J., eonard J., Multple Target Trackng wth navgaton Uncertanty, Internatonal conference on decson and Control, December 1999.

Vision Mouse. Saurabh Sarkar a* University of Cincinnati, Cincinnati, USA ABSTRACT 1. INTRODUCTION

Vision Mouse. Saurabh Sarkar a* University of Cincinnati, Cincinnati, USA ABSTRACT 1. INTRODUCTION Vson Mouse Saurabh Sarkar a* a Unversty of Cncnnat, Cncnnat, USA ABSTRACT The report dscusses a vson based approach towards trackng of eyes and fngers. The report descrbes the process of locatng the possble

More information

Face Verification Problem. Face Recognition Problem. Application: Access Control. Biometric Authentication. Face Verification (1:1 matching)

Face Verification Problem. Face Recognition Problem. Application: Access Control. Biometric Authentication. Face Verification (1:1 matching) Face Recognton Problem Face Verfcaton Problem Face Verfcaton (1:1 matchng) Querymage face query Face Recognton (1:N matchng) database Applcaton: Access Control www.vsage.com www.vsoncs.com Bometrc Authentcaton

More information

The Development of Web Log Mining Based on Improve-K-Means Clustering Analysis

The Development of Web Log Mining Based on Improve-K-Means Clustering Analysis The Development of Web Log Mnng Based on Improve-K-Means Clusterng Analyss TngZhong Wang * College of Informaton Technology, Luoyang Normal Unversty, Luoyang, 471022, Chna wangtngzhong2@sna.cn Abstract.

More information

Calculating the high frequency transmission line parameters of power cables

Calculating the high frequency transmission line parameters of power cables < ' Calculatng the hgh frequency transmsson lne parameters of power cables Authors: Dr. John Dcknson, Laboratory Servces Manager, N 0 RW E B Communcatons Mr. Peter J. Ncholson, Project Assgnment Manager,

More information

Damage detection in composite laminates using coin-tap method

Damage detection in composite laminates using coin-tap method Damage detecton n composte lamnates usng con-tap method S.J. Km Korea Aerospace Research Insttute, 45 Eoeun-Dong, Youseong-Gu, 35-333 Daejeon, Republc of Korea yaeln@kar.re.kr 45 The con-tap test has the

More information

An Alternative Way to Measure Private Equity Performance

An Alternative Way to Measure Private Equity Performance An Alternatve Way to Measure Prvate Equty Performance Peter Todd Parlux Investment Technology LLC Summary Internal Rate of Return (IRR) s probably the most common way to measure the performance of prvate

More information

A Multi-mode Image Tracking System Based on Distributed Fusion

A Multi-mode Image Tracking System Based on Distributed Fusion A Mult-mode Image Tracng System Based on Dstrbuted Fuson Ln zheng Chongzhao Han Dongguang Zuo Hongsen Yan School of Electroncs & nformaton engneerng, X an Jaotong Unversty X an, Shaanx, Chna Lnzheng@malst.xjtu.edu.cn

More information

On-Line Fault Detection in Wind Turbine Transmission System using Adaptive Filter and Robust Statistical Features

On-Line Fault Detection in Wind Turbine Transmission System using Adaptive Filter and Robust Statistical Features On-Lne Fault Detecton n Wnd Turbne Transmsson System usng Adaptve Flter and Robust Statstcal Features Ruoyu L Remote Dagnostcs Center SKF USA Inc. 3443 N. Sam Houston Pkwy., Houston TX 77086 Emal: ruoyu.l@skf.com

More information

Inter-Ing 2007. INTERDISCIPLINARITY IN ENGINEERING SCIENTIFIC INTERNATIONAL CONFERENCE, TG. MUREŞ ROMÂNIA, 15-16 November 2007.

Inter-Ing 2007. INTERDISCIPLINARITY IN ENGINEERING SCIENTIFIC INTERNATIONAL CONFERENCE, TG. MUREŞ ROMÂNIA, 15-16 November 2007. Inter-Ing 2007 INTERDISCIPLINARITY IN ENGINEERING SCIENTIFIC INTERNATIONAL CONFERENCE, TG. MUREŞ ROMÂNIA, 15-16 November 2007. UNCERTAINTY REGION SIMULATION FOR A SERIAL ROBOT STRUCTURE MARIUS SEBASTIAN

More information

RESEARCH ON DUAL-SHAKER SINE VIBRATION CONTROL. Yaoqi FENG 1, Hanping QIU 1. China Academy of Space Technology (CAST) yaoqi.feng@yahoo.

RESEARCH ON DUAL-SHAKER SINE VIBRATION CONTROL. Yaoqi FENG 1, Hanping QIU 1. China Academy of Space Technology (CAST) yaoqi.feng@yahoo. ICSV4 Carns Australa 9- July, 007 RESEARCH ON DUAL-SHAKER SINE VIBRATION CONTROL Yaoq FENG, Hanpng QIU Dynamc Test Laboratory, BISEE Chna Academy of Space Technology (CAST) yaoq.feng@yahoo.com Abstract

More information

Forecasting the Direction and Strength of Stock Market Movement

Forecasting the Direction and Strength of Stock Market Movement Forecastng the Drecton and Strength of Stock Market Movement Jngwe Chen Mng Chen Nan Ye cjngwe@stanford.edu mchen5@stanford.edu nanye@stanford.edu Abstract - Stock market s one of the most complcated systems

