Spatial–Spectral Total Variation-Regularized Low-Rank Tensor Representation for Hyperspectral Anomaly Detection

IF 0.9 4区 工程技术 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Journal of Circuits Systems and Computers Pub Date : 2024-02-28 DOI:10.1142/s0218126624502165
ZhiGuo Du, Xingyu Chen, Minghao Jia, Xiaoying Qiu, Zelong Chen, Kaiming Zhu
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Abstract

Hyperspectral anomaly detection is a vital aspect of remote sensing as it focuses on identifying pixels with distinct spectral–spatial properties in comparison to their background representations. However, existing methods for anomaly detection in HSIs often overlook the spatial correlation between pixels by converting the three-dimensional tensor data into its folded form of independent signatures, which may lead to insufficient detection performance. To address this limitation, we develop an anomaly detection algorithm from a tensor representation perspective, which begins by separating the observed hyperspectral image into background and anomaly cubes. We leverage the tensor nuclear norm (TNN) to capture the inherent low-rank structure of background cube globally. This allows us to effectively model and represent the background information. To further improve the detection performance, we introduce spatial–spectral total variation (SSTV) for effectively promoting piecewise smoothness of the background tensor, aiding in the identification of anomalies. Additionally, we incorporate RX-derived attention weights-guided 2,1 norm. This encourages group sparsity of anomalous pixels, improving the precision of anomaly detection. To solve our proposed method, we employ the alternating direction method of multipliers (ADMM), ensuring guaranteed convergence and efficient computation. Through experiments on different kinds of hyperspectral real datasets, we have demonstrated that our method surpasses several state-of-the-art detectors.

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用于高光谱异常检测的空间-光谱总变异-细化低张量表示法
高光谱异常检测是遥感的一个重要方面,因为它的重点是识别与其背景表征相比具有独特光谱空间特性的像素。然而,现有的高光谱异常检测方法往往通过将三维张量数据转换为独立签名的折叠形式来忽略像素之间的空间相关性,这可能会导致检测性能不足。为了解决这一局限性,我们从张量表示的角度开发了一种异常检测算法,首先将观测到的高光谱图像分离成背景立方体和异常立方体。我们利用张量核规范 (TNN) 全局捕捉背景立方体固有的低秩结构。这使我们能够有效地建模和表示背景信息。为了进一步提高检测性能,我们引入了空间-光谱总变化(SSTV),以有效提高背景张量的片状平滑度,从而帮助识别异常。此外,我们还加入了由 RX 导出的注意力权重引导的 ℓ2,1 准则。这将促进异常像素的群组稀疏性,从而提高异常检测的精度。为了解决我们提出的方法,我们采用了交替方向乘法(ADMM),以确保收敛性和高效计算。通过对不同类型高光谱真实数据集的实验,我们证明了我们的方法超越了几种最先进的检测器。
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来源期刊
Journal of Circuits Systems and Computers
Journal of Circuits Systems and Computers 工程技术-工程:电子与电气
CiteScore
2.80
自引率
26.70%
发文量
350
审稿时长
5.4 months
期刊介绍: Journal of Circuits, Systems, and Computers covers a wide scope, ranging from mathematical foundations to practical engineering design in the general areas of circuits, systems, and computers with focus on their circuit aspects. Although primary emphasis will be on research papers, survey, expository and tutorial papers are also welcome. The journal consists of two sections: Papers - Contributions in this section may be of a research or tutorial nature. Research papers must be original and must not duplicate descriptions or derivations available elsewhere. The author should limit paper length whenever this can be done without impairing quality. Letters - This section provides a vehicle for speedy publication of new results and information of current interest in circuits, systems, and computers. Focus will be directed to practical design- and applications-oriented contributions, but publication in this section will not be restricted to this material. These letters are to concentrate on reporting the results obtained, their significance and the conclusions, while including only the minimum of supporting details required to understand the contribution. Publication of a manuscript in this manner does not preclude a later publication with a fully developed version.
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