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Anomaly detection algorithm for hyperspectral images based on background endmember extraction and kernel RX algorithm

机译:基于背景端元提取和核RX算法的高光谱图像异常检测算法

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The kernel RX algorithm improves the separability between target and background pixels by mapping hyperspectral image data from the low dimensional space into high dimensional feature space. However, the kernel matrix of the background is generated by all image pixels without considering the interference of anomaly target pixels which will make the miss rate increase and consume large memory. To resolve the problem, an anomaly detection algorithm based on background endmember extraction and kernel RX algorithm is introduced. Firstly, the RX algorithm is applied for image processing to filter out obvious anomaly pixels. Then endmember extraction algorithm is used to extract the background endmember according to which the kernel matrix is generated. Experimental results show the effectiveness of the algorithm in improving the detection performance.
机译:内核RX算法通过将高光谱图像数据从低维空间映射到高维特征空间,提高了目标像素与背景像素之间的可分离性。然而,背景的核矩阵是由所有图像像素生成的,而没有考虑异常目标像素的干扰,这将使未命中率增加并消耗大量内存。为了解决该问题,提出了一种基于背景端成员提取和核RX算法的异常检测算法。首先,将RX算法应用于图像处理,以滤除明显的异常像素。然后使用端元提取算法提取背景端元,并根据其生成内核矩阵。实验结果证明了该算法在提高检测性能上的有效性。

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