More information

"Research Note" APPLICATION OF CHARGE SIMULATION METHOD TO ELECTRIC FIELD CALCULATION IN THE POWER CABLES *

Research Note APPLICATION OF CHARGE SIMULATION METHOD TO ELECTRIC FIELD CALCULATION IN THE POWER CABLES * Iranan Journal of Scence & Technology, Transacton B, Engneerng, ol. 30, No. B6, 789-794 rnted n The Islamc Republc of Iran, 006 Shraz Unversty "Research Note" ALICATION OF CHARGE SIMULATION METHOD TO ELECTRIC

More information

APPLICATION OF PROBE DATA COLLECTED VIA INFRARED BEACONS TO TRAFFIC MANEGEMENT

APPLICATION OF PROBE DATA COLLECTED VIA INFRARED BEACONS TO TRAFFIC MANEGEMENT APPLICATION OF PROBE DATA COLLECTED VIA INFRARED BEACONS TO TRAFFIC MANEGEMENT Toshhko Oda (1), Kochro Iwaoka (2) (1), (2) Infrastructure Systems Busness Unt, Panasonc System Networks Co., Ltd. Saedo-cho

More information

Traffic State Estimation in the Traffic Management Center of Berlin

Traffic State Estimation in the Traffic Management Center of Berlin Traffc State Estmaton n the Traffc Management Center of Berln Authors: Peter Vortsch, PTV AG, Stumpfstrasse, D-763 Karlsruhe, Germany phone ++49/72/965/35, emal peter.vortsch@ptv.de Peter Möhl, PTV AG,

More information

IMPACT ANALYSIS OF A CELLULAR PHONE

IMPACT ANALYSIS OF A CELLULAR PHONE 4 th ASA & μeta Internatonal Conference IMPACT AALYSIS OF A CELLULAR PHOE We Lu, 2 Hongy L Bejng FEAonlne Engneerng Co.,Ltd. Bejng, Chna ABSTRACT Drop test smulaton plays an mportant role n nvestgatng

More information

A Multi-Camera System on PC-Cluster for Real-time 3-D Tracking

A Multi-Camera System on PC-Cluster for Real-time 3-D Tracking The 23 rd Conference of the Mechancal Engneerng Network of Thaland November 4 7, 2009, Chang Ma A Mult-Camera System on PC-Cluster for Real-tme 3-D Trackng Vboon Sangveraphunsr*, Krtsana Uttamang, and

More information

where the coordinates are related to those in the old frame as follows.

where the coordinates are related to those in the old frame as follows. Chapter 2 - Cartesan Vectors and Tensors: Ther Algebra Defnton of a vector Examples of vectors Scalar multplcaton Addton of vectors coplanar vectors Unt vectors A bass of non-coplanar vectors Scalar product

More information

Fault tolerance in cloud technologies presented as a service

Fault tolerance in cloud technologies presented as a service Internatonal Scentfc Conference Computer Scence 2015 Pavel Dzhunev, PhD student Fault tolerance n cloud technologes presented as a servce INTRODUCTION Improvements n technques for vrtualzaton and performance

More information

L10: Linear discriminants analysis

L10: Linear discriminants analysis L0: Lnear dscrmnants analyss Lnear dscrmnant analyss, two classes Lnear dscrmnant analyss, C classes LDA vs. PCA Lmtatons of LDA Varants of LDA Other dmensonalty reducton methods CSCE 666 Pattern Analyss

More information

Single and multiple stage classifiers implementing logistic discrimination

Single and multiple stage classifiers implementing logistic discrimination Sngle and multple stage classfers mplementng logstc dscrmnaton Hélo Radke Bttencourt 1 Dens Alter de Olvera Moraes 2 Vctor Haertel 2 1 Pontfíca Unversdade Católca do Ro Grande do Sul - PUCRS Av. Ipranga,

More information

Forecasting the Demand of Emergency Supplies: Based on the CBR Theory and BP Neural Network

Forecasting the Demand of Emergency Supplies: Based on the CBR Theory and BP Neural Network 700 Proceedngs of the 8th Internatonal Conference on Innovaton & Management Forecastng the Demand of Emergency Supples: Based on the CBR Theory and BP Neural Network Fu Deqang, Lu Yun, L Changbng School

More information

An Evaluation of the Extended Logistic, Simple Logistic, and Gompertz Models for Forecasting Short Lifecycle Products and Services

An Evaluation of the Extended Logistic, Simple Logistic, and Gompertz Models for Forecasting Short Lifecycle Products and Services An Evaluaton of the Extended Logstc, Smple Logstc, and Gompertz Models for Forecastng Short Lfecycle Products and Servces Charles V. Trappey a,1, Hsn-yng Wu b a Professor (Management Scence), Natonal Chao

More information

INVESTIGATION OF VEHICULAR USERS FAIRNESS IN CDMA-HDR NETWORKS

INVESTIGATION OF VEHICULAR USERS FAIRNESS IN CDMA-HDR NETWORKS 21 22 September 2007, BULGARIA 119 Proceedngs of the Internatonal Conference on Informaton Technologes (InfoTech-2007) 21 st 22 nd September 2007, Bulgara vol. 2 INVESTIGATION OF VEHICULAR USERS FAIRNESS

More information

benefit is 2, paid if the policyholder dies within the year, and probability of death within the year is ).

benefit is 2, paid if the policyholder dies within the year, and probability of death within the year is ). REVIEW OF RISK MANAGEMENT CONCEPTS LOSS DISTRIBUTIONS AND INSURANCE Loss and nsurance: When someone s subject to the rsk of ncurrng a fnancal loss, the loss s generally modeled usng a random varable or

