Abstract

In recent years, with the development of compressed sensing theory, sparse representation methods have been concerned by many researchers. Sparse representation can approximate the original image information with less space storage. Sparse representation has been investigated for hyperspectral imagery (HSI) detection, where approximation of testing pixel can be obtained by solving l1-norm minimization. However, l1-norm minimization does not always yield a sufficiently sparse solution when a dictionary is not large enough or atoms present a certain level of coherence. Comparatively, non-convex minimization problems, such as the lp penalties, need much weaker incoherence constraint conditions and may achieve more accurate approximation. Hence, we propose a novel detection algorithm utilizing sparse representation with lp-norm and propose adaptive iterated shrinkage thresholding method (AISTM) for lp-norm non-convex sparse coding. Target detection is implemented by representation of the all pixels employing homogeneous target dictionary (HTD), and the output is generated according to the representation residual. Experimental results for four real hyperspectral datasets show that the detection performance of the proposed method is improved by about 10% to 30% than methods mentioned in the paper, such as matched filter (MF), sparse and low-rank matrix decomposition (SLMD), adaptive cosine estimation (ACE), constrained energy minimization (CEM), one-class support vector machine (OC-SVM), the original sparse representation detector with l1-norm, and combined sparse and collaborative representation (CSCR).

Highlights

  • Hyperspectral images consist of both spectral and spatial information

  • It is apparent that we proposed Lp-sparse representation detector (SRD) can realize the outstanding performance, execution time is relatively larger than other traditional detection methods, except sparse and low-rank matrix decomposition (SLMD) and combined sparse and collaborative representation (CSCR)

  • From qualitative and quantitative analysis of the detection results, the proposed lp-norm-based sparse representation detector (Lp-SRD) is always superior to the constrained energy minimization (CEM), adaptive cosine estimation (ACE), matched filter (MF), SLMD, one-class support vector machine (OC-SVM), SRD, and CSCR

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Summary

Introduction

Hyperspectral images consist of both spectral and spatial information. Spectral information of hyperspectral images is of great abundance. A non-convex lp-norm-based sparse representation detector (Lp-SRD) is proposed, which can recover a testing pixel by solving an lp-norm minimization issue with requirements of much feeble incoherence conditions and lower signal to background ratio for a stable solution [30]. The contributions of our research include: first, lp-minimization-based sparse representation is proposed for hyperspectral target detection; second, homogeneous target dictionary and adaptive iterated shrinkage thresholding method (AISTM) are proposed to solve the lp-minimization problem. Due to this overall design and optimization, higher purity reconstruction endmember will be obtained, resulting in smaller residuals for the correctly detected items of our method.

Sparse Representation Detector with L1-norm
Proposed Target Detection Framework
Homogeneous Target Dictionary Construction
Hyperspectral Datasets
Parameters Analysis
Findings
Detection Performance
Conclusions
Full Text
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