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Iterative Normalized Matched Filtering for Detection of Chemical Agents in Hyperspectral Imaging

机译:迭代归一化匹配滤波用于高光谱成像中化学试剂的检测

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Hyperspectral imaging (HSI) can be used to detect a harmful chemical agents' (CAs,) cloud from a long distance. A normalized matched filter (NMF) is one of the best algorithms to detect CAs in the atmosphere with perfectly known statistics of the background. However, if the statistics of the background are affected by a CA's signal, (that is a contamination condition) the performance of the NMF detector is degraded. To design an NMF detector that is robust to contamination, we propose an iterative normalized matched filter (INMF). The proposed algorithm extracts CA-off spectra from the contaminated background spectra dataset using a contaminated NMF detector. And the NMF detector is designed using the extracted CA-off background spectra and this procedure repeats until convergence. Simulation results demonstrate that the proposed algorithm significantly improves the detection performance.
机译:高光谱成像(HSI)可用于从远距离检测有害化学剂(CAs)云。归一化匹配滤波器(NMF)是用已知的背景统计数据检测大气中CA的最佳算法之一。但是,如果背景的统计数据受CA信号的影响(即污染情况),则NMF检测器的性能会下降。为了设计对污染具有抵抗力的NMF检测器,我们提出了一个迭代归一化匹配滤波器(INMF)。提出的算法使用受污染的NMF检测器从受污染的背景光谱数据集中提取CA-off光谱。然后使用提取的CA-off背景光谱设计NMF检测器,然后重复此过程,直到收敛为止。仿真结果表明,该算法大大提高了检测性能。

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