SlideShare ist ein Scribd-Unternehmen logo
1 von 21
IGARSS 2011, Vancouver, Canada HYPERSPECTRAL UNMIXING USING A NOVEL CONVERSION MODEL Fereidoun A. Mianji, Member, IEEE, Shuang Zhou, Member, IEEE,  Ye Zhang, Member, IEEE Presentation by:  Shuang Zhou School of Electronics and Information Technology Harbin Institute of Technology, Harbin, China
Hyperspectral Unmixing Using a Novel Conversion Model ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
1. Introduction ,[object Object],Fig. 1.1. Spectral variability (a) and mixed-pixel interference (b).
1. Introduction Continue ,[object Object],[object Object],[object Object]
2. Linear Mixture Model (LMM) and Mean-Based Algorithms for Unmixing ,[object Object],[object Object],[object Object],Two main constraints which are often imposed in constrained Linear Spectral Mixture Analysis(LSMA) are  a) abundance sum-to-one constraint (ASC)  b) abundance nonnegativity constraint (ANC).
2. Linear Mixture Model (LMM) and Mean-Based Algorithms for Unmixing  Mean-Based Algorithms for Unmixing ,[object Object],[object Object],[object Object]
2. Linear Mixture Model (LMM) and Mean-Based Algorithms for Unmixing Limitations of Mean-Based Algorithms   ,[object Object],[object Object],[object Object],[object Object]
3. Structure of the Proposed Approach ,[object Object],[object Object],[object Object],[object Object]
3. Structure of the Proposed Approach uccm-SVM
3. Structure of the Proposed Approach uccm-SVM Fig. 3.1. The layout and process flow of uccm-SVM designed for unmixing with a resolution of 1%. Yes No SVM training SVM1: trained for  0% of  “ one” SVM101: t rained for  100% of  “ one” SVM2: trained for  1% of  “ one” 1 - Designating sample  set i  as  “ one” (initial ize with i=1) 2 - Making  synthetic classes using remaining p - 1 training  sample sets (“rest”) Quantification result for “one” in all  pixels (fractional image) … p endmembers: p  training sample set s including  extracted pure  pixel vectors Image Pixel s i> p ? Endmember fractions  rescaling to  unity Next i  (endmember)
4. Data and Experimental Design ,[object Object],[object Object],[object Object],[object Object]
5. Experiments with a Simulated Image Made of Real Hyperspectral Data ,[object Object],We construct the background with sand and concrete and we use roof to implant the targets. A: sand B: concrete C: roof The simulated image is a  1530 pixel vectors (a 51 by  30 hyperspectral image) Fig. 5.1. The simulated image constructed using samples from 3 classes of San Diego.
5. Experiments with a Simulated Image Made of Real Hyperspectral Data  Results Fig. 5.2 Unmixing result for roof by FCLS. Fig. 5.3. Unmixing result for roof by uccm-SVM. We expect to see only 3 peaks, with the amplitue&width of 0.1&15, 0.2&10, and 0.3&5 starting in pixel locations in 300, 750, and 1200, respectively. As can be seen, our method presents a much better result.
5. Experiments with a Simulated Image Made of Real Hyperspectral Data Results ,[object Object],Table 5.1 Comparison of uccm_SVM with FCLS in terms of average square error and computational time. 27.7  158.2  0.0331 1.29 1.19 Uccm-SVM 7.5 N/A 4.82 12.78 4.92 FCLS Test Training Roof Concrete Sand Proccessing time (s) Average square error (%) Technique
6. Experiments with Real Hyperspectral Image with Implanted Mixed Pixels ,[object Object],Fig. 6.1 Two chosen ROIs on Indian Pine hyperspectral image for experiments.
6. Experiments with Real Hyperspectral Image with Implanted Mixed Pixels   Implanting the Border with Mixture of Neighboring Pixels ,[object Object],[object Object],[object Object],Fig. 6.2. Implanting a varying mixture of neighboring pixel vectors in the border line between two adjacent landcover classes
6. Experiments with Real Hyperspectral Image with Implanted Mixed Pixels     Unmixing the Mixed Pixels Implanted in ROI1 Fig. 6.3. (from left to right) True abundance of corn-notill in the border line of ROI1, unmixing results by  FCLS, and unmixing result by uccm-SVM. Table 6.1. Comparison of uccm-SVM with FCLS in terms of average square error and computational time for Indian Pine ROI1. 0.39 85.5 3.16 Uccm-SVM 0.44 N/A 17.01 FCLS Test time (s) Training time (s) Average square error (%) Technique
7. Experiments with Real Hyperspectral image with Many Endmembers ,[object Object],[object Object],[object Object],[object Object],Fig. 7.1. The University of Pavia data set.
7. Experiments with Real Hyperspectral Image with Many Endmembers Results ASE:   uccm-SVM performs better than FCLS on majority of single classes and in ASE average over all sizes of training sets. Computationally:  uccm-SVM is faster than FCLS for low number of training samples and slower for higher numbers. Table. 7.1. Average square error (ASE) for the obtained fractional images using FCLS and uccm-SVM for unmixing of The University of Pavia data set (downsampled).   985.2 511.1 2.35 1.09 1.44 1.16 3.45 0.98 4.12 1.23 3.78 3.89 uccm-SVM 186.3 - 4.45 3.32 2.78 2.23 6.73 0.87 50.1 2.41 8.23 8.47 FCLS 100 94.3 6.9 3.35 1.22 1.89 1.84 5.00 0.82 6.07 1.61 6.60 5.15 uccm-SVM 239.8 - 4.75 4.74 2.81 2.41 6.43 0.91 5.13 3.27 8.24 8.80 FCLS 10 15.5 0.45 4.84 0.69 2.45 2.15 6.15 0.95 6.77 4.45 13.29 6.55 uccm-SVM 223.4 - 5.57 7.75 3.10 2.17 6.01 1.17 6.93 4.04 8.51 10.43 FCLS 2 Test Train Ave. 9 8 7 6 5 4 3 2 1 Time (s) Average square errors (ASE) for classes and also average ASE (%) Method #  Training samples
8. Discussion and Conclusion on the Proposed Approach ,[object Object],[object Object],[object Object],[object Object]
Thanks For Your Attention Shuang Zhou School of Electronics and Information Technology Harbin Institute of Technology, Harbin, China

