A Generalized Non-Convex Surrogated Framework for Anomaly Detection on Blurred Hyperspectral Images

Yinjian Wang;Wei Li;Yuanyuan Gui;Haijun Xie;Lianbo Zhang
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Abstract

Hyperspectral imaging is endowed with outstanding discriminability between different land types by its comprehensive sensing of the spectrum, thus favored applying to anomaly detection. However, blurring effect, as a critical cause for quality deterioration of hyperspectral imaging, has been omitted by previous hyperspectral anomaly detection models. On one hand, given that anomalies are sparsely distributed in nature, such blurring effect entangling neighboring pixels severely weighs those detection models down. On the other hand, abnormal objects jeopardize the low-dimensional structure of the image, thus deblurring those images with anomalies is more challenging than normal ones. Hence, it is of much significance to investigate anomaly detection using blurred hyperspectral images. To this end, this paper proposes a generalized non-convex surrogated tensor framework that is able to perform anomaly detection robustly to blurring effects on hyperspectral images. The proposed framework is featured to be a unified paradigm which guarantees convergence for a broad class of non-convex surrogates. Through treating the spatial and spectral low-rankness adaptively via Block Term Decomposition, the unevenness in the multi-linear low-rankness of hyperspectral image is comprehensively considered, which together with the non-convex surrogates results in a tighter modeling of the low-dimensional prior of hyperspectral images. Extensive experiments demonstrate the superiority of the proposed method compared with the state-of-the-art methods on both hyperspectral image deblurring and anomaly detection.
模糊高光谱图像异常检测的广义非凸替代框架
高光谱成像通过对光谱的综合感知,具有突出的对不同土地类型的区分能力,有利于应用于异常检测。然而,模糊效应是导致高光谱成像质量下降的关键因素,以往的高光谱异常检测模型都忽略了这一点。一方面,考虑到异常在自然界中是稀疏分布的,这种模糊效应会使相邻像素纠缠在一起,严重影响检测模型。另一方面,异常物体会破坏图像的低维结构,因此异常图像的去模糊比正常图像更具挑战性。因此,研究利用模糊高光谱图像进行异常检测具有重要意义。为此,本文提出了一种广义非凸替代张量框架,该框架能够对高光谱图像的模糊效应进行稳健的异常检测。所提出的框架的特点是一个统一的范式,保证了广泛类别的非凸代理的收敛性。通过分块项分解自适应处理高光谱图像的空间和光谱低秩,综合考虑高光谱图像多线性低秩的不均匀性,并结合非凸代元对高光谱图像低维先验进行更严密的建模。大量的实验表明,与现有的高光谱图像去模糊和异常检测方法相比,该方法具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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