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Hyperspectral Data Processing: Algorithm Design and Analysis is a culmination of the research conducted in the Remote Sensing Signal and Image Processing Laboratory (RSSIPL) at the University of Maryland, Baltimore County. Specifically, it treats hyperspectral image processing and hyperspectral signal processing as separate subjects in two different categories. Most materials covered in this book can be used in conjunction with the author's first book, Hyperspectral Imaging: Techniques for Spectral Detection and Classification, without much overlap. Many results in this book are either new or…mehr
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- Produktdetails
- Verlag: John Wiley & Sons
- Seitenzahl: 1168
- Erscheinungstermin: 1. Februar 2013
- Englisch
- ISBN-13: 9781118269770
- Artikelnr.: 37755844
- Verlag: John Wiley & Sons
- Seitenzahl: 1168
- Erscheinungstermin: 1. Februar 2013
- Englisch
- ISBN-13: 9781118269770
- Artikelnr.: 37755844
Multispectral and Hyperspectral Imageries 3 1.3 Divergence of Hyperspectral
Imagery from Multispectral Imagery 4 1.4 Scope of This Book 7 1.5 Book's
Organization 10 1.6 Laboratory Data to be Used in This Book 19 1.7 Real
Hyperspectral Images to be Used in this Book 20 1.8 Notations and
Terminologies to be Used in this Book 29 I: PRELIMINARIES 31 2 FUNDAMENTALS
OF SUBSAMPLE AND MIXED SAMPLE ANALYSES 33 2.1 Introduction 33 2.2 Subsample
Analysis 35 2.3 Mixed Sample Analysis 45 2.4 Kernel-Based Classification 57
2.5 Conclusions 60 3 THREE-DIMENSIONAL RECEIVER OPERATING CHARACTERISTICS
(3D ROC) ANALYSIS 63 3.1 Introduction 63 3.2 Neyman-Pearson Detection
Problem Formulation 65 3.3 ROC Analysis 67 3.4 3D ROC Analysis 69 3.5 Real
Data-Based ROC Analysis 72 3.6 Examples 78 3.7 Conclusions 99 4 DESIGN OF
SYNTHETIC IMAGE EXPERIMENTS 101 4.1 Introduction 102 4.2 Simulation of
Targets of Interest 103 4.3 Six Scenarios of Synthetic Images 104 4.4
Applications 112 4.5 Conclusions 123 5 VIRTUAL DIMENSIONALITY OF
HYPERSPECTRAL DATA 124 5.1 Introduction 124 5.2 Reinterpretation of VD 126
5.3 VD Determined by Data Characterization-Driven Criteria 126 5.4 VD
Determined by Data Representation-Driven Criteria 140 5.5 Synthetic Image
Experiments 144 5.6 VD Estimated for Real Hyperspectral Images 155 5.7
Conclusions 163 6 DATA DIMENSIONALITY REDUCTION 168 6.1 Introduction 168
6.2 Dimensionality Reduction by Second-Order Statistics-Based Component
Analysis Transforms 170 6.3 Dimensionality Reduction by High-Order
Statistics-Based Components Analysis Transforms 179 6.4 Dimensionality
Reduction by Infinite-Order Statistics-Based Components Analysis Transforms
184 6.5 Dimensionality Reduction by Projection Pursuit-Based Components
Analysis Transforms 190 6.6 Dimensionality Reduction by Feature
Extraction-Based Transforms 195 6.7 Dimensionality Reduction by Band
Selection 196 6.8 Constrained Band Selection 197 6.9 Conclusions 198 II:
ENDMEMBER EXTRACTION 201 7 SIMULTANEOUS ENDMEMBER EXTRACTION ALGORITHMS
(SM-EEAs) 207 7.1 Introduction 208 7.2 Convex Geometry-Based Endmember
Extraction 209 7.3 Second-Order Statistics-Based Endmember Extraction 228
