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Background Density Nonparametric Estimation With Data-Adaptive Bandwidths for the Detection of Anomalies in Multi-Hyperspectral Imagery

机译:具有数据自适应带宽的背景密度非参数估计,用于检测多光谱图像中的异常

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摘要

This letter presents a scheme for detecting global anomalies, in which a likelihood ratio test based decision rule is applied in conjunction with an automated data-driven estimation of the background probability density function (PDF). The latter is reliably estimated with a nonparametric variable-band width kernel density estimator (VKDE), without making any distributional assumption. With respect to conventional fixed bandwidth KDE (FKDE), which lacks adaptivity due to the use of a bandwidth that is fixed across the entire feature space, VKDE lets the bandwidths adaptively vary pixel by pixel, tailoring the amount of smoothing to the local data density. Two multispectral images are employed to explore the potential of VKDE background PDF estimation for detecting anomalies in a scene with respect to conventional nonadaptive FKDE.
机译:这封信提出了一种用于检测全局异常的方案,其中将基于似然比测试的决策规则与背景概率密度函数(PDF)的自动数据驱动估计结合使用。可以使用非参数可变带宽内核密度估计器(VKDE)可靠地估计后者,而无需进行任何分布假设。对于传统的固定带宽KDE(FKDE),由于使用在整个特征空间中固定的带宽而缺乏适应性,VKDE允许带宽自适应地逐个像素地改变像素,从而根据本地数据密度调整平滑量。使用两个多光谱图像来探索VKDE背景PDF估计的潜力,以检测相对于传统非自适应FKDE场景中的异常。

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