Weitere ähnliche Inhalte

Was ist angesagt?

Wavelet based image fusion
Wavelet based image fusionWavelet based image fusion
Wavelet based image fusion
Umed Paliwal
 
pattern classification
pattern classificationpattern classification
pattern classification
Ranjan Ganguli
 
Bilateral filtering for gray and color images
Bilateral filtering for gray and color imagesBilateral filtering for gray and color images
Bilateral filtering for gray and color images
Harshal Ladhe
 
Image segmentation
Image segmentationImage segmentation
Image segmentation
Deepak Kumar
 
Exploring Methods to Improve Edge Detection with Canny Algorithm
Exploring Methods to Improve Edge Detection with Canny AlgorithmExploring Methods to Improve Edge Detection with Canny Algorithm
Exploring Methods to Improve Edge Detection with Canny Algorithm
Prasad Thakur
 

Was ist angesagt? (20)

Chapter 9 morphological image processing
Chapter 9   morphological image processingChapter 9   morphological image processing
Chapter 9 morphological image processing
 
03 digital image fundamentals DIP
03 digital image fundamentals DIP03 digital image fundamentals DIP
03 digital image fundamentals DIP
 
Chapter 9 morphological image processing
Chapter 9   morphological image processingChapter 9   morphological image processing
Chapter 9 morphological image processing
 
Wavelet based image fusion
Wavelet based image fusionWavelet based image fusion
Wavelet based image fusion
 
Artifacts
ArtifactsArtifacts
Artifacts
 
Lec9: Medical Image Segmentation (III) (Fuzzy Connected Image Segmentation)
Lec9: Medical Image Segmentation (III) (Fuzzy Connected Image Segmentation)Lec9: Medical Image Segmentation (III) (Fuzzy Connected Image Segmentation)
Lec9: Medical Image Segmentation (III) (Fuzzy Connected Image Segmentation)
 
pattern classification
pattern classificationpattern classification
pattern classification
 