7.4 Automated Morphological Endmember Extraction (AMEE) 230 7.5 Experiments
231 7.6 Conclusions 239 8 SEQUENTIAL ENDMEMBER EXTRACTION ALGORITHMS
(SQ-EEAs) 241 8.1 Introduction 241 8.2 Successive N-FINDR (SC N-FINDR) 244
8.3 Simplex Growing Algorithm (SGA) 244 8.4 Vertex Component Analysis (VCA)
247 8.5 Linear Spectral Mixture Analysis-Based SQ-EEAs 248 8.6 High-Order
Statistics-Based SQ-EEAS 252 8.7 Experiments 254 8.8 Conclusions 262 9
INITIALIZATION-DRIVEN ENDMEMBER EXTRACTION ALGORITHMS (ID-EEAs) 265 9.1
Introduction 265 9.2 Initialization Issues 266 9.3 Initialization-Driven
EEAs 271 9.4 Experiments 278 9.5 Conclusions 283 10 RANDOM ENDMEMBER
EXTRACTION ALGORITHMS (REEAs) 287 10.1 Introduction 287 10.2 Random PPI
(RPPI) 288 10.3 Random VCA (RVCA) 290 10.4 Random N-FINDR (RN-FINDR) 290
10.5 Random SGA (RSGA) 292 10.6 Random ICA-Based EEA (RICA-EEA) 292 10.7
Synthetic Image Experiments 293 10.8 Real Image Experiments 305 10.9
Conclusions 313 11 EXPLORATION ON RELATIONSHIPS AMONG ENDMEMBER EXTRACTION
ALGORITHMS 316 11.1 Introduction 316 11.2 Orthogonal Projection-Based EEAs
318 11.3 Comparative Study and Analysis Between SGA and VCA 330 11.4 Does
an Endmember Set Really Yield Maximum Simplex Volume? 339 11.5 Impact of
Dimensionality Reduction on EEAs 344 11.6 Conclusions 348 III: SUPERVISED
LINEAR HYPERSPECTRAL MIXTURE ANALYSIS 351 12 ORTHOGONAL SUBSPACE PROJECTION
REVISITED 355 12.1 Introduction 355 12.2 Three Perspectives to Derive OSP
358 12.3 Gaussian Noise in OSP 364 12.4 OSP Implemented with Partial
Knowledge 372 12.5 OSP Implemented Without Knowledge 383 12.6 Conclusions
390 13 FISHER'S LINEAR SPECTRAL MIXTURE ANALYSIS 391 13.1 Introduction 391
13.2 Feature Vector-Constrained FLSMA (FVC-FLSMA) 392 13.3 Relationship
Between FVC-FLSMA and LCMV, TCIMF, and CEM 395 13.4 Relationship Between
FVC-FLSMA and OSP 396 13.5 Relationship Between FVC-FLSMA and LCDA 396 13.6
Abundance-Constrained Least Squares FLDA (ACLS-FLDA) 397 13.7 Synthetic
Image Experiments 398 13.8 Real Image Experiments 402 13.9 Conclusions 409
14 WEIGHTED ABUNDANCE-CONSTRAINED LINEAR SPECTRAL MIXTURE ANALYSIS 411 14.1
Introduction 411 14.2 Abundance-Constrained LSMA (AC-LSMA) 413 14.3
Weighted Least-Squares Abundance-Constrained LSMA 413 14.4 Synthetic
Image-Based Computer Simulations 419 14.5 Real Image Experiments 426 14.6
Conclusions 432 15 KERNEL-BASED LINEAR SPECTRAL MIXTURE ANALYSIS 434 15.1
Introduction 434 15.2 Kernel-Based LSMA (KLSMA) 436 15.3 Synthetic Image
Experiments 441 15.4 AVIRIS Data Experiments 444 15.5 HYDICE Data
Experiments 460 15.6 Conclusions 462 IV: UNSUPERVISED HYPERSPECTRAL IMAGE
ANALYSIS 465 16 HYPERSPECTRAL MEASURES 469 16.1 Introduction 469 16.2
Signature Vector-Based Hyperspectral Measures for Target Discrimanition and
Identification 470 16.3 Correlation-Weighted Hyperspectral Measures for
Target Discrimanition and Identification 472 16.4 Experiments 477 16.5
Conclusions 482 17 UNSUPERVISED LINEAR HYPERSPECTRAL MIXTURE ANALYSIS 483
17.1 Introduction 483 17.2 Least Squares-Based ULSMA 486 17.3 Component
Analysis-Based ULSMA 488 17.4 Synthetic Image Experiments 490 17.5