More information

GRAVITY DATA VALIDATION AND OUTLIER DETECTION USING L 1 -NORM

GRAVITY DATA VALIDATION AND OUTLIER DETECTION USING L 1 -NORM GRAVITY DATA VALIDATION AND OUTLIER DETECTION USING L 1 -NORM BARRIOT Jean-Perre, SARRAILH Mchel BGI/CNES 18.av.E.Beln 31401 TOULOUSE Cedex 4 (France) Emal: jean-perre.barrot@cnes.fr 1/Introducton The

More information

Feature selection for intrusion detection. Slobodan Petrović NISlab, Gjøvik University College

Feature selection for intrusion detection. Slobodan Petrović NISlab, Gjøvik University College Feature selecton for ntruson detecton Slobodan Petrovć NISlab, Gjøvk Unversty College Contents The feature selecton problem Intruson detecton Traffc features relevant for IDS The CFS measure The mrmr measure

More information

Implementation of Deutsch's Algorithm Using Mathcad

Implementation of Deutsch's Algorithm Using Mathcad Implementaton of Deutsch's Algorthm Usng Mathcad Frank Roux The followng s a Mathcad mplementaton of Davd Deutsch's quantum computer prototype as presented on pages - n "Machnes, Logc and Quantum Physcs"

More information

SIMPLE LINEAR CORRELATION

SIMPLE LINEAR CORRELATION SIMPLE LINEAR CORRELATION Smple lnear correlaton s a measure of the degree to whch two varables vary together, or a measure of the ntensty of the assocaton between two varables. Correlaton often s abused.

More information

Multi-Robot Tracking of a Moving Object Using Directional Sensors

Multi-Robot Tracking of a Moving Object Using Directional Sensors Mult-Robot Trackng of a Movng Object Usng Drectonal Sensors Xaomng Hu, Karl H. Johansson, Manuel Mazo Jr., Alberto Speranzon Dept. of Sgnals, Sensors & Systems Royal Insttute of Technology, SE- 44 Stockholm,

More information

Gender Classification for Real-Time Audience Analysis System

Gender Classification for Real-Time Audience Analysis System Gender Classfcaton for Real-Tme Audence Analyss System Vladmr Khryashchev, Lev Shmaglt, Andrey Shemyakov, Anton Lebedev Yaroslavl State Unversty Yaroslavl, Russa vhr@yandex.ru, shmaglt_lev@yahoo.com, andrey.shemakov@gmal.com,

More information

On the Optimal Control of a Cascade of Hydro-Electric Power Stations

On the Optimal Control of a Cascade of Hydro-Electric Power Stations On the Optmal Control of a Cascade of Hydro-Electrc Power Statons M.C.M. Guedes a, A.F. Rbero a, G.V. Smrnov b and S. Vlela c a Department of Mathematcs, School of Scences, Unversty of Porto, Portugal;

More information

Support Vector Machines

Support Vector Machines Support Vector Machnes Max Wellng Department of Computer Scence Unversty of Toronto 10 Kng s College Road Toronto, M5S 3G5 Canada wellng@cs.toronto.edu Abstract Ths s a note to explan support vector machnes.

More information

Frequency Selective IQ Phase and IQ Amplitude Imbalance Adjustments for OFDM Direct Conversion Transmitters

Frequency Selective IQ Phase and IQ Amplitude Imbalance Adjustments for OFDM Direct Conversion Transmitters Frequency Selectve IQ Phase and IQ Ampltude Imbalance Adjustments for OFDM Drect Converson ransmtters Edmund Coersmeer, Ernst Zelnsk Noka, Meesmannstrasse 103, 44807 Bochum, Germany edmund.coersmeer@noka.com,

More information

Can Auto Liability Insurance Purchases Signal Risk Attitude?

Can Auto Liability Insurance Purchases Signal Risk Attitude? Internatonal Journal of Busness and Economcs, 2011, Vol. 10, No. 2, 159-164 Can Auto Lablty Insurance Purchases Sgnal Rsk Atttude? Chu-Shu L Department of Internatonal Busness, Asa Unversty, Tawan Sheng-Chang

More information

Causal, Explanatory Forecasting. Analysis. Regression Analysis. Simple Linear Regression. Which is Independent? Forecasting

Causal, Explanatory Forecasting. Analysis. Regression Analysis. Simple Linear Regression. Which is Independent? Forecasting Causal, Explanatory Forecastng Assumes cause-and-effect relatonshp between system nputs and ts output Forecastng wth Regresson Analyss Rchard S. Barr Inputs System Cause + Effect Relatonshp The job of

More information

Module 2 LOSSLESS IMAGE COMPRESSION SYSTEMS. Version 2 ECE IIT, Kharagpur

Module 2 LOSSLESS IMAGE COMPRESSION SYSTEMS. Version 2 ECE IIT, Kharagpur Module LOSSLESS IMAGE COMPRESSION SYSTEMS Lesson 3 Lossless Compresson: Huffman Codng Instructonal Objectves At the end of ths lesson, the students should be able to:. Defne and measure source entropy..