Bilateral filtering for gray and color images
Bilateral filtering for gray and color imagesBilateral filtering for gray and color images
Bilateral filtering for gray and color images
 
Image segmentation
Image segmentationImage segmentation
Image segmentation
 
Lec13: Clustering Based Medical Image Segmentation Methods
Lec13: Clustering Based Medical Image Segmentation MethodsLec13: Clustering Based Medical Image Segmentation Methods
Lec13: Clustering Based Medical Image Segmentation Methods
 
Segmentation Techniques -II
Segmentation Techniques -IISegmentation Techniques -II
Segmentation Techniques -II
 
Exploring Methods to Improve Edge Detection with Canny Algorithm
Exploring Methods to Improve Edge Detection with Canny AlgorithmExploring Methods to Improve Edge Detection with Canny Algorithm
Exploring Methods to Improve Edge Detection with Canny Algorithm
 
Morphological image processing
Morphological image processingMorphological image processing
Morphological image processing
 
Principal component analysis
Principal component analysisPrincipal component analysis
Principal component analysis
 
Motion Estimation - umit 5 (II).pdf
Motion Estimation  - umit 5 (II).pdfMotion Estimation  - umit 5 (II).pdf
Motion Estimation - umit 5 (II).pdf
 
Image Fusion
Image FusionImage Fusion
Image Fusion
 
Region based image segmentation
Region based image segmentationRegion based image segmentation
Region based image segmentation
 
COM2304: Digital Image Fundamentals - I
COM2304: Digital Image Fundamentals - I COM2304: Digital Image Fundamentals - I
COM2304: Digital Image Fundamentals - I
 
Edge detection
Edge detectionEdge detection
Edge detection
 
Lec8: Medical Image Segmentation (II) (Region Growing/Merging)
Lec8: Medical Image Segmentation (II) (Region Growing/Merging)Lec8: Medical Image Segmentation (II) (Region Growing/Merging)
Lec8: Medical Image Segmentation (II) (Region Growing/Merging)
 

Andere mochten auch

Jose_TH1_T09_5.ppt
Jose_TH1_T09_5.pptJose_TH1_T09_5.ppt
Jose_TH1_T09_5.ppt
grssieee
 
NON-LINEAR FULLY-CONSTRAINED SPECTRAL UNMIXING
NON-LINEAR FULLY-CONSTRAINED SPECTRAL UNMIXINGNON-LINEAR FULLY-CONSTRAINED SPECTRAL UNMIXING
NON-LINEAR FULLY-CONSTRAINED SPECTRAL UNMIXING
grssieee
 
MINIMUM ENDMEMBER-WISE DISTANCE CONSTRAINED NONNEGATIVE MATRIX FACTORIZATION ...
MINIMUM ENDMEMBER-WISE DISTANCE CONSTRAINED NONNEGATIVE MATRIX FACTORIZATION ...MINIMUM ENDMEMBER-WISE DISTANCE CONSTRAINED NONNEGATIVE MATRIX FACTORIZATION ...
MINIMUM ENDMEMBER-WISE DISTANCE CONSTRAINED NONNEGATIVE MATRIX FACTORIZATION ...
grssieee
 
chanussot.pdf
chanussot.pdfchanussot.pdf
chanussot.pdf
grssieee
 
SIMPLEX VOLUME ANALYSIS BASED ON TRIANGULAR FACTORIZATION: A FRAMEWORK FOR HY...
SIMPLEX VOLUME ANALYSIS BASED ON TRIANGULAR FACTORIZATION: A FRAMEWORK FOR HY...SIMPLEX VOLUME ANALYSIS BASED ON TRIANGULAR FACTORIZATION: A FRAMEWORK FOR HY...
SIMPLEX VOLUME ANALYSIS BASED ON TRIANGULAR FACTORIZATION: A FRAMEWORK FOR HY...
grssieee
 
ROBUST UNMIXING OF HYPERSPECTRAL IMAGES: APPLICATION TO MARS
ROBUST UNMIXING OF HYPERSPECTRAL IMAGES: APPLICATION TO MARSROBUST UNMIXING OF HYPERSPECTRAL IMAGES: APPLICATION TO MARS
ROBUST UNMIXING OF HYPERSPECTRAL IMAGES: APPLICATION TO MARS
grssieee
 
