主成分背景抑制

J.A. Kirk, M. Donofrio
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引用次数: 4

摘要

我们开发了一种基于主成分统计技术的自适应背景抑制算法,以减轻传感器视线运动(杂波)在结构化背景场景中的影响。其核心思想是构建一个“背景空间”,作为一个线性向量子空间来模拟被观看的背景。我们已经将我们的算法应用到两个测试用例中,这两个测试用例是通过模拟高分辨率场景上凝视阵列焦平面的随机运动而构建的。第一个测试用例,只有杂波噪声,发现低强度信号(S/N=0.05),通过使用40个主成分投影出背景空间,增强245倍。第二个测试用例添加了高斯电子噪声,发现使用16个主成分的信号的信噪比增加了34倍。这被认为是在凝视阵列焦平面中遇到的实际问题。我们的结果表明,增加主成分的数量增加了算法抑制杂波的能力,直到电子噪声成为主导。我们给出了一个启发式论证,以确定最大信噪增强的适当主成分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Principal component background suppression
We have developed an adaptable background suppression algorithm, based on the statistical technique of principal components, to mitigate the effects of sensor line of sight motion (clutter) across structured background scenes. The central idea is construction of a "background space" as a linear vector subspace modeling the background being viewed. We have applied our algorithm to two test cases which were constructed by simulating random motion of a staring array focal plane over a high resolution scene. The first test case, with clutter noise only, found a low-intensity signal (S/N=0.05) with a 245-fold enhancement by projecting out a background space using 40 principal components. The second test case added Gaussian electronic noise and found the signal with a 34-fold increase in signal-to-noise using 16 principal components. This is believed to closely represent the actual problem encountered in staring array focal planes. Our results show that increasing the number of principal components increases the algorithm's ability to suppress clutter up to the point where electronic noise becomes dominant. We give a heuristic argument for determining the proper number of principal components for maximum signal-to-noise enhancement.
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