Kernel-Based Decomposition Model With Total Variation and Sparsity Regularizations via Union Dictionary for Nonlinear Hyperspectral Anomaly Detection

被引:6
作者
Wu, Ziyu [1 ,2 ]
Wang, Bin [1 ,2 ]
机构
[1] Fudan Univ, Key Lab Informat Sci Electromagnet Waves MoE, Shanghai, Peoples R China
[2] Fudan Univ, Sch InformationScience & Technol, Image & Intelligence Lab, Shanghai 200433, Peoples R China
来源
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING | 2022年 / 60卷
基金
中国国家自然科学基金;
关键词
Dictionaries; Hyperspectral imaging; Anomaly detection; Detectors; Kernel; Scattering; TV; endmember-kernel theory; hyperspectral images (HSIs); nonlinear spectral mixing model; sparsity; total variation (TV); union dictionary; IMAGE; REPRESENTATION;
D O I
10.1109/TGRS.2022.3218826
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Many linear approaches have been extensively proposed for the anomaly detection problem in hyperspectral images (HSIs), while nonlinear approaches have been rarely studied although most practical cases are nonlinear. Moreover, these existing nonlinear methods simply nonlinearly map each pixel into a high-dimensional space, which does not describe complex light scattering effects between endmembers. To address the above issues, this article proposes an endmember-kernel-based decomposition model with total variation (TV) and sparsity regularizations via a union dictionary for the nonlinear anomaly detection in HSIs. The proposed decomposition model utilizes endmember-kernel theory to handle nonlinear interactions between atoms in the dictionary, allowing for the effective characterization of complex light scattering effects. By using this endmember-kernel-based decomposition model, hyperspectral imagery can be decomposed into three components: anomaly, background, and noise. To separate these components effectively, the TV and sparsity regularizations are incorporated into the decomposition model to characterize the spatial properties of the background and the anomaly, respectively. Besides, we present a novel construction framework of union dictionary that combines superpixel segmentation and clustering methods sequentially to achieve more accurate dictionary representation capabilities. Finally, the anomalous level of a tested pixel is calculated by the abundances associated with the anomaly dictionary. The experimental results on both synthetic and real hyperspectral datasets demonstrate that the proposed method outperforms several linear and nonlinear state-of-the-art anomaly detectors.
引用
收藏
页数:16
相关论文
共 52 条
[1]   Supervised Nonlinear Spectral Unmixing Using a Postnonlinear Mixing Model for Hyperspectral Imagery [J].
Altmann, Yoann ;
Halimi, Abderrahim ;
Dobigeon, Nicolas ;
Tourneret, Jean-Yves .
IEEE TRANSACTIONS ON IMAGE PROCESSING, 2012, 21 (06) :3017-3025
[2]   THEORY OF REPRODUCING KERNELS [J].
ARONSZAJN, N .
TRANSACTIONS OF THE AMERICAN MATHEMATICAL SOCIETY, 1950, 68 (MAY) :337-404
[3]   A support vector method for anomaly detection in hyperspectral imagery [J].
Banerjee, Amit ;
Burlina, Philippe ;
Diehl, Chris .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2006, 44 (08) :2282-2291
[4]   Fast Gradient-Based Algorithms for Constrained Total Variation Image Denoising and Deblurring Problems [J].
Beck, Amir ;
Teboulle, Marc .
IEEE TRANSACTIONS ON IMAGE PROCESSING, 2009, 18 (11) :2419-2434
[5]   Hyperspectral Remote Sensing Data Analysis and Future Challenges [J].
Bioucas-Dias, Jose M. ;
Plaza, Antonio ;
Camps-Valls, Gustavo ;
Scheunders, Paul ;
Nasrabadi, Nasser M. ;
Chanussot, Jocelyn .
IEEE GEOSCIENCE AND REMOTE SENSING MAGAZINE, 2013, 1 (02) :6-36
[6]   Comparative evaluation of hyperspectral anomaly detectors in different types of background [J].
Borghys, Dirk ;
Kasenb, Ingebjorg ;
Achard, Veronique ;
Perneel, Christiaan .
ALGORITHMS AND TECHNOLOGIES FOR MULTISPECTRAL, HYPERSPECTRAL, AND ULTRASPECTRAL IMAGERY XVIII, 2012, 8390
[7]   Distributed optimization and statistical learning via the alternating direction method of multipliers [J].
Boyd S. ;
Parikh N. ;
Chu E. ;
Peleato B. ;
Eckstein J. .
Foundations and Trends in Machine Learning, 2010, 3 (01) :1-122
[8]  
Boyd S., 2004, Convex optimization, DOI [10.1017/CBO9780511804441, DOI 10.1017/CBO9780511804441]
[9]   Robust Principal Component Analysis? [J].
Candes, Emmanuel J. ;
Li, Xiaodong ;
Ma, Yi ;
Wright, John .
JOURNAL OF THE ACM, 2011, 58 (03)
[10]   Nonlinear Unmixing of Hyperspectral Data Based on a Linear-Mixture/Nonlinear-Fluctuation Model [J].
Chen, Jie ;
Richard, Cedric ;
Honeine, Paul .
IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2013, 61 (02) :480-492