More information

A machine vision approach for detecting and inspecting circular parts

A machine vision approach for detecting and inspecting circular parts A machne vson approach for detectng and nspectng crcular parts Du-Mng Tsa Machne Vson Lab. Department of Industral Engneerng and Management Yuan-Ze Unversty, Chung-L, Tawan, R.O.C. E-mal: edmtsa@saturn.yzu.edu.tw

More information

Extending Probabilistic Dynamic Epistemic Logic

Extending Probabilistic Dynamic Epistemic Logic Extendng Probablstc Dynamc Epstemc Logc Joshua Sack May 29, 2008 Probablty Space Defnton A probablty space s a tuple (S, A, µ), where 1 S s a set called the sample space. 2 A P(S) s a σ-algebra: a set

More information

Institute of Informatics, Faculty of Business and Management, Brno University of Technology,Czech Republic

Institute of Informatics, Faculty of Business and Management, Brno University of Technology,Czech Republic Lagrange Multplers as Quanttatve Indcators n Economcs Ivan Mezník Insttute of Informatcs, Faculty of Busness and Management, Brno Unversty of TechnologCzech Republc Abstract The quanttatve role of Lagrange

More information

Characterization of Assembly. Variation Analysis Methods. A Thesis. Presented to the. Department of Mechanical Engineering. Brigham Young University

Characterization of Assembly. Variation Analysis Methods. A Thesis. Presented to the. Department of Mechanical Engineering. Brigham Young University Characterzaton of Assembly Varaton Analyss Methods A Thess Presented to the Department of Mechancal Engneerng Brgham Young Unversty In Partal Fulfllment of the Requrements for the Degree Master of Scence

More information

How To Understand The Results Of The German Meris Cloud And Water Vapour Product

How To Understand The Results Of The German Meris Cloud And Water Vapour Product Ttel: Project: Doc. No.: MERIS level 3 cloud and water vapour products MAPP MAPP-ATBD-ClWVL3 Issue: 1 Revson: 0 Date: 9.12.1998 Functon Name Organsaton Sgnature Date Author: Bennartz FUB Preusker FUB Schüller

More information

Distributed Multi-Target Tracking In A Self-Configuring Camera Network

Distributed Multi-Target Tracking In A Self-Configuring Camera Network Dstrbuted Mult-Target Trackng In A Self-Confgurng Camera Network Crstan Soto, B Song, Amt K. Roy-Chowdhury Department of Electrcal Engneerng Unversty of Calforna, Rversde {cwlder,bsong,amtrc}@ee.ucr.edu

More information

PAS: A Packet Accounting System to Limit the Effects of DoS & DDoS. Debish Fesehaye & Klara Naherstedt University of Illinois-Urbana Champaign

PAS: A Packet Accounting System to Limit the Effects of DoS & DDoS. Debish Fesehaye & Klara Naherstedt University of Illinois-Urbana Champaign PAS: A Packet Accountng System to Lmt the Effects of DoS & DDoS Debsh Fesehaye & Klara Naherstedt Unversty of Illnos-Urbana Champagn DoS and DDoS DDoS attacks are ncreasng threats to our dgtal world. Exstng

More information

Analysis of Premium Liabilities for Australian Lines of Business

Analysis of Premium Liabilities for Australian Lines of Business Summary of Analyss of Premum Labltes for Australan Lnes of Busness Emly Tao Honours Research Paper, The Unversty of Melbourne Emly Tao Acknowledgements I am grateful to the Australan Prudental Regulaton

More information

Portfolio Loss Distribution

Portfolio Loss Distribution Portfolo Loss Dstrbuton Rsky assets n loan ortfolo hghly llqud assets hold-to-maturty n the bank s balance sheet Outstandngs The orton of the bank asset that has already been extended to borrowers. Commtment

More information

Vehicle Detection and Tracking in Video from Moving Airborne Platform

Vehicle Detection and Tracking in Video from Moving Airborne Platform Journal of Computatonal Informaton Systems 10: 12 (2014) 4965 4972 Avalable at http://www.jofcs.com Vehcle Detecton and Trackng n Vdeo from Movng Arborne Platform Lye ZHANG 1,2,, Hua WANG 3, L LI 2 1 School

More information

Conversion between the vector and raster data structures using Fuzzy Geographical Entities

Conversion between the vector and raster data structures using Fuzzy Geographical Entities Converson between the vector and raster data structures usng Fuzzy Geographcal Enttes Cdála Fonte Department of Mathematcs Faculty of Scences and Technology Unversty of Combra, Apartado 38, 3 454 Combra,

More information

NON-LINEAR MULTIMODAL OBJECT TRACKING BASED ON 2D LIDAR DATA

NON-LINEAR MULTIMODAL OBJECT TRACKING BASED ON 2D LIDAR DATA Metrol. Meas. Syst. Vol. XVI (009), No 3, pp. 359-369 METROLOGY AND MEASUREMENT SYSTEMS Index 330930, ISSN 0860-89 www.metrology.pg.gda.pl NON-LINEAR MULTIMODAL OBJECT TRACKING BASED ON D LIDAR DATA Mchael

More information

8.5 UNITARY AND HERMITIAN MATRICES. The conjugate transpose of a complex matrix A, denoted by A*, is given by

8.5 UNITARY AND HERMITIAN MATRICES. The conjugate transpose of a complex matrix A, denoted by A*, is given by 6 CHAPTER 8 COMPLEX VECTOR SPACES 5. Fnd the kernel of the lnear transformaton gven n Exercse 5. In Exercses 55 and 56, fnd the mage of v, for the ndcated composton, where and are gven by the followng

