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Weighted Anomaly Detection for Hyperspectral Remotely Sensed Images

机译:高光谱遥感图像的加权异常检测

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Anomaly detection for remote sensing has drawn a lot of attention lately. An anomaly has distinct spectral features from its neighborhood, whose spectral signature is not known a priori, and it usually has small size with only a few pixels. It is difficult to detect anomalies, and it is more challenge to detect anomalies without any information of the background environment in hyperspectral data with hundreds of co-registered image bands. Several methods are devoted to this problem, such as the well-known RX algorithm which takes advantage of the second-order statistics. The RX algorithm assumes Gaussian noise and uses sample covariance matrix for data whitening. However, when the anomalies pixel number exceeds certain percentage or the data is ill distributed, the sample covariance matrix can not represent the background distribution. In this case, the RX algorithm will not perform well. In order to solve this problem, in this paper we propose a weighted covariance matrix for anomaly detection. It gives weight to the each pixel in the covariance matrix by its distance to the data center, and then followed by the anomaly detection approach based on second-order statistics. We will compare the experimental results with the original RX methods.
机译:最近,遥感异常检测引起了很多关注。异常具有与其邻域不同的光谱特征,该光谱特征的光谱特征不是先验的,并且通常尺寸很小,只有几个像素。很难检测到异常,在没有数百个共同配准的图像带的高光谱数据中没有背景环境信息的情况下检测异常更具挑战性。有几种方法专门用于解决此问题,例如利用二阶统计信息的著名RX算法。 RX算法假设高斯噪声,并使用样本协方差矩阵进行数据白化。但是,当异常像素数超过一定百分比或数据分布不均时,样本协方差矩阵将无法代表背景分布。在这种情况下,RX算法将无法正常运行。为了解决这个问题,本文提出了一种加权的协方差矩阵进行异常检测。它通过其到数据中心的距离为协方差矩阵中的每个像素赋予权重,然后再基于二阶统计量进行异常检测。我们将实验结果与原始RX方法进行比较。

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