基于机器学习的SAR数据异常检测

Yuval Haitman, Itay Berkovich, Shiran Havivi, S. Maman, D. Blumberg, S. Rotman
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引用次数: 3

摘要

在多维图像中最常用的异常检测算法之一是Reed - Xiaoli (RX)算法;它给每个像素一个分数,定义其异常的可能性。我们实现了一种新的算法,该算法使用RX和非负矩阵分解(NNMF)学习算法来选择自适应阈值进行检测;并将其应用于合成孔径雷达(SAR)数据。NNMF方法被定义为一个最小化问题,它通过提取给定数据的主要趋势来逼近给定数据。通过将原始数据与简化后的数据进行比较,我们可以将图像异常分为两组,其中一组包含图像主趋势的一部分异常,另一组包含图像子趋势的异常。通过这种划分,我们可以根据每个组的独特特征选择一个自适应阈值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for Detecting Anomalies in SAR Data
One of most common algorithms for anomaly detection in multi-dimensional imagery is the Reed - Xiaoli (RX) algorithm; it gives each pixel a score that defines its likelihood to be an anomaly. We have implemented a new algorithm which uses both RX and the Non-Negative Matrix Factorization (NNMF) learning algorithm in order to pick an adaptive threshold for detection; we have applied it to Synthetic Aperture Radar (SAR) data. The NNMF approach is defined as a minimization problem which approximates the given data by extracting its main trends. By comparing the original data to the reduced data, we can divide the image anomalies into two different groups, where one group contains the anomalies which are part of the image main trends and the second group contains the anomalies of the sub trends. With this division, we can pick an adaptive threshold for each of the groups according to its unique characteristics.
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