Machine-Learning-Based Hyperspectral Image Processing

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Machine-Learning-Based Hyperspectral Image Processing

  • 著者名:Zhang, Bing (EDT)
  • 価格 ¥19,754 (本体¥17,959)
  • Wiley-IEEE Press(2026/04/30発売)
  • 向夏の候!Kinoppy 電子書籍・電子洋書 全点ポイント30倍キャンペーン(~6/28)
  • ポイント 5,370pt (実際に付与されるポイントはご注文内容確認画面でご確認下さい)
  • 言語:ENG
  • ISBN:9781394267859
  • eISBN:9781394267866

ファイル: /

Description

An authoritative deep dive into the most recent machine learning approaches to hyperspectral remote sensing image processing

In Machine-Learning-Based Hyperspectral Image Processing, a team of distinguished researchers led by Dr. Bing Zhang delivers an up-to-date discussion of machine learning-based approaches to hyperspectral image analysis. The contributors comprehensively review machine learning approaches to hyperspectral image denoising and super-resolution tasks, offering coverage of a variety of perspectives.

The book also explores the most recent research on machine learning hyperspectral unmixing methods and hyperspectral image classification. It explains the algorithms used for hyperspectral image target and change detection, as well.

Readers will also find:

  • A thorough introduction to the novel concept of applying advanced machine learning techniques to the analysis of hyperspectral imagery
  • Comprehensive explorations of the most recent developments in this technology and its applications
  • Practical discussions of how to effectively process and extract valuable insights from hyperspectral data
  • Complete treatments of a variety of hyperspectral remote sensing image processing tasks, including classification, target detection, and change detection.

Perfect for postgraduate students and research scientists with an interest in the subject, Machine-Learning-Based Hyperspectral Image Processing will also benefit researchers, academicians, and students engaged in machine learning-based approaches to image analysis.

Table of Contents

About the Editor xxi

List of Contributors xxiii

1 Review for Machine-Learning-Based Hyperspectral Image Analysis 1
He Sun and Ruitong Du

1.1 Overview 1

1.2 Denoising 2

1.3 Super-resolution 4

1.4 Unmixing 7

1.5 Classification 8

1.6 Target Detection 11

1.7 Change Detection 13

1.8 Experimental Datasets 15

1.9 Chapter Arrangement and Writing Purpose 19

References 20

2 Hyperspectral Image Denoising Based on Low-rank Regularization 31
Yong Chen, Hongyu Chen, and Wei He

Mathematical Symbols Used in This Chapter 31

2.1 Introduction 31

2.2 Model-driven Approaches 32

2.3 Data-driven Approaches 41

2.4 Conclusion and Outlook 46

References 47

3 Hyperspectral Image Denoising Based on Tensor Models 51
Yu-Bang Zheng, Jian-Li Wang, and Xi-Le Zhao

Mathematical Symbols Used in This Chapter 51

3.1 Introduction 51

3.2 HSI Reconstruction 52

3.3 Tensor Modeling-based HSI Reconstruction Methods 53

3.4 Numerical Experiments 66

3.5 Conclusion 67

References 68

4 Hyperspectral Image Denoising Based on Spatial–Spectral Joint Constraints 73
Bin Zhao, Magnus O. Ulfarsson, Jakob Sigurdsson, Jon Atli Benediktsson, and Jocelyn Chanussot

Mathematical Symbols Used in This Chapter 73

4.1 Non-local Means Low-rank Approximation 73

4.2 Wavelet-based Block Low-rank Representations 79

4.3 Conclusions 84

References 84

5 Hyperspectral Image Reconstruction Based on Spectral Super-resolution 87
Prof. Yanfeng Gu

Mathematical Symbols Used in This Chapter 87

5.1 Introduction 87

5.2 Experimental Datasets and Evaluation Indicators 90

5.3 A Learning Subpixel Super-resolution Model Based on Coupled Dictionary 95

5.4 A Collaborative Spectral-super-resolution Model Based on Adaptive Learning 106

5.5 Conclusion 124

References 124

6 Hyperspectral Image Reconstruction From Supervision to Blindness 129
Jie Xie, Jie Wu, Zhicheng Wang, Lina Zhuang, and Leyuan Fang