Real-Image Experiments 503 17.6 ULSMAVersus Endmember Extraction 517 17.7
Conclusions 524 18 PIXEL EXTRACTION AND INFORMATION 526 18.1 Introduction
526 18.2 Four Types of Pixels 527 18.3 Algorithms Selected to Extract Pixel
Information 528 18.4 Pixel Information Analysis via Synthetic Images 528
18.5 Real Image Experiments 534 18.6 Conclusions 539 V: HYPERSPECTRAL
INFORMATION COMPRESSION 541 19 EXPLOITATION-BASED HYPERSPECTRAL DATA
COMPRESSION 545 19.1 Introduction 545 19.2 Hyperspectral Information
Compression Systems 547 19.3 Spectral/Spatial Compression 549 19.4
Progressive Spectral/Spatial Compression 557 19.5 3D Compression 557 19.6
Exploration-Based Applications 559 19.7 Experiments 561 19.8 Conclusions
580 20 PROGRESSIVE SPECTRAL DIMENSIONALITY PROCESS 581 20.1 Introduction
582 20.2 Dimensionality Prioritization 584 20.3 Representation of
Transformed Components for DP 585 20.4 Progressive Spectral Dimensionality
Process 589 20.5 Hyperspectral Compression by PSDP 597 20.6 Experiments for
PSDP 598 20.7 Conclusions 608 21 PROGRESSIVE BAND DIMENSIONALITY PROCESS
613 21.1 Introduction 614 21.2 Band Prioritization 615 21.3 Criteria for
Band Prioritization 617 21.4 Experiments for BP 624 21.5 Progressive Band
Dimensionality Process 651 21.6 Hyperspectral Compresssion by PBDP 653 21.7
Experiments for PBDP 656 21.8 Conclusions 662 22 DYNAMIC
DIMENSIONALITYALLOCATION 664 22.1 Introduction 664 22.2 Dynamic
Dimensionality Allocaction 665 22.3 Signature Discriminatory Probabilties
667 22.4 Coding Techniques for Determining DDA 667 22.5 Experiments for
Dynamic Dimensionality Allocation 669 22.6 Conclusions 682 23 PROGRESSIVE
BAND SELECTION 683 23.1 Introduction 683 23.2 Band De-Corrleation 684 23.3
Progressive Band Selection 686 23.4 Experiments for Progressive Band
Selection 688 23.5 Endmember Extraction 688 23.6 Land Cover/Use
Classification 690 23.7 Linear Spectral Mixture Analysis 694 23.8
Conclusions 715 VI: HYPERSPECTRAL SIGNAL CODING 717 24 BINARY CODING FOR
SPECTRAL SIGNATURES 719 24.1 Introduction 719 24.2 Binary Coding 720 24.3
Spectral Feature-Based Coding 723 24.4 Experiments 725 24.5 Conclusions 740
25 VECTOR CODING FOR HYPERSPECTRAL SIGNATURES 741 25.1 Introduction 741
25.2 Spectral Derivative Feature Coding 743 25.3 Spectral Feature
Probabilistic Coding 755 25.4 Real Image Experiments 764 25.5 Conclusions
771 26 PROGRESSIVE CODING FOR SPECTRAL SIGNATURES 772 26.1 Introduction 772
26.2 Multistage Pulse Code Modulation 774 26.3 MPCM-Based Progressive
Spectral Signature Coding 783 26.4 NIST-GAS Data Experiments 786 26.5 Real
Image Hyperspectral Experiments 790 26.6 Conclusions 796 VII: HYPERSPECTRAL
SIGNAL CHARACTERIZATION 797 27 VARIABLE-NUMBERVARIABLE-BAND SELECTION FOR
HYPERSPECTRAL SIGNALS 799 27.1 Introduction 799 27.2 Orthogonal Subspace
Projection-Based Band Prioritization Criterion 801 27.3 Variable-Number
Variable-Band Selection 803 27.4 Experiments 806 27.5 Selection of
Reference Signatures 819 27.6 Conclusions 819 28 KALMAN FILTER-BASED
ESTIMATION FOR HYPERSPECTRAL SIGNALS 820 28.1 Introduction 820 28.2 Kalman
