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Multi-Scale Anomaly Detection in Hyperspectral Images Based on Sparse and Low Rank Representations

机译:基于稀疏和低等级表示的高光谱图像中的多尺度异常检测

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Anomaly detection is a hot topic in hyperspectral data processing since no prior information about the target is required. Meanwhile, multi-scale information can improve the detection performance. This paper proposes a multi-scale anomaly detection algorithm in hyperspectral images based on the sparse and low rank representation. Some pixels are randomly selected to construct the dictionary, and the pixels belonging to large abnormal targets are selected with high probability. Therefore, the low rank matrix and dictionary constitute the pure background component and large abnormal targets, and the sparse matrix contains noise and smaller abnormal targets. Using recursive sliding array RX detection algorithm, large abnormal targets can be detected in the reconstructed image, and small abnormal targets can be detected in the residual between sparse matrix and the reconstructed image. The final detection result is the combination of the two results. Experimental results d 1emonstrate that the algorithm achieves very promising performance.
机译:异常检测是高光谱数据处理中的热门话题,因为不需要有关目标的先前信息。同时,多尺度信息可以提高检测性能。本文提出了基于稀疏和低等级表示的高光谱图像中的多尺度异常检测算法。随机选择一些像素以构造字典,并且选择具有高概率的大异常目标的像素。因此,低级矩阵和字典构成了纯背景组件和大异常目标,稀疏矩阵包含噪声和较小的异常目标。使用递归滑动阵列Rx检测算法,可以在重建图像中检测到大的异常目标,并且可以在稀疏矩阵和重建图像之间的残差中检测小异常目标。最终检测结果是两种结果的组合。实验结果D. 1 表示算法实现了非常有希望的性能。

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