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Anomaly Detection in Hyperspectral imagery based on Low-Rank and Sparse Decomposition

机译:基于低秩和稀疏分解的高光谱图像异常检测

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This paper presents a novel low-rank and sparse decomposition (LSD) based model for anomaly detection in hyperspectral images. In our model, a local image region is represented as a low-rank matrix plus spares noises in the spectral space, where the background can be explained by the low-rank matrix, and the anomalies are indicated by the sparse noises. The detection of anomalies in local image regions is formulated as a constrained LSD problem, which can be solved efficiently and robustly with a modified "Go Decomposition" (GoDec) method. To enhance the validity of this model, we adapts a "simple linear iterative clustering" (SLIC) superpixel algorithm to efficiently generate homogeneous local image regions i.e. superpixels in hyperspectral imagery, thus ensures that the background in local image regions satisfies the condition of low-rank. Experimental results on real hyperspectral data demonstrate that, compared with several known local detectors including RX detector, kernel RX detector, and SVDD detector, the proposed model can comfortably achieves better performance in satisfactory computation time.
机译:本文提出了一种新的基于低秩和稀疏分解(LSD)的模型,用于高光谱图像中的异常检测。在我们的模型中,局部图像区域表示为低秩矩阵加上频谱空间中的多余噪声,其中背景可以用低秩矩阵解释,而异常则用稀疏噪声表示。将局部图像区域中的异常检测公式化为受约束的LSD问题,可以使用改进的“ Go Decomposition”(GoDec)方法有效而稳健地解决该问题。为了提高该模型的有效性,我们采用“简单线性迭代聚类”(SLIC)超像素算法来有效生成均匀的局部图像区域,即高光谱图像中的超像素,从而确保局部图像区域中的背景满足低分辨率的条件秩。在真实高光谱数据上的实验结果表明,与包括RX检测器,内核RX检测器和SVDD检测器在内的几种已知的局部检测器相比,该模型可以在令人满意的计算时间内舒适地实现更好的性能。

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