Filter-Based Linear Unmixing 822 28.3 Kalman Filter-Based Spectral
Characterization Signal-Processing Techniques 824 28.4 Computer Simulations
Using AVIRIS Data 831 28.5 Computer Simulations Using NIST-Gas Data 843
28.6 Real Data Experiments 852 28.7 Conclusions 857 29 WAVELET
REPRESENTATION FOR HYPERSPECTRAL SIGNALS 859 29.1 Introduction 859 29.2
Wavelet Analysis 860 29.2.1 Multiscale Approximation 860 29.2.2 Scaling
Function 861 29.2.3 Wavelet Function 862 29.3 Wavelet-Based Signature
Characterization Algorithm 863 29.4 Synthetic Image-Based Computer
Simulations 868 29.5 Real Image Experiments 871 29.6 Conclusions 875 VIII:
APPLICATIONS 877 30 APPLICATIONS OF TARGET DETECTION 879 30.1 Introduction
879 30.2 Size Estimation of Subpixel Targets 880 30.3 Experiments 881 30.4
Concealed Target Detection 891 30.5 Computer-Aided Detection and
Classification Algorithm for Concealed Targets 892 30.6 Experiments for
Concealed Target Detection 893 30.7 Conclusions 895 31 NONLINEAR
DIMENSIONALITY EXPANSION TO MULTISPECTRAL IMAGERY 897 31.1 Introduction 897
31.2 Band Dimensionality Expansion 899 31.3 Hyperspectral Imaging
Techniques Expanded by BDE 902 31.4 Feature Dimensionality Expansion by
Nonlinear Kernels 904 31.5 BDE in Conjunction with FDE 909 31.6
Multispectral Image Experiments 909 31.7 Conclusion 918 32 MULTISPECTRAL
MAGNETIC RESONANCE IMAGING 920 32.1 Introduction 920 32.2 Linear Spectral
Mixture Analysis for MRI 923 32.3 Linear Spectral Random Mixture Analysis
for MRI 928 32.4 Kernel-Based Linear Spectral Mixture Analysis 933 32.5
Synthetic MR Brain Image Experiments 933 32.6 Real MR Brain Image
Experiments 951 32.7 Conclusions 955 33 CONCLUSIONS 956 33.1 Design
Principles for Nonliteral Hyperspectral Imaging Techniques 956 33.2
Endmember Extraction 964 33.3 Linear Spectral Mixture Analysis 970 33.4
Anomaly Detection 974 33.5 Support Vector Machines and Kernel-Based
Approaches 977 33.6 Hyperspectral Compression 981 33.7 Hyperspectral Signal
Processing 984 33.8 Applications 987 33.9 Further Topics 987 GLOSSARY 993
APPENDIX: ALGORITHM COMPENDIUM 997 REFERENCES 1052 INDEX 1071
Multispectral and Hyperspectral Imageries 3 1.3 Divergence of Hyperspectral
Imagery from Multispectral Imagery 4 1.4 Scope of This Book 7 1.5 Book's
Organization 10 1.6 Laboratory Data to be Used in This Book 19 1.7 Real
Hyperspectral Images to be Used in this Book 20 1.8 Notations and
Terminologies to be Used in this Book 29 I: PRELIMINARIES 31 2 FUNDAMENTALS
OF SUBSAMPLE AND MIXED SAMPLE ANALYSES 33 2.1 Introduction 33 2.2 Subsample
Analysis 35 2.3 Mixed Sample Analysis 45 2.4 Kernel-Based Classification 57
2.5 Conclusions 60 3 THREE-DIMENSIONAL RECEIVER OPERATING CHARACTERISTICS
(3D ROC) ANALYSIS 63 3.1 Introduction 63 3.2 Neyman-Pearson Detection
Problem Formulation 65 3.3 ROC Analysis 67 3.4 3D ROC Analysis 69 3.5 Real
Data-Based ROC Analysis 72 3.6 Examples 78 3.7 Conclusions 99 4 DESIGN OF
SYNTHETIC IMAGE EXPERIMENTS 101 4.1 Introduction 102 4.2 Simulation of
Targets of Interest 103 4.3 Six Scenarios of Synthetic Images 104 4.4
Applications 112 4.5 Conclusions 123 5 VIRTUAL DIMENSIONALITY OF
HYPERSPECTRAL DATA 124 5.1 Introduction 124 5.2 Reinterpretation of VD 126
