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Joint Hyperspectral Subspace Detection derived from a Bayesian Likelihood Ratio Test

机译:贝叶斯似然比检验的联合高光谱子空间检测

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摘要

The standard approach to solving detection problems in which clutter and/or target distributions are modeled with unknown parameters is to apply the generalized likelihood ratio (GLR) test. This procedure automatically generates new estimates of the unknown model parameters for each new feature test value. An alternative approach is to estimate prior distributions for the unknown parameters. The associated Bayesian Likelihood Ratio (BLR) test can be used to generate many standard detectors for example, matched filtering or the GLR as special cases. For the particular problem of Joint Subspace Detection (JSD), several such Bayesian problems often lead to the same test as some GLR problem. Formulating such problems can lend insight into what types of background and target distributions are appropriate for a given GLR test. In addition, the added generality afforded by the new approach, in the form of selectable prior distributions, defines a wider exploratory space for target detection. JSD can, for example, permit the incorporation of general types of experience gleaned from measurement programs. This paper explores these potentialities by applying several Bayesian formulations of the detection problem to hyperspectral data sets.
机译:解决检测问题的标准方法是应用广义似然比(GLR)测试,在该检测中,杂波和/或目标分布使用未知参数建模。此过程将为每个新功能测试值自动生成未知模型参数的新估计值。另一种方法是估计未知参数的先验分布。相关的贝叶斯似然比(BLR)测试可用于生成许多标准检测器,例如,匹配过滤或特殊情况下的GLR。对于联合子空间检测(JSD)的特定问题,几个此类贝叶斯问题通常会导致与某些GLR问题相同的测试。提出此类问题可以深入了解哪种类型的背景和目标分布适合给定的GLR测试。此外,新方法以可选的先验分布形式提供的额外通用性为目标检测定义了更广阔的探索空间。例如,JSD可以允许合并从测量程序中收集的一般类型的经验。本文通过将检测问题的几种贝叶斯公式应用于高光谱数据集来探索这些潜力。

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