Mathematical Symbols Used in This Chapter 129

6.1 Introduction 129

6.2 Full Supervised HSI SR 132

6.3 Weakly Supervised HSI SR 137

6.4 Self-supervised HSI SR 153

6.5 Blind HSI SR 169

6.6 Conclusion and Discussion 181

References 183

7 Hyperspectral Image Reconstruction Based on Unsupervised Learning 191
Ying Qu, Jiangsan Zhao, Hairong Qi, Chiman Kwan, and Liqiang Zhang

Mathematical Symbols Used in This Chapter 191

7.1 Introduction 191

7.2 Problem Formulation 193

7.3 Unsupervised Hyperspectral Image Super-resolution with Dirichlet Net 193

7.4 Unsupervised and Unregistered Hyperspectral Image Super-resolution 196

7.5 Improving SR Performance with Endmember-assisted Camera Response Function Learning 200

7.6 Conclusions 201

References 201

8 Hyperspectral Image Reconstruction Based on Adaptive Learning 207
Ke Zheng, Jiaxin Li, Lianru Gao, and Bing Zhang

Mathematical Symbols Used in This Chapter 207

8.1 Introduction 207

8.2 Problem Formulation 208

8.3 Numerical Model-guided Nonlinear Spectral Unmixing 209

8.4 Experiment and Results 218

8.5 Conclusion 227

References 227

9 Hyperspectral Unmixing with Nonnegative Matrix Factorization 229
Jun Li, Yuanchao Su, Shaoquan Zhang, and Ruoqing Xu

9.1 Introduction 229

9.2 Methodologies 230

9.3 Experiments 235

9.4 Conclusion 239

References 239

10 Hyperspectral Unmixing Based on Low-rank Representation and Sparse Constraint 243
Xiangrong Zhang, Jingyan Zhang, Guanchun Wang, and Licheng Jiao

10.1 Introduction 243

10.2 Linear Unmixing Algorithms 244

10.3 Hybrid Unmixing Algorithms 251

10.4 Experiments 257

10.5 Conclusions 266

References 267

11 Endmember Purification and Geographical Knowledge Graph-guided Endmember Selection 271
Wenfei Luo and Rui Wu

11.1 Introduction 271

11.2 Endmember Purification 272

11.3 Unmixing with Geographic Knowledge Graph 283

11.4 Experimental Results and Analysis 289

11.5 Conclusion 298

Acknowledgment 298

References 298

12 Hyperspectral Unmixing Based on Deep Autoencoder Networks 301
Yuanchao Su, Jun Li, Lianru Gao, Ruoqing Xu, Zhiqing Zhu, and Paolo Gamba

12.1 Introduction 301

12.2 Methodologies 302

12.3 Experimental Results 314

12.4 Conclusion 318

12.5 Discussion 318

References 318

13 Numerical-model-guided Nonlinear Spectral Unmixing 321
Bin Yang and Bin Wang

13.1 Introduction 321

13.2 Nonlinear Mixture Models and Extensions 324

13.3 Numerical-model-guided Nonlinear Spectral Unmixing 327

13.4 Conclusions 344

13.5 Challenges and Future Directions 346

References 347

14 Spatial–Spectral Gabor-based Hyperspectral Image Classification 351
Sen Jia, Shuyu Zhang, Qi Ren, Wangquan He, Meng Xu, and Jiasong Zhu

