Autonomous Hyperspectral Target Detection with Quasi-Stationarity Violation at Background Boundaries

A. Schaum
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引用次数: 3

Abstract

Operational real time hyperspectral reconnaissance systems adaptively estimate multivariate background statistics. Parameter values derived from these estimates feed autonomous onboard detection systems. However, inadequate adaptation occurs whenever an airborne sensor encounters a physical boundary between spectrally distinct regions. The transition area generates excessive false alarms, because standard detection algorithms rely on quasi- stationary models of background statistics. Here we describe a two-mode stochastic mixture model aimed at solving the boundary problem. It exploits deployed signal processing modules to solve a generalized eigenvalue problem, making a threshold test for targets computationally feasible.
背景边界准平稳冲突的自主高光谱目标检测
作战实时高光谱侦察系统自适应估计多变量背景统计。由这些估计值得出的参数值提供给自主机载探测系统。然而,每当机载传感器遇到光谱不同区域之间的物理边界时,就会发生不适当的适应。由于标准的检测算法依赖于背景统计的准平稳模型,因此过渡区域会产生过多的虚警。本文描述了一种求解边界问题的双模随机混合模型。它利用部署的信号处理模块来解决广义特征值问题,使目标的阈值测试在计算上可行。
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