More information

A Performance Analysis of View Maintenance Techniques for Data Warehouses

A Performance Analysis of View Maintenance Techniques for Data Warehouses A Performance Analyss of Vew Mantenance Technques for Data Warehouses Xng Wang Dell Computer Corporaton Round Roc, Texas Le Gruenwald The nversty of Olahoma School of Computer Scence orman, OK 739 Guangtao

More information

POLYSA: A Polynomial Algorithm for Non-binary Constraint Satisfaction Problems with and

POLYSA: A Polynomial Algorithm for Non-binary Constraint Satisfaction Problems with and POLYSA: A Polynomal Algorthm for Non-bnary Constrant Satsfacton Problems wth and Mguel A. Saldo, Federco Barber Dpto. Sstemas Informátcos y Computacón Unversdad Poltécnca de Valenca, Camno de Vera s/n

More information

A Novel Methodology of Working Capital Management for Large. Public Constructions by Using Fuzzy S-curve Regression

A Novel Methodology of Working Capital Management for Large. Public Constructions by Using Fuzzy S-curve Regression Novel Methodology of Workng Captal Management for Large Publc Constructons by Usng Fuzzy S-curve Regresson Cheng-Wu Chen, Morrs H. L. Wang and Tng-Ya Hseh Department of Cvl Engneerng, Natonal Central Unversty,

More information

Sketching Sampled Data Streams

Sketching Sampled Data Streams Sketchng Sampled Data Streams Florn Rusu, Aln Dobra CISE Department Unversty of Florda Ganesvlle, FL, USA frusu@cse.ufl.edu adobra@cse.ufl.edu Abstract Samplng s used as a unversal method to reduce the

More information

Mining Multiple Large Data Sources

Mining Multiple Large Data Sources The Internatonal Arab Journal of Informaton Technology, Vol. 7, No. 3, July 2 24 Mnng Multple Large Data Sources Anmesh Adhkar, Pralhad Ramachandrarao 2, Bhanu Prasad 3, and Jhml Adhkar 4 Department of

More information

CONSISTENT VEHICLES TRACKING BY USING A COOPERATIVE DISTRIBUTED VIDEO SURVEILLANCESYSTEM

CONSISTENT VEHICLES TRACKING BY USING A COOPERATIVE DISTRIBUTED VIDEO SURVEILLANCESYSTEM Internatonal Research Journal of Appled and Basc Scences 2013 Avalable onlne at www.rjabs.com ISSN 2251-838X / Vol, 4 (12):3658-3663 Scence Explorer Publcatons CONSISTENT VEHICLES TRACKING BY USING A COOPERATIVE

More information

Efficient Project Portfolio as a tool for Enterprise Risk Management

Efficient Project Portfolio as a tool for Enterprise Risk Management Effcent Proect Portfolo as a tool for Enterprse Rsk Management Valentn O. Nkonov Ural State Techncal Unversty Growth Traectory Consultng Company January 5, 27 Effcent Proect Portfolo as a tool for Enterprse

More information

A DATA MINING APPLICATION IN A STUDENT DATABASE

A DATA MINING APPLICATION IN A STUDENT DATABASE JOURNAL OF AERONAUTICS AND SPACE TECHNOLOGIES JULY 005 VOLUME NUMBER (53-57) A DATA MINING APPLICATION IN A STUDENT DATABASE Şenol Zafer ERDOĞAN Maltepe Ünversty Faculty of Engneerng Büyükbakkalköy-Istanbul

More information

CHOLESTEROL REFERENCE METHOD LABORATORY NETWORK. Sample Stability Protocol

CHOLESTEROL REFERENCE METHOD LABORATORY NETWORK. Sample Stability Protocol CHOLESTEROL REFERENCE METHOD LABORATORY NETWORK Sample Stablty Protocol Background The Cholesterol Reference Method Laboratory Network (CRMLN) developed certfcaton protocols for total cholesterol, HDL

More information

Realistic Image Synthesis

Realistic Image Synthesis Realstc Image Synthess - Combned Samplng and Path Tracng - Phlpp Slusallek Karol Myszkowsk Vncent Pegoraro Overvew: Today Combned Samplng (Multple Importance Samplng) Renderng and Measurng Equaton Random

More information

Improved SVM in Cloud Computing Information Mining

Improved SVM in Cloud Computing Information Mining Internatonal Journal of Grd Dstrbuton Computng Vol.8, No.1 (015), pp.33-40 http://dx.do.org/10.1457/jgdc.015.8.1.04 Improved n Cloud Computng Informaton Mnng Lvshuhong (ZhengDe polytechnc college JangSu

More information

Calculation of Sampling Weights

Calculation of Sampling Weights Perre Foy Statstcs Canada 4 Calculaton of Samplng Weghts 4.1 OVERVIEW The basc sample desgn used n TIMSS Populatons 1 and 2 was a two-stage stratfed cluster desgn. 1 The frst stage conssted of a sample

More information

The Effect of Mean Stress on Damage Predictions for Spectral Loading of Fiberglass Composite Coupons 1

The Effect of Mean Stress on Damage Predictions for Spectral Loading of Fiberglass Composite Coupons 1 EWEA, Specal Topc Conference 24: The Scence of Makng Torque from the Wnd, Delft, Aprl 9-2, 24, pp. 546-555. The Effect of Mean Stress on Damage Predctons for Spectral Loadng of Fberglass Composte Coupons