Yang-IGARSS2011-1082.pptx
Yang-IGARSS2011-1082.pptxYang-IGARSS2011-1082.pptx
Yang-IGARSS2011-1082.pptx
grssieee
 
Subspace_Discriminant_Approach_Hyperspectral.ppt
Subspace_Discriminant_Approach_Hyperspectral.pptSubspace_Discriminant_Approach_Hyperspectral.ppt
Subspace_Discriminant_Approach_Hyperspectral.ppt
grssieee
 
Luo-IGARSS2011-2385.ppt
Luo-IGARSS2011-2385.pptLuo-IGARSS2011-2385.ppt
Luo-IGARSS2011-2385.ppt
grssieee
 

Andere mochten auch (17)

Jose_TH1_T09_5.ppt
Jose_TH1_T09_5.pptJose_TH1_T09_5.ppt
Jose_TH1_T09_5.ppt
 
MCC_PhDDefense
MCC_PhDDefenseMCC_PhDDefense
MCC_PhDDefense
 
NON-LINEAR FULLY-CONSTRAINED SPECTRAL UNMIXING
NON-LINEAR FULLY-CONSTRAINED SPECTRAL UNMIXINGNON-LINEAR FULLY-CONSTRAINED SPECTRAL UNMIXING
NON-LINEAR FULLY-CONSTRAINED SPECTRAL UNMIXING
 
Bonsai Networking: pruning your professional learning network (VU Seminar)
Bonsai Networking: pruning your professional learning network (VU Seminar)Bonsai Networking: pruning your professional learning network (VU Seminar)
Bonsai Networking: pruning your professional learning network (VU Seminar)
 
MINIMUM ENDMEMBER-WISE DISTANCE CONSTRAINED NONNEGATIVE MATRIX FACTORIZATION ...
MINIMUM ENDMEMBER-WISE DISTANCE CONSTRAINED NONNEGATIVE MATRIX FACTORIZATION ...MINIMUM ENDMEMBER-WISE DISTANCE CONSTRAINED NONNEGATIVE MATRIX FACTORIZATION ...
MINIMUM ENDMEMBER-WISE DISTANCE CONSTRAINED NONNEGATIVE MATRIX FACTORIZATION ...
 
chanussot.pdf
chanussot.pdfchanussot.pdf
chanussot.pdf
 
Python Raster Function - Esri Developer Conference - 2015
Python Raster Function - Esri Developer Conference - 2015Python Raster Function - Esri Developer Conference - 2015
Python Raster Function - Esri Developer Conference - 2015
 
SIMPLEX VOLUME ANALYSIS BASED ON TRIANGULAR FACTORIZATION: A FRAMEWORK FOR HY...
SIMPLEX VOLUME ANALYSIS BASED ON TRIANGULAR FACTORIZATION: A FRAMEWORK FOR HY...SIMPLEX VOLUME ANALYSIS BASED ON TRIANGULAR FACTORIZATION: A FRAMEWORK FOR HY...
SIMPLEX VOLUME ANALYSIS BASED ON TRIANGULAR FACTORIZATION: A FRAMEWORK FOR HY...
 
ROBUST UNMIXING OF HYPERSPECTRAL IMAGES: APPLICATION TO MARS
ROBUST UNMIXING OF HYPERSPECTRAL IMAGES: APPLICATION TO MARSROBUST UNMIXING OF HYPERSPECTRAL IMAGES: APPLICATION TO MARS
ROBUST UNMIXING OF HYPERSPECTRAL IMAGES: APPLICATION TO MARS
 
Yang-IGARSS2011-1082.pptx
Yang-IGARSS2011-1082.pptxYang-IGARSS2011-1082.pptx
Yang-IGARSS2011-1082.pptx
 
Subspace_Discriminant_Approach_Hyperspectral.ppt
Subspace_Discriminant_Approach_Hyperspectral.pptSubspace_Discriminant_Approach_Hyperspectral.ppt
Subspace_Discriminant_Approach_Hyperspectral.ppt
 
IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS Does deblurring improve geometrica...
IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS Does deblurring improve geometrica...IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS Does deblurring improve geometrica...
IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS Does deblurring improve geometrica...
 