5.3 VD Determined by Data Characterization-Driven Criteria 126 5.4 VD
Determined by Data Representation-Driven Criteria 140 5.5 Synthetic Image
Experiments 144 5.6 VD Estimated for Real Hyperspectral Images 155 5.7
Conclusions 163 6 DATA DIMENSIONALITY REDUCTION 168 6.1 Introduction 168
6.2 Dimensionality Reduction by Second-Order Statistics-Based Component
Analysis Transforms 170 6.3 Dimensionality Reduction by High-Order
Statistics-Based Components Analysis Transforms 179 6.4 Dimensionality
Reduction by Infinite-Order Statistics-Based Components Analysis Transforms
184 6.5 Dimensionality Reduction by Projection Pursuit-Based Components
Analysis Transforms 190 6.6 Dimensionality Reduction by Feature
Extraction-Based Transforms 195 6.7 Dimensionality Reduction by Band
Selection 196 6.8 Constrained Band Selection 197 6.9 Conclusions 198 II:
ENDMEMBER EXTRACTION 201 7 SIMULTANEOUS ENDMEMBER EXTRACTION ALGORITHMS
(SM-EEAs) 207 7.1 Introduction 208 7.2 Convex Geometry-Based Endmember
Extraction 209 7.3 Second-Order Statistics-Based Endmember Extraction 228
7.4 Automated Morphological Endmember Extraction (AMEE) 230 7.5 Experiments
231 7.6 Conclusions 239 8 SEQUENTIAL ENDMEMBER EXTRACTION ALGORITHMS
(SQ-EEAs) 241 8.1 Introduction 241 8.2 Successive N-FINDR (SC N-FINDR) 244
8.3 Simplex Growing Algorithm (SGA) 244 8.4 Vertex Component Analysis (VCA)
247 8.5 Linear Spectral Mixture Analysis-Based SQ-EEAs 248 8.6 High-Order
Statistics-Based SQ-EEAS 252 8.7 Experiments 254 8.8 Conclusions 262 9
INITIALIZATION-DRIVEN ENDMEMBER EXTRACTION ALGORITHMS (ID-EEAs) 265 9.1
Introduction 265 9.2 Initialization Issues 266 9.3 Initialization-Driven
EEAs 271 9.4 Experiments 278 9.5 Conclusions 283 10 RANDOM ENDMEMBER
EXTRACTION ALGORITHMS (REEAs) 287 10.1 Introduction 287 10.2 Random PPI
(RPPI) 288 10.3 Random VCA (RVCA) 290 10.4 Random N-FINDR (RN-FINDR) 290
10.5 Random SGA (RSGA) 292 10.6 Random ICA-Based EEA (RICA-EEA) 292 10.7
Synthetic Image Experiments 293 10.8 Real Image Experiments 305 10.9
Conclusions 313 11 EXPLORATION ON RELATIONSHIPS AMONG ENDMEMBER EXTRACTION
ALGORITHMS 316 11.1 Introduction 316 11.2 Orthogonal Projection-Based EEAs
318 11.3 Comparative Study and Analysis Between SGA and VCA 330 11.4 Does
an Endmember Set Really Yield Maximum Simplex Volume? 339 11.5 Impact of
Dimensionality Reduction on EEAs 344 11.6 Conclusions 348 III: SUPERVISED
LINEAR HYPERSPECTRAL MIXTURE ANALYSIS 351 12 ORTHOGONAL SUBSPACE PROJECTION
REVISITED 355 12.1 Introduction 355 12.2 Three Perspectives to Derive OSP
358 12.3 Gaussian Noise in OSP 364 12.4 OSP Implemented with Partial
Knowledge 372 12.5 OSP Implemented Without Knowledge 383 12.6 Conclusions
390 13 FISHER'S LINEAR SPECTRAL MIXTURE ANALYSIS 391 13.1 Introduction 391
13.2 Feature Vector-Constrained FLSMA (FVC-FLSMA) 392 13.3 Relationship
Between FVC-FLSMA and LCMV, TCIMF, and CEM 395 13.4 Relationship Between
FVC-FLSMA and OSP 396 13.5 Relationship Between FVC-FLSMA and LCDA 396 13.6
Abundance-Constrained Least Squares FLDA (ACLS-FLDA) 397 13.7 Synthetic
Image Experiments 398 13.8 Real Image Experiments 402 13.9 Conclusions 409
