Abstract

Anomaly detection (AD) in hyperspectral target detection is of particular interest because no prior knowledge of ground object spectra is required. However, it is difficult to utilize the salient features of hyperspectral image (HSI) and mitigate the effects of noise in hyperspectral AD, which greatly limits the detection performance. Here, we report a strategy to implement hyperspectral AD by visual attention model and background subtraction with adaptive weight. Through band selection method, the most discriminating bands are selected as the input images for subsequent processing. Then, the hyperspectral visual attention model is introduced, for the first time, into hyperspectral AD for extracting the salient feature map of the input images. Furthermore, the background subtraction process that can reduce the background and noise in the salient feature map is developed via curvature filter. Using this operation, the initial anomaly area map is obtained. Finally, incorporating with the spectral information, an adaptive weight map is applied to the initial anomaly area map to further suppress the background. In the experiment, the proposed method is compared with seven other state-of-the-art methods on synthetic and real-world HSI. Most importantly, the results demonstrate that the proposed method is effective and performs better than alternative methods. We believe that this method can open a new avenue of visual processing methods for hyperspectral AD.

Highlights

  • Detection (AD) in hyperspectral target detection is of particular interest because no prior knowledge of ground object spectra is required

  • In order to utilize the salient features of hyperspectral image (HSI) and mitigate the effects of noise, inspired by the visual attention model (VAM), a novel hyperspectral Anomaly detection (AD) method based on visual attention and background subtraction with adaptive weight is innovatively proposed

  • A novel hyperspectral AD method based on visual attention and background subtraction with adaptive weight is innovatively proposed

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Summary

INTRODUCTION

3 -D HYPERSPECTRAL image (HSI) data can be obtained after photoelectric conversion of electromagnetic energy in hundreds of approximately continuous bands [1]. In order to solve this problem in HSI, the low-rank and sparse matrix decomposition-based (LRaSMD) [19] AD method proposed by Sun et al divides the HSI into three parts, i.e., background, anomaly and noise. This approach reduces the effect of noise, yet it ignores the spatial information in HSI, resulting in insufficient detection accuracy. The anomaly targets can be salient targets relative to the local homogeneous background Under these assumptions, in order to utilize the salient features of HSI and mitigate the effects of noise, inspired by the VAM, a novel hyperspectral AD method based on visual attention and background subtraction with adaptive weight is innovatively proposed.

PROPOSED APPROACH
Dimensionality Reduction
Hyperspectral Visual Attention Model
Background Subtraction
Adaptive Weight
Computational Complexity Analysis
EXPERIMENTAL RESULTS AND PARAMETER ANALYSIS
Hyperspectral Datasets Description
Experimental Results
Parameter and Framework Performance Analysis
CONCLUSION
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