首页> 外文会议>Algorithms and Technologies for Multispectral, Hyperspectral, and Ultraspectral Imagery XII pt.2 >Nonlinear signal contamination effects for gaseous plume detection in hyperspectral imagery
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Nonlinear signal contamination effects for gaseous plume detection in hyperspectral imagery

机译:非线性信号污染效应对高光谱图像中气态羽流的检测

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When a matched filter is used for detecting a weak target in a cluttered background (such as a gaseous plume in a hyperspectral image), it is important that the background clutter be well-characterized. A statistical characterization can be obtained from the off-plume pixels of a hyperspectral image, but if on-plume pixels are inadvertently included, then that background characterization will be contaminated. In broad area search scenarios, where detection is the central aim, it is by definition unknown which pixels in the scene are off-plume, so some contamination is inevitable. In general, the contaminated background degrades the ability of the matched-filter to detect that signal. This could be a practical problem in plume detection. A linear analysis suggests that the effect is limited, and actually vanishes in some cases. In this study, we take into account the Beer's Law nonlinearity of plume absorption, and we investigate the effect of that nonlinearity on the signal contamination.
机译:当使用匹配滤波器检测杂波背景中的弱目标(例如高光谱图像中的气态羽流)时,重要的是要很好地表征背景杂波。可以从高光谱图像的非象素像素获得统计特征,但是如果不慎包含了象素上像素,那么背景特征将被污染。在以检测为中心的广域搜索场景中,根据定义,尚不清楚场景中的哪些像素是非球墨的,因此不可避免地会受到污染。通常,被污染的背景会降低匹配滤波器检测该信号的能力。这可能是羽流检测中的实际问题。线性分析表明效果有限,并且在某些情况下实际上消失了。在这项研究中,我们考虑了烟流吸收的比尔定律非线性,并研究了该非线性对信号污染的影响。

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