A Weighted Collaborated Representation Anomaly Detector for Hyperspectral Image

Ning Ma, Qi Liu, Wenbo Wu, Q. He, Liansheng Liu, Yu Peng
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引用次数: 1

Abstract

Hyperspectral image can provide valuable information for resource development, environment protection, national defense construction, etc. As one key technique for processing hyperspectral image, the anomaly detection can discover the region of interest, which is the direct information for the following analysis. However, how to identify the anomalous target or zone contained in the hyperspectral image is always a difficult problem. Especially, the accuracy of anomaly detection is usually low. Some useful information may be missed, and the following action cannot be implemented in time. To address this issue, this article proposes a novel anomaly detection method for processing hyperspectral image. Firstly, the collaborated representation-based anomaly detector (CRD) for hyperspectral image is studied. The influence factor on the anomaly detection accuracy is determined. Then, a weighted method is proposed to decrease the false alarm of anomaly detection result. To be specific, the weights are generated by the reconstruction errors of the under test hyperspectral image with a stacked autoencoder network. In this way, the performance of the anomaly detection algorithm is enhanced. Two real hyperspectral image datasets are utilized to evaluate the proposed method. Experimental results show that different Lagrange multiplier values have influence on the anomaly detection results. The receiver operating characteristic curve is used as one metric for evaluating anomaly detection results. The proposed method outperforms the collaborated representation AD and the benchmark detector-local Reed Xiaoli AD (RXD). The proposed method provides a novel anomaly detection strategy for the practical application of hyperspectral image.
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高光谱图像加权协同表示异常检测器
高光谱图像可以为资源开发、环境保护、国防建设等提供有价值的信息。异常检测是高光谱图像处理的关键技术之一,它能够发现感兴趣的区域,为后续分析提供直接信息。然而,如何识别高光谱图像中包含的异常目标或区域一直是一个难题。特别是异常检测的准确率往往较低。可能会遗漏一些有用的信息,导致后续行动无法及时实施。针对这一问题,本文提出了一种新的高光谱图像异常检测方法。首先,研究了基于协同表示的高光谱图像异常检测器(CRD)。确定了影响异常检测精度的因素。然后,提出了一种加权方法来降低异常检测结果的虚警。其中权值是由被测高光谱图像用堆叠自编码器网络重构误差生成的。这样可以提高异常检测算法的性能。利用两个真实的高光谱图像集对所提出的方法进行了验证。实验结果表明,不同的拉格朗日乘子值对异常检测结果有影响。接收机工作特性曲线作为评价异常检测结果的一个指标。该方法优于协作表示AD和基准检测器-局部里德小力AD (RXD)。该方法为高光谱图像的实际应用提供了一种新的异常检测策略。
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