14 WEIGHTED ABUNDANCE-CONSTRAINED LINEAR SPECTRAL MIXTURE ANALYSIS 411 14.1
Introduction 411 14.2 Abundance-Constrained LSMA (AC-LSMA) 413 14.3
Weighted Least-Squares Abundance-Constrained LSMA 413 14.4 Synthetic
Image-Based Computer Simulations 419 14.5 Real Image Experiments 426 14.6
Conclusions 432 15 KERNEL-BASED LINEAR SPECTRAL MIXTURE ANALYSIS 434 15.1
Introduction 434 15.2 Kernel-Based LSMA (KLSMA) 436 15.3 Synthetic Image
Experiments 441 15.4 AVIRIS Data Experiments 444 15.5 HYDICE Data
Experiments 460 15.6 Conclusions 462 IV: UNSUPERVISED HYPERSPECTRAL IMAGE
ANALYSIS 465 16 HYPERSPECTRAL MEASURES 469 16.1 Introduction 469 16.2
Signature Vector-Based Hyperspectral Measures for Target Discrimanition and
Identification 470 16.3 Correlation-Weighted Hyperspectral Measures for
Target Discrimanition and Identification 472 16.4 Experiments 477 16.5
Conclusions 482 17 UNSUPERVISED LINEAR HYPERSPECTRAL MIXTURE ANALYSIS 483
17.1 Introduction 483 17.2 Least Squares-Based ULSMA 486 17.3 Component
Analysis-Based ULSMA 488 17.4 Synthetic Image Experiments 490 17.5
Real-Image Experiments 503 17.6 ULSMAVersus Endmember Extraction 517 17.7
Conclusions 524 18 PIXEL EXTRACTION AND INFORMATION 526 18.1 Introduction
526 18.2 Four Types of Pixels 527 18.3 Algorithms Selected to Extract Pixel
Information 528 18.4 Pixel Information Analysis via Synthetic Images 528
18.5 Real Image Experiments 534 18.6 Conclusions 539 V: HYPERSPECTRAL
INFORMATION COMPRESSION 541 19 EXPLOITATION-BASED HYPERSPECTRAL DATA
COMPRESSION 545 19.1 Introduction 545 19.2 Hyperspectral Information
Compression Systems 547 19.3 Spectral/Spatial Compression 549 19.4
Progressive Spectral/Spatial Compression 557 19.5 3D Compression 557 19.6
Exploration-Based Applications 559 19.7 Experiments 561 19.8 Conclusions
580 20 PROGRESSIVE SPECTRAL DIMENSIONALITY PROCESS 581 20.1 Introduction
582 20.2 Dimensionality Prioritization 584 20.3 Representation of
Transformed Components for DP 585 20.4 Progressive Spectral Dimensionality
Process 589 20.5 Hyperspectral Compression by PSDP 597 20.6 Experiments for
PSDP 598 20.7 Conclusions 608 21 PROGRESSIVE BAND DIMENSIONALITY PROCESS
613 21.1 Introduction 614 21.2 Band Prioritization 615 21.3 Criteria for
Band Prioritization 617 21.4 Experiments for BP 624 21.5 Progressive Band
Dimensionality Process 651 21.6 Hyperspectral Compresssion by PBDP 653 21.7
Experiments for PBDP 656 21.8 Conclusions 662 22 DYNAMIC
DIMENSIONALITYALLOCATION 664 22.1 Introduction 664 22.2 Dynamic
Dimensionality Allocaction 665 22.3 Signature Discriminatory Probabilties
667 22.4 Coding Techniques for Determining DDA 667 22.5 Experiments for
Dynamic Dimensionality Allocation 669 22.6 Conclusions 682 23 PROGRESSIVE
BAND SELECTION 683 23.1 Introduction 683 23.2 Band De-Corrleation 684 23.3
Progressive Band Selection 686 23.4 Experiments for Progressive Band
Selection 688 23.5 Endmember Extraction 688 23.6 Land Cover/Use
Classification 690 23.7 Linear Spectral Mixture Analysis 694 23.8
Conclusions 715 VI: HYPERSPECTRAL SIGNAL CODING 717 24 BINARY CODING FOR
SPECTRAL SIGNATURES 719 24.1 Introduction 719 24.2 Binary Coding 720 24.3