Luo-IGARSS2011-2385.ppt
Luo-IGARSS2011-2385.pptLuo-IGARSS2011-2385.ppt
Luo-IGARSS2011-2385.ppt
 
Signal Processing Course : Compressed Sensing
Signal Processing Course : Compressed SensingSignal Processing Course : Compressed Sensing
Signal Processing Course : Compressed Sensing
 
Learning Sparse Representation
Learning Sparse RepresentationLearning Sparse Representation
Learning Sparse Representation
 
Spandana image processing and compression techniques (7840228)
Spandana   image processing and compression techniques (7840228)Spandana   image processing and compression techniques (7840228)
Spandana image processing and compression techniques (7840228)
 
Post pruning
Post pruning Post pruning
Post pruning
 

Ähnlich wie Hyperspectral unmixing using novel conversion model.ppt

IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
ijceronline
 
PREDICTION BASED LOSSLESS COMPRESSION SCHEME FOR BAYER COLOUR FILTER ARRAY IM...
PREDICTION BASED LOSSLESS COMPRESSION SCHEME FOR BAYER COLOUR FILTER ARRAY IM...PREDICTION BASED LOSSLESS COMPRESSION SCHEME FOR BAYER COLOUR FILTER ARRAY IM...
PREDICTION BASED LOSSLESS COMPRESSION SCHEME FOR BAYER COLOUR FILTER ARRAY IM...
ijiert bestjournal
 
AHF_IDETC_2011_Jie
AHF_IDETC_2011_JieAHF_IDETC_2011_Jie
AHF_IDETC_2011_Jie
MDO_Lab
 
EENG512FinalPresentation_DanielKuntz
EENG512FinalPresentation_DanielKuntzEENG512FinalPresentation_DanielKuntz
EENG512FinalPresentation_DanielKuntz
Daniel K
 

Ähnlich wie Hyperspectral unmixing using novel conversion model.ppt (20)

Block coordinate descent__in_computer_vision
Block coordinate descent__in_computer_visionBlock coordinate descent__in_computer_vision
Block coordinate descent__in_computer_vision
 
Partha Sengupta_structural analysis.pptx
Partha Sengupta_structural analysis.pptxPartha Sengupta_structural analysis.pptx
Partha Sengupta_structural analysis.pptx
 
Visual Environment by Semantic Segmentation Using Deep Learning: A Prototype ...
Visual Environment by Semantic Segmentation Using Deep Learning: A Prototype ...Visual Environment by Semantic Segmentation Using Deep Learning: A Prototype ...
Visual Environment by Semantic Segmentation Using Deep Learning: A Prototype ...
 
Super Resolution with OCR Optimization
Super Resolution with OCR OptimizationSuper Resolution with OCR Optimization
Super Resolution with OCR Optimization
 
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...IJCER (www.ijceronline.com) International Journal of computational Engineerin...
IJCER (www.ijceronline.com) International Journal of computational Engineerin...
 
Road Segmentation from satellites images
Road Segmentation from satellites imagesRoad Segmentation from satellites images
Road Segmentation from satellites images
 
Fin_whales
Fin_whalesFin_whales
Fin_whales
 
A F AULT D IAGNOSIS M ETHOD BASED ON S EMI - S UPERVISED F UZZY C-M EANS...
A F AULT  D IAGNOSIS  M ETHOD BASED ON  S EMI - S UPERVISED  F UZZY  C-M EANS...A F AULT  D IAGNOSIS  M ETHOD BASED ON  S EMI - S UPERVISED  F UZZY  C-M EANS...
A F AULT D IAGNOSIS M ETHOD BASED ON S EMI - S UPERVISED F UZZY C-M EANS...
 
