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Anomaly detection and classification for hyperspectral imagery

机译:高光谱图像的异常检测和分类

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Anomaly detection becomes increasingly important in hyperspectral image analysis, since hyperspectral imagers can now uncover many material substances which were previously unresolved by multispectral sensors. Two types of anomaly detection are of interest and considered in this paper. One was previously developed by Reed and Yu to detect targets whose signatures are distinct from their surroundings. Another was designed to detect targets with low probabilities in an unknown image scene. Interestingly, they both operate the same form as does a matched filter. Moreover, they can be implemented in real-time processing, provided that the sample covariance matrix is replaced by the sample correlation matrix. One disadvantage of an anomaly detector is the lack of ability to discriminate the detected targets from another. In order to resolve this problem, the concept of target discrimination measures is introduced to cluster different types of anomalies into separate target classes. By using these class means as target information, the detected anomalies can be further classified. With inclusion of target discrimination in anomaly detection, anomaly classification can be implemented in a three-stage process, first by anomaly detection to find potential targets, followed by target discrimination to cluster the detected anomalies into separate target classes, and concluded by a classifier to achieve target classification. Experiments show that anomaly classification performs very differently from anomaly detection.
机译:在高光谱图像分析中,异常检测变得越来越重要,因为高光谱成像仪现在可以发现许多以前由多光谱传感器无法解析的物质。本文关注并考虑了两种类型的异常检测。里德(Reed)和于(Yu)先前开发了一种,用于检测特征与周围环境不同的目标。另一个旨在检测未知图像场景中具有低概率的目标。有趣的是,它们都与匹配的过滤器以相同的形式运行。而且,只要将样本协方差矩阵替换为样本相关矩阵,就可以在实时处理中实现它们。异常检测器的一个缺点是缺乏将检测到的目标与另一目标区分开的能力。为了解决这个问题,引入了目标识别措施的概念,以将不同类型的异常聚类到单独的目标类别中。通过将这些分类手段用作目标信息,可以进一步对检测到的异常进行分类。通过在异常检测中包含目标判别,可以在三阶段过程中执行异常分类,首先是通过异常检测来找到潜在的目标,然后是目标判别以将检测到的异常聚类为单独的目标类别,然后由分类器得出结论实现目标分类。实验表明,异常分类的执行与异常检测有很大不同。

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