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Sub-pixel detection in hyperspectral imaging with elliptically contoured t-distributed background

机译:具有椭圆形状T分布式背景的高光谱成像中的子像素检测

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摘要

Detection of a target with known spectral signature when this target may occupy only a fraction of the pixel is an important issue in hyperspectral imaging. We recently derived the generalized likelihood ratio test (GLRT) for such sub-pixel targets, either for the so-called replacement model where the presence of a target induces a decrease of the background power, due to the sum of abundances equal to one, or for a mixed model which alleviates some of the limitations of the replacement model. In both cases, the background was assumed to be Gaussian distributed. The aim of this short communication is to extend these detectors to the broader class of elliptically contoured distributions, more precisely matrix-variate t-distributions with unknown mean and covariance matrix. We show that the generalized likelihood ratio tests in the t-distributed case coincide with their Gaussian counterparts, which confers the latter an increased generality for application. The performance as well as the robustness of these detectors are evaluated through numerical simulations.
机译:当该目标占据该目标的一部分仅占据像素的一小部分时,检测具有已知的光谱签名是高光谱成像中的重要问题。我们最近导出了这种子像素目标的广义似然比测试(GLRT),用于所谓的替换模型,其中目标的存在会导致背景电量的减少,因为大量等于一个,或者用于减轻替换模型的一些局限性的混合模型。在这两种情况下,假设背景是高斯分布。这种短期通信的目的是将这些探测器扩展到更广泛的椭圆形状分布,更精确的矩阵变化T分布,具有未知的平均值和协方差矩阵。我们表明,T分布式案例中的广义似然比测试与其高斯对应物重合,其赋予后​​者增加了应用程序的一般性。通过数值模拟评估这些探测器的性能以及鲁棒性。

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