11 7986 9062-1-pb
11 7986 9062-1-pb11 7986 9062-1-pb
11 7986 9062-1-pb
 
An Iterative Solution for Random Valued Impulse Noise Reduction
An Iterative Solution for Random Valued Impulse Noise ReductionAn Iterative Solution for Random Valued Impulse Noise Reduction
An Iterative Solution for Random Valued Impulse Noise Reduction
 
PREDICTION BASED LOSSLESS COMPRESSION SCHEME FOR BAYER COLOUR FILTER ARRAY IM...
PREDICTION BASED LOSSLESS COMPRESSION SCHEME FOR BAYER COLOUR FILTER ARRAY IM...PREDICTION BASED LOSSLESS COMPRESSION SCHEME FOR BAYER COLOUR FILTER ARRAY IM...
PREDICTION BASED LOSSLESS COMPRESSION SCHEME FOR BAYER COLOUR FILTER ARRAY IM...
 
Estimation of Terrain Gradient Conditions & Obstacle Detection Using a Monocu...
Estimation of Terrain Gradient Conditions & Obstacle Detection Using a Monocu...Estimation of Terrain Gradient Conditions & Obstacle Detection Using a Monocu...
Estimation of Terrain Gradient Conditions & Obstacle Detection Using a Monocu...
 
Path loss prediction
Path loss predictionPath loss prediction
Path loss prediction
 
AHF_IDETC_2011_Jie
AHF_IDETC_2011_JieAHF_IDETC_2011_Jie
AHF_IDETC_2011_Jie
 
EENG512FinalPresentation_DanielKuntz
EENG512FinalPresentation_DanielKuntzEENG512FinalPresentation_DanielKuntz
EENG512FinalPresentation_DanielKuntz
 
IRJET- Object Detection in Underwater Images using Faster Region based Convol...
IRJET- Object Detection in Underwater Images using Faster Region based Convol...IRJET- Object Detection in Underwater Images using Faster Region based Convol...
IRJET- Object Detection in Underwater Images using Faster Region based Convol...
 
D0361034037
D0361034037D0361034037
D0361034037
 
PhysRevE.89.042911
PhysRevE.89.042911PhysRevE.89.042911
PhysRevE.89.042911
 
557 480-486
557 480-486557 480-486
557 480-486
 
Another Adaptive Approach to Novelty Detection in Time Series
Another Adaptive Approach to Novelty Detection in Time Series Another Adaptive Approach to Novelty Detection in Time Series
Another Adaptive Approach to Novelty Detection in Time Series
 

Mehr von grssieee

Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
grssieee
 
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODELSEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
grssieee
 
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
grssieee
 
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIESTHE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
grssieee
 
GMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUSGMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUS
grssieee
 
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETERPROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
grssieee
 
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
grssieee
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
grssieee
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
grssieee
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
grssieee
 
test 34mb wo animations
test  34mb wo animationstest  34mb wo animations
test 34mb wo animations
grssieee
 
2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf
grssieee
 
DLR open house
DLR open houseDLR open house
DLR open house
grssieee
 
DLR open house
DLR open houseDLR open house
DLR open house
grssieee
 
DLR open house
DLR open houseDLR open house
DLR open house
grssieee
 
Tana_IGARSS2011.ppt
Tana_IGARSS2011.pptTana_IGARSS2011.ppt
Tana_IGARSS2011.ppt
grssieee
 
Solaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.pptSolaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.ppt
grssieee
 

Mehr von grssieee (20)

Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
 
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODELSEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
 
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
 
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIESTHE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
 
GMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUSGMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUS
 
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETERPROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
 
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
 
Test
TestTest
Test
 
test 34mb wo animations
test  34mb wo animationstest  34mb wo animations
test 34mb wo animations
 
Test 70MB
Test 70MBTest 70MB
Test 70MB
 
Test 70MB
Test 70MBTest 70MB
Test 70MB
 
2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf
 
DLR open house
DLR open houseDLR open house
DLR open house
 
DLR open house
DLR open houseDLR open house
DLR open house
 
DLR open house
DLR open houseDLR open house
DLR open house
 
Tana_IGARSS2011.ppt
Tana_IGARSS2011.pptTana_IGARSS2011.ppt
Tana_IGARSS2011.ppt
 
Solaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.pptSolaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.ppt
 

Kürzlich hochgeladen

Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 

Kürzlich hochgeladen (20)

AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Ransomware_Q4_2023. The report. [EN].pdf
Ransomware_Q4_2023. The report. [EN].pdfRansomware_Q4_2023. The report. [EN].pdf
Ransomware_Q4_2023. The report. [EN].pdf
 

Hyperspectral unmixing using novel conversion model.ppt

  • 1. IGARSS 2011, Vancouver, Canada HYPERSPECTRAL UNMIXING USING A NOVEL CONVERSION MODEL Fereidoun A. Mianji, Member, IEEE, Shuang Zhou, Member, IEEE, Ye Zhang, Member, IEEE Presentation by: Shuang Zhou School of Electronics and Information Technology Harbin Institute of Technology, Harbin, China
  • 2.
  • 3.
  • 4.
  • 5.
  • 6.
  • 7.
  • 8.
  • 9. 3. Structure of the Proposed Approach uccm-SVM
  • 10. 3. Structure of the Proposed Approach uccm-SVM Fig. 3.1. The layout and process flow of uccm-SVM designed for unmixing with a resolution of 1%. Yes No SVM training SVM1: trained for 0% of “ one” SVM101: t rained for 100% of “ one” SVM2: trained for 1% of “ one” 1 - Designating sample set i as “ one” (initial ize with i=1) 2 - Making synthetic classes using remaining p - 1 training sample sets (“rest”) Quantification result for “one” in all pixels (fractional image) … p endmembers: p training sample set s including extracted pure pixel vectors Image Pixel s i> p ? Endmember fractions rescaling to unity Next i (endmember)
  • 11.
  • 12.
  • 13. 5. Experiments with a Simulated Image Made of Real Hyperspectral Data Results Fig. 5.2 Unmixing result for roof by FCLS. Fig. 5.3. Unmixing result for roof by uccm-SVM. We expect to see only 3 peaks, with the amplitue&width of 0.1&15, 0.2&10, and 0.3&5 starting in pixel locations in 300, 750, and 1200, respectively. As can be seen, our method presents a much better result.
  • 14.
  • 15.
  • 16.
  • 17. 6. Experiments with Real Hyperspectral Image with Implanted Mixed Pixels Unmixing the Mixed Pixels Implanted in ROI1 Fig. 6.3. (from left to right) True abundance of corn-notill in the border line of ROI1, unmixing results by FCLS, and unmixing result by uccm-SVM. Table 6.1. Comparison of uccm-SVM with FCLS in terms of average square error and computational time for Indian Pine ROI1. 0.39 85.5 3.16 Uccm-SVM 0.44 N/A 17.01 FCLS Test time (s) Training time (s) Average square error (%) Technique
  • 18.
  • 19. 7. Experiments with Real Hyperspectral Image with Many Endmembers Results ASE: uccm-SVM performs better than FCLS on majority of single classes and in ASE average over all sizes of training sets. Computationally: uccm-SVM is faster than FCLS for low number of training samples and slower for higher numbers. Table. 7.1. Average square error (ASE) for the obtained fractional images using FCLS and uccm-SVM for unmixing of The University of Pavia data set (downsampled). 985.2 511.1 2.35 1.09 1.44 1.16 3.45 0.98 4.12 1.23 3.78 3.89 uccm-SVM 186.3 - 4.45 3.32 2.78 2.23 6.73 0.87 50.1 2.41 8.23 8.47 FCLS 100 94.3 6.9 3.35 1.22 1.89 1.84 5.00 0.82 6.07 1.61 6.60 5.15 uccm-SVM 239.8 - 4.75 4.74 2.81 2.41 6.43 0.91 5.13 3.27 8.24 8.80 FCLS 10 15.5 0.45 4.84 0.69 2.45 2.15 6.15 0.95 6.77 4.45 13.29 6.55 uccm-SVM 223.4 - 5.57 7.75 3.10 2.17 6.01 1.17 6.93 4.04 8.51 10.43 FCLS 2 Test Train Ave. 9 8 7 6 5 4 3 2 1 Time (s) Average square errors (ASE) for classes and also average ASE (%) Method # Training samples
  • 20.
  • 21. Thanks For Your Attention Shuang Zhou School of Electronics and Information Technology Harbin Institute of Technology, Harbin, China