杂波背景多孔径异常探测器

Min Li, Xinnan Fan, Xuewu Zhang, Puhuang Li
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引用次数: 0

摘要

在没有先验信息的情况下,异常检测器比有监督目标检测具有更重要的效用。许多经典的异常探测器在许多情况下都取得了很好的性能。然而,影响异常检测器精度的问题有两个。首先,杂波背景诱导出越来越多具有中等统计差异的困难像元;这样就很难得到理想的未污染杂波背景子集来估计背景模型。其次,不同背景物光谱含量的差异会影响异常目标的显著性。不确定像素被一个阈值指定为非异常是任意的。针对以上两个问题,本文提出了一种多孔径异常探测器。在不选择无异常像素点和精确统计模型的情况下,该异常检测器有望降低杂波背景下的虚警率。采用迭代法对高光谱立方体进行了多孔径分割。每个子孔径的统计数据作为基础,代表一定范围光谱立方的光谱特征。然后,提出了异常显著性来度量像元与子孔径基之间的差异。另一方面,基于模糊逻辑理论的隶属度连续性更适合于命名具有中等异常显著性的难度像素。最后利用消模糊尺对多孔径的不同检测结果进行融合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-aperture anomaly detector for clutter background
Without priori information, anomaly detector has more important utility compared with supervised target detection. Many classical anomaly detectors have obtained perfect performance in many situations. However, there still have two problems which are correlated with accuracy of anomaly detector. Firstly, clutter background induced more and more difficult pixel which have moderate statistical difference. Then, ideal uncontaminated subset of clutter background is hard to be obtain which is used to estimate background model. Secondly, difference of spectral content of different background objects will effect salience of anomaly targets. And it is arbitrary that uncertain pixels is nominated as non-anomalies by one threshold. For above two problems, a multi-aperture anomaly detector is proposed in this paper. Without selection of anomaly-free pixels and accurate statistical model, the proposed anomaly detector is expected to decrease false alarm rate with clutter background. A multi-aperture division for hyperspectral cube is conducted by iterative process. Statistical data of ever subaperture will be named as basis, which represent spectral characteristic of a certain range of spectral cube. Then, anomaly salience is proposed to measure the difference between pixels and sub-aperture basis. On the other hand, continuity of membership value based on fuzzy logical theory is more suitable to nominate difficulty pixels which has moderate anomaly salience. At last defuzzification ruler can be used to fuse different detection results from multi-aperture.
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