More information

ON THE ACCURACY, REPEATABILITY, AND DEGREE OF INFLUENCE OF KINEMATICS PARAMETERS FOR INDUSTRIAL ROBOTS

ON THE ACCURACY, REPEATABILITY, AND DEGREE OF INFLUENCE OF KINEMATICS PARAMETERS FOR INDUSTRIAL ROBOTS Internatonal Journal of Modellng and Smulaton, Vol. 22, No. 3, 2002 ON THE ACCURACY, REPEATABILITY, AND DEGREE OF INFLUENCE OF KINEMATICS PARAMETERS FOR INDUSTRIAL ROBOTS P.S. Shakolas, K.L. Conrad, and

More information

Risk-based Fatigue Estimate of Deep Water Risers -- Course Project for EM388F: Fracture Mechanics, Spring 2008

Risk-based Fatigue Estimate of Deep Water Risers -- Course Project for EM388F: Fracture Mechanics, Spring 2008 Rsk-based Fatgue Estmate of Deep Water Rsers -- Course Project for EM388F: Fracture Mechancs, Sprng 2008 Chen Sh Department of Cvl, Archtectural, and Envronmental Engneerng The Unversty of Texas at Austn

More information

Statistical Approach for Offline Handwritten Signature Verification

Statistical Approach for Offline Handwritten Signature Verification Journal of Computer Scence 4 (3): 181-185, 2008 ISSN 1549-3636 2008 Scence Publcatons Statstcal Approach for Offlne Handwrtten Sgnature Verfcaton 2 Debnath Bhattacharyya, 1 Samr Kumar Bandyopadhyay, 2

More information

What is Candidate Sampling

What is Candidate Sampling What s Canddate Samplng Say we have a multclass or mult label problem where each tranng example ( x, T ) conssts of a context x a small (mult)set of target classes T out of a large unverse L of possble

More information

Brigid Mullany, Ph.D University of North Carolina, Charlotte

Brigid Mullany, Ph.D University of North Carolina, Charlotte Evaluaton And Comparson Of The Dfferent Standards Used To Defne The Postonal Accuracy And Repeatablty Of Numercally Controlled Machnng Center Axes Brgd Mullany, Ph.D Unversty of North Carolna, Charlotte

More information

Automated information technology for ionosphere monitoring of low-orbit navigation satellite signals

Automated information technology for ionosphere monitoring of low-orbit navigation satellite signals Automated nformaton technology for onosphere montorng of low-orbt navgaton satellte sgnals Alexander Romanov, Sergey Trusov and Alexey Romanov Federal State Untary Enterprse Russan Insttute of Space Devce

More information

Software Alignment for Tracking Detectors

Software Alignment for Tracking Detectors Software Algnment for Trackng Detectors V. Blobel Insttut für Expermentalphysk, Unverstät Hamburg, Germany Abstract Trackng detectors n hgh energy physcs experments requre an accurate determnaton of a

More information

Multi-Sensor Coordination And Fusion For Automotive Safety Applications

Multi-Sensor Coordination And Fusion For Automotive Safety Applications Mult-Sensor Coordnaton And Fuson For Automotve Safety Applcatons N. Floudas, A. Polychronopoulos, M. Tsogas, A. Amdts Insttute of Communcaton and Computer Systems Iroon Polytechnou St. 9, 773 Athens, Greece

More information

A DYNAMIC CRASHING METHOD FOR PROJECT MANAGEMENT USING SIMULATION-BASED OPTIMIZATION. Michael E. Kuhl Radhamés A. Tolentino-Peña

A DYNAMIC CRASHING METHOD FOR PROJECT MANAGEMENT USING SIMULATION-BASED OPTIMIZATION. Michael E. Kuhl Radhamés A. Tolentino-Peña Proceedngs of the 2008 Wnter Smulaton Conference S. J. Mason, R. R. Hll, L. Mönch, O. Rose, T. Jefferson, J. W. Fowler eds. A DYNAMIC CRASHING METHOD FOR PROJECT MANAGEMENT USING SIMULATION-BASED OPTIMIZATION

More information

An Enhanced Super-Resolution System with Improved Image Registration, Automatic Image Selection, and Image Enhancement

An Enhanced Super-Resolution System with Improved Image Registration, Automatic Image Selection, and Image Enhancement An Enhanced Super-Resoluton System wth Improved Image Regstraton, Automatc Image Selecton, and Image Enhancement Yu-Chuan Kuo ( ), Chen-Yu Chen ( ), and Chou-Shann Fuh ( ) Department of Computer Scence

More information

Performance Analysis and Coding Strategy of ECOC SVMs

Performance Analysis and Coding Strategy of ECOC SVMs Internatonal Journal of Grd and Dstrbuted Computng Vol.7, No. (04), pp.67-76 http://dx.do.org/0.457/jgdc.04.7..07 Performance Analyss and Codng Strategy of ECOC SVMs Zhgang Yan, and Yuanxuan Yang, School

More information

Robust Design of Public Storage Warehouses. Yeming (Yale) Gong EMLYON Business School

Robust Design of Public Storage Warehouses. Yeming (Yale) Gong EMLYON Business School Robust Desgn of Publc Storage Warehouses Yemng (Yale) Gong EMLYON Busness School Rene de Koster Rotterdam school of management, Erasmus Unversty Abstract We apply robust optmzaton and revenue management

More information

Number of Levels Cumulative Annual operating Income per year construction costs costs ($) ($) ($) 1 600,000 35,000 100,000 2 2,200,000 60,000 350,000