14.1 Spatial–Spectral Gabor Feature Extraction 351

14.2 Pixel-wise Gabor Features for Hyperspectral Image Classification 359

14.3 Superpixel-wise Gabor Features for HSI Classification 372

References 386

15 Domain Adaptation for Hyperspectral Image Classification 389
Chong Li, Weiwei Sun, Jiangtao Peng, and Kai Ren

15.1 Basic Concepts of Domain Adaptation 389

15.2 Domain Adaptation for Hyperspectral Image Classification 390

15.3 Deep Domain-adaptation-based Hyperspectral Image Classification 391

15.4 Conclusion 402

References 402

16 Unsupervised Domain Adaptation for Classification of Hyperspectral Images 405
li Ma and Qian Du

16.1 Introduction 405

16.2 Unsupervised Domain Adaptation Problem 408

16.3 Traditional Unsupervised Domain Adaptation Methods 408

16.4 Deep-learning-based Unsupervised Domain Adaptation Methods 411

16.5 Experimental Results and Analysis 414

16.6 Conclusions 420

References 420

17 Lightweight Models for Hyperspectral Image Classification 425
Hongmin Gao, Shufang Xu, Zhonghao Chen, and Yiyan Zhang

17.1 Introduction 425

17.2 Lightweight Feature Extraction-based Hyperspectral Image Classification 427

17.3 Experimental Results and Analysis 438

17.4 Conclusion 446

References 448

18 Ensemble Method Based Hyperspectral Image Classification 453
Wei Feng and Mengdao Xing

18.1 Background 453

18.2 Introduction to Ensemble Learning 454

18.3 Ensemble Learning in HSI Classification 459

18.4 Conclusion 467

References 468

19 Spectral-Spatial Hyperspectral Image Classification Based on Sparse Representation 471
Haoyang Yu, Jia Jia, Chuhan Shen, Jiaochan Hu, Chein-I Chang, and Lianru Gao

19.1 Introduction 471

19.2 Related Models Description 472

19.3 Hyperspectral Image Classification Based on Sparse Representation 475

19.4 Experimental Results and Analysis 485

19.5 Conclusion 495

Acknowledgment 496

References 496

20 Hyperspectral Image Classification with Limited Samples 499
Yuebin Wang, Liqiang Zhang, Bing Zhang, Antonio Plaza, and Xiao Xiang Zhu

20.1 Introduction 499

20.2 Method 503

20.3 Experimental Results 509

20.4 Conclusions 519

References 520

21 Constrained Energy Minimization Based Hyperspectral Image Target Detection 521
Zhenwei Shi, Zhengxia Zou, Bowen Chen, and Liqin Liu

21.1 Introduction 521

21.2 Overview of CEM 522

21.3 CEM-based Methods 525

21.4 Conclusions 539

References 541

22 Hyperspectral Target Detection Based on Weighted Cauchy Distance Graph and Local Adaptive Collaborative Representation 543
Wei Li and Kun Gao

22.1 Introduction 543

22.2 Related Works 545

22.3 The Proposed Detection Methodology 546

22.4 Experiments and Analysis 551

22.5 Conclusion 558

References 558

23 Weakly Supervised Learning-based Hyperspectral Image Anomaly/Target Detection 561
Weiying Xie, Xin Zhang, Yunsong Li, and Qian Du

23.1 Introduction 561

23.2 Weakly Supervised Hyperspectral Anomaly Detection (WSLRR) 564

23.3 Weakly Supervised Hyperspectral Target Detection (BLTSC) 573

23.4 Rank-aware Hyperspectral Band Selection (R-GAN) 578

23.5 Conclusions 587

References 589

24 Hyperspectral Anomaly Detection via Background-separable Mode 593
Bing Tu, Xianchang Yang, Jun Li, Antonio Plaza, and Kaiyuan Chen

24.1 Hyperspectral Anomaly Detection Using Dual Window Density 593

24.2 Hyperspectral Anomaly Detection Using Reconstruction Fusion of Quaternion Frequency Domain Analysis 603

24.3 Ensemble Entropy Metric for Hyperspectral Anomaly Detection 619

References 631

25 Spectral Change Analysis for Multitemporal Change Detection in Hyperspectral Remote Sensing Images 633
Sicong Liu, Kecheng Du, Xiaohua Tong, and Peijun Du

25.1 Introduction 633

25.2 Related Works 635

25.3 Spectral Change Analysis in Hyperspectral Images 637

25.4 Experimental Setup 643

25.5 Results and Analysis 643

25.6 Conclusion 650

Acknowledgement 650

References 650

26 Challenges and Future Directions 655
Bing Zhang, He Sun, and Ruitong Du

26.1 Challenges and Future Directions in Hyperspectral Image Denoising 655

26.2 Challenges and Future Directions in Hyperspectral (HS) and Multispectral (MS) Image Fusion 657

26.3 Challenges and Future Directions in NMF-based Hyperspectral Unmixing 659

26.4 Challenges and Future Directions in Knowledge Graph-enhanced Hyperspectral Unmixing 660

26.5 Challenges and Future Directions in Numerical Model-guided Nonlinear Hyperspectral Unmixing 660

26.6 Challenges and Future Directions in Hyperspectral Image Classification 661

26.7 Chapter on Challenges and Future Directions in Hyperspectral Target Detection 662

References 663

Index 665

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