Spectral Feature-Based Coding 723 24.4 Experiments 725 24.5 Conclusions 740
25 VECTOR CODING FOR HYPERSPECTRAL SIGNATURES 741 25.1 Introduction 741
25.2 Spectral Derivative Feature Coding 743 25.3 Spectral Feature
Probabilistic Coding 755 25.4 Real Image Experiments 764 25.5 Conclusions
771 26 PROGRESSIVE CODING FOR SPECTRAL SIGNATURES 772 26.1 Introduction 772
26.2 Multistage Pulse Code Modulation 774 26.3 MPCM-Based Progressive
Spectral Signature Coding 783 26.4 NIST-GAS Data Experiments 786 26.5 Real
Image Hyperspectral Experiments 790 26.6 Conclusions 796 VII: HYPERSPECTRAL
SIGNAL CHARACTERIZATION 797 27 VARIABLE-NUMBERVARIABLE-BAND SELECTION FOR
HYPERSPECTRAL SIGNALS 799 27.1 Introduction 799 27.2 Orthogonal Subspace
Projection-Based Band Prioritization Criterion 801 27.3 Variable-Number
Variable-Band Selection 803 27.4 Experiments 806 27.5 Selection of
Reference Signatures 819 27.6 Conclusions 819 28 KALMAN FILTER-BASED
ESTIMATION FOR HYPERSPECTRAL SIGNALS 820 28.1 Introduction 820 28.2 Kalman
Filter-Based Linear Unmixing 822 28.3 Kalman Filter-Based Spectral
Characterization Signal-Processing Techniques 824 28.4 Computer Simulations
Using AVIRIS Data 831 28.5 Computer Simulations Using NIST-Gas Data 843
28.6 Real Data Experiments 852 28.7 Conclusions 857 29 WAVELET
REPRESENTATION FOR HYPERSPECTRAL SIGNALS 859 29.1 Introduction 859 29.2
Wavelet Analysis 860 29.2.1 Multiscale Approximation 860 29.2.2 Scaling
Function 861 29.2.3 Wavelet Function 862 29.3 Wavelet-Based Signature
Characterization Algorithm 863 29.4 Synthetic Image-Based Computer
Simulations 868 29.5 Real Image Experiments 871 29.6 Conclusions 875 VIII:
APPLICATIONS 877 30 APPLICATIONS OF TARGET DETECTION 879 30.1 Introduction
879 30.2 Size Estimation of Subpixel Targets 880 30.3 Experiments 881 30.4
Concealed Target Detection 891 30.5 Computer-Aided Detection and
Classification Algorithm for Concealed Targets 892 30.6 Experiments for
Concealed Target Detection 893 30.7 Conclusions 895 31 NONLINEAR
DIMENSIONALITY EXPANSION TO MULTISPECTRAL IMAGERY 897 31.1 Introduction 897
31.2 Band Dimensionality Expansion 899 31.3 Hyperspectral Imaging
Techniques Expanded by BDE 902 31.4 Feature Dimensionality Expansion by
Nonlinear Kernels 904 31.5 BDE in Conjunction with FDE 909 31.6
Multispectral Image Experiments 909 31.7 Conclusion 918 32 MULTISPECTRAL
MAGNETIC RESONANCE IMAGING 920 32.1 Introduction 920 32.2 Linear Spectral
Mixture Analysis for MRI 923 32.3 Linear Spectral Random Mixture Analysis
for MRI 928 32.4 Kernel-Based Linear Spectral Mixture Analysis 933 32.5
Synthetic MR Brain Image Experiments 933 32.6 Real MR Brain Image
Experiments 951 32.7 Conclusions 955 33 CONCLUSIONS 956 33.1 Design
Principles for Nonliteral Hyperspectral Imaging Techniques 956 33.2
Endmember Extraction 964 33.3 Linear Spectral Mixture Analysis 970 33.4
Anomaly Detection 974 33.5 Support Vector Machines and Kernel-Based
Approaches 977 33.6 Hyperspectral Compression 981 33.7 Hyperspectral Signal
Processing 984 33.8 Applications 987 33.9 Further Topics 987 GLOSSARY 993
APPENDIX: ALGORITHM COMPENDIUM 997 REFERENCES 1052 INDEX 1071