Number of Levels Cumulative Annual operating Income per year construction costs costs ($) ($) ($) 1 600,000 35,000 100,000 2 2,200,000 60,000 350,000 Problem Set 5 Solutons 1 MIT s consderng buldng a new car park near Kendall Square. o unversty funds are avalable (overhead rates are under pressure and the new faclty would have to pay for tself from

More information

Properties of Indoor Received Signal Strength for WLAN Location Fingerprinting

Properties of Indoor Received Signal Strength for WLAN Location Fingerprinting Propertes of Indoor Receved Sgnal Strength for WLAN Locaton Fngerprntng Kamol Kaemarungs and Prashant Krshnamurthy Telecommuncatons Program, School of Informaton Scences, Unversty of Pttsburgh E-mal: kakst2,prashk@ptt.edu

More information

An Interest-Oriented Network Evolution Mechanism for Online Communities

An Interest-Oriented Network Evolution Mechanism for Online Communities An Interest-Orented Network Evoluton Mechansm for Onlne Communtes Cahong Sun and Xaopng Yang School of Informaton, Renmn Unversty of Chna, Bejng 100872, P.R. Chna {chsun,yang}@ruc.edu.cn Abstract. Onlne

More information

Application of Multi-Agents for Fault Detection and Reconfiguration of Power Distribution Systems

Application of Multi-Agents for Fault Detection and Reconfiguration of Power Distribution Systems 1 Applcaton of Mult-Agents for Fault Detecton and Reconfguraton of Power Dstrbuton Systems K. Nareshkumar, Member, IEEE, M. A. Choudhry, Senor Member, IEEE, J. La, A. Felach, Senor Member, IEEE Abstract--The

More information

Data Broadcast on a Multi-System Heterogeneous Overlayed Wireless Network *

Data Broadcast on a Multi-System Heterogeneous Overlayed Wireless Network * JOURNAL OF INFORMATION SCIENCE AND ENGINEERING 24, 819-840 (2008) Data Broadcast on a Mult-System Heterogeneous Overlayed Wreless Network * Department of Computer Scence Natonal Chao Tung Unversty Hsnchu,

More information

Visual Stabilization of Beating Heart Motion by Model-Based Transformation of Image Sequences

Visual Stabilization of Beating Heart Motion by Model-Based Transformation of Image Sequences Vsual Stablzaton of Beatng Heart Moton by Model-Based ransformaton of Image Sequences Evgenya Bogatyreno and Uwe D. Hanebec Abstract In order to assst a surgeon whle operatng on a beatng heart, vsual stablzaton

More information

ANALYZING THE RELATIONSHIPS BETWEEN QUALITY, TIME, AND COST IN PROJECT MANAGEMENT DECISION MAKING

ANALYZING THE RELATIONSHIPS BETWEEN QUALITY, TIME, AND COST IN PROJECT MANAGEMENT DECISION MAKING ANALYZING THE RELATIONSHIPS BETWEEN QUALITY, TIME, AND COST IN PROJECT MANAGEMENT DECISION MAKING Matthew J. Lberatore, Department of Management and Operatons, Vllanova Unversty, Vllanova, PA 19085, 610-519-4390,

More information

SPEE Recommended Evaluation Practice #6 Definition of Decline Curve Parameters Background:

SPEE Recommended Evaluation Practice #6 Definition of Decline Curve Parameters Background: SPEE Recommended Evaluaton Practce #6 efnton of eclne Curve Parameters Background: The producton hstores of ol and gas wells can be analyzed to estmate reserves and future ol and gas producton rates and

More information

A Fast Incremental Spectral Clustering for Large Data Sets

A Fast Incremental Spectral Clustering for Large Data Sets 2011 12th Internatonal Conference on Parallel and Dstrbuted Computng, Applcatons and Technologes A Fast Incremental Spectral Clusterng for Large Data Sets Tengteng Kong 1,YeTan 1, Hong Shen 1,2 1 School

More information

OPT Online Person Tracking System for Context-awareness in Wireless Personal Network

OPT Online Person Tracking System for Context-awareness in Wireless Personal Network OPT Onlne Person Trackng System for Context-awareness n Wreless Personal Network Xuel An R. Venkatesha Prasad Jng Wang I.G.M.M. Nemegeers EEMCS, Delft Unversty of Technology, The Netherlands {x.an, j.wang3,vprasad,gnas.n}@ew.tudelft.nl

More information

CHAPTER EVALUATING EARTHQUAKE RETROFITTING MEASURES FOR SCHOOLS: A COST-BENEFIT ANALYSIS

CHAPTER EVALUATING EARTHQUAKE RETROFITTING MEASURES FOR SCHOOLS: A COST-BENEFIT ANALYSIS CHAPTER 17 EVALUATING EARTHQUAKE RETROFITTING MEASURES FOR SCHOOLS: A COST-BENEFIT ANALYSIS A.W. Smyth, G. Deodats, G. Franco, Y. He and T. Gurvch Department of Cvl Engneerng and Engneerng Mechancs, Columba

More information

Study on Model of Risks Assessment of Standard Operation in Rural Power Network

Study on Model of Risks Assessment of Standard Operation in Rural Power Network Study on Model of Rsks Assessment of Standard Operaton n Rural Power Network Qngj L 1, Tao Yang 2 1 Qngj L, College of Informaton and Electrcal Engneerng, Shenyang Agrculture Unversty, Shenyang 110866,

More information

How To Calculate The Accountng Perod Of Nequalty

How To Calculate The Accountng Perod Of Nequalty Inequalty and The Accountng Perod Quentn Wodon and Shlomo Ytzha World Ban and Hebrew Unversty September Abstract Income nequalty typcally declnes wth the length of tme taen nto account for measurement.

