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An anomaly detection architecture based on a data-adaptive density estimation

机译:基于数据自适应密度估计的异常检测架构

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摘要

In recent years, hyperspectral Anomaly Detection (AD) has become a challenging area due to the rich information content provided by hyperspectral sensors about the spectral characteristics of the observed materials. Within this framework, since no prior knowledge about the target is assumed, pixels that have different spectral content from typical background pixels are identified as spectral anomalies. The work presented here investigates this issue and develops a spectral-based algorithm for automatic global AD consisting in a two stage process. First, the background Probability Density Function (PDF) is approximated through a data-adaptive kernel density estimator. Then, anomalies are detected as those pixels that deviate from such a background model on the basis of the Likelihood Ratio Test (LRT) decision rule. Real hyperspectral data are employed to show the potential of data-adaptive background PDF estimation for detection of anomalies in a scene with respect to conventional non-adaptive PDF estimators.
机译:近年来,由于高光谱传感器提供了关于观察到的材料的光谱特性,Hyperspectral异常检测(AD)已成为一个具有挑战性的区域。在该框架内,由于假设没有关于目标的先验知识,因此从典型的背景像素具有不同光谱内容的像素被识别为光谱异常。此处提出的工作调查了此问题,并开发了一种基于频谱的算法,可用于在两个阶段过程中组成的自动全局广告。首先,通过数据自适应内核密度估计器近似背景概率密度函数(PDF)。然后,检测异常作为基于似然比测试(LRT)决策规则偏离这样的背景模型的像素。使用实际高光谱数据来显示数据自适应背景PDF估计的潜力,用于检测关于传统非自适应PDF估计器的场景中的异常。

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