More information

An Integrated Framework for Responsive Supply Chain Management

An Integrated Framework for Responsive Supply Chain Management 1 An Integrated Framework for Responsve Supply Chan Management 1 Darsht Parmar 1 Teresa Wu 1 John Fowler Tom Callarman 3 Vncent Hargaden 4 Eamonn Ambrose 1 Phlp Wolfe 1 Department of Industral Engneerng

More information

A Secure Password-Authenticated Key Agreement Using Smart Cards

A Secure Password-Authenticated Key Agreement Using Smart Cards A Secure Password-Authentcated Key Agreement Usng Smart Cards Ka Chan 1, Wen-Chung Kuo 2 and Jn-Chou Cheng 3 1 Department of Computer and Informaton Scence, R.O.C. Mltary Academy, Kaohsung 83059, Tawan,

More information

Lecture 2: Single Layer Perceptrons Kevin Swingler

Lecture 2: Single Layer Perceptrons Kevin Swingler Lecture 2: Sngle Layer Perceptrons Kevn Sngler kms@cs.str.ac.uk Recap: McCulloch-Ptts Neuron Ths vastly smplfed model of real neurons s also knon as a Threshold Logc Unt: W 2 A Y 3 n W n. A set of synapses

More information

Imperial College London

Imperial College London F. Fang 1, C.C. Pan 1, I.M. Navon 2, M.D. Pggott 1, G.J. Gorman 1, P.A. Allson 1 and A.J.H. Goddard 1 1 Appled Modellng and Computaton Group Department of Earth Scence and Engneerng Imperal College London,

More information

The OC Curve of Attribute Acceptance Plans

The OC Curve of Attribute Acceptance Plans The OC Curve of Attrbute Acceptance Plans The Operatng Characterstc (OC) curve descrbes the probablty of acceptng a lot as a functon of the lot s qualty. Fgure 1 shows a typcal OC Curve. 10 8 6 4 1 3 4

More information

VoIP Playout Buffer Adjustment using Adaptive Estimation of Network Delays

VoIP Playout Buffer Adjustment using Adaptive Estimation of Network Delays VoIP Playout Buffer Adjustment usng Adaptve Estmaton of Network Delays Mroslaw Narbutt and Lam Murphy* Department of Computer Scence Unversty College Dubln, Belfeld, Dubln, IRELAND Abstract The poor qualty

More information

BUSINESS PROCESS PERFORMANCE MANAGEMENT USING BAYESIAN BELIEF NETWORK. 0688, dskim@ssu.ac.kr

BUSINESS PROCESS PERFORMANCE MANAGEMENT USING BAYESIAN BELIEF NETWORK. 0688, dskim@ssu.ac.kr Proceedngs of the 41st Internatonal Conference on Computers & Industral Engneerng BUSINESS PROCESS PERFORMANCE MANAGEMENT USING BAYESIAN BELIEF NETWORK Yeong-bn Mn 1, Yongwoo Shn 2, Km Jeehong 1, Dongsoo

More information

Simultaneous Mosaicing and Tracking with an Event Camera

Simultaneous Mosaicing and Tracking with an Event Camera KIM et al.: SIMULTANEOUS MOSAICING AND TRACKING WITH AN EVENT CAMERA 1 Smultaneous Mosacng and Trackng wth an Event Camera Hanme Km 1 hanme.km@mperal.ac.uk Ankur Handa 2 ah781@cam.ac.uk Ryad Benosman 3

More information

DEFINING %COMPLETE IN MICROSOFT PROJECT

DEFINING %COMPLETE IN MICROSOFT PROJECT CelersSystems DEFINING %COMPLETE IN MICROSOFT PROJECT PREPARED BY James E Aksel, PMP, PMI-SP, MVP For Addtonal Informaton about Earned Value Management Systems and reportng, please contact: CelersSystems,

More information

Risk Model of Long-Term Production Scheduling in Open Pit Gold Mining

Risk Model of Long-Term Production Scheduling in Open Pit Gold Mining Rsk Model of Long-Term Producton Schedulng n Open Pt Gold Mnng R Halatchev 1 and P Lever 2 ABSTRACT Open pt gold mnng s an mportant sector of the Australan mnng ndustry. It uses large amounts of nvestments,

More information

Document Clustering Analysis Based on Hybrid PSO+K-means Algorithm

Document Clustering Analysis Based on Hybrid PSO+K-means Algorithm Document Clusterng Analyss Based on Hybrd PSO+K-means Algorthm Xaohu Cu, Thomas E. Potok Appled Software Engneerng Research Group, Computatonal Scences and Engneerng Dvson, Oak Rdge Natonal Laboratory,

More information

An interactive system for structure-based ASCII art creation

An interactive system for structure-based ASCII art creation An nteractve system for structure-based ASCII art creaton Katsunor Myake Henry Johan Tomoyuk Nshta The Unversty of Tokyo Nanyang Technologcal Unversty Abstract Non-Photorealstc Renderng (NPR), whose am

More information

Vehicle Tracking Using Particle Filter for Parking Management System

Vehicle Tracking Using Particle Filter for Parking Management System 2014 4th Internatonal Conference on Artfcal Intellgence wth Applcatons n Engneerng and Technology Vehcle Trackng Usng Partcle Flter for Parkng Management System Kenneth Tze Kn Teo, Renee Ka Yn Chn, N.S.V.

More information