Anomaly detecting in hyperspectral imageries based on tensor decomposition with spectral and spatial partitioning

Xing Zhang, G. Wen, Wei Dai
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引用次数: 5

Abstract

Due to the multidimensional nature of the hyperspectral image (HSI), multi-way arrays (called tensor) are one of the possible solutions for analyzing such data. In tensor algebra, CANDECOMP/PARAFAC decomposition (CPD) is a popular tool which has been successfully applied for the HSI data processing. However, on the one hand, CPD requires large memory for temporal variables. As a result, the memory usually overflows during the process for a real HSI whose size is large. On the other hand, so far no finite algorithm can well-determine the rank of the tensor to be decomposed. An inappropriate number of the rank may over-fit/under-fit the information provided by the tensor. To deal with these problems, this paper proposes an improved CPD with spectral and spatial partitioning for the HSI anomaly detection. First, the original HSI is divided into a set of smaller-sized sub-tensors. Second, CPD is applied onto each sub-tensor. Then, an anomaly detection algorithm is implemented and the detection results are fused along the spectral direction. Experiments with a real HSI data set reveals that the proposed method outperforms the CPD with no partition and the traditional RX anomaly detector with better detection performance.
基于光谱和空间分割张量分解的高光谱图像异常检测
由于高光谱图像(HSI)的多维性,多路阵列(称为张量)是分析此类数据的可能解决方案之一。在张量代数中,CANDECOMP/PARAFAC分解(CPD)是一种流行的工具,已成功地应用于HSI数据处理。然而,一方面,CPD需要大量的时间变量内存。因此,对于大小较大的真实HSI,在处理过程中内存通常会溢出。另一方面,目前还没有有限的算法能够很好地确定待分解张量的秩。不适当的秩数可能会过度拟合/欠拟合张量提供的信息。为了解决这些问题,本文提出了一种基于光谱和空间分割的改进CPD方法用于HSI异常检测。首先,原来的恒生指数被分成一组较小的子张量。其次,对每个子张量应用CPD。然后,实现一种异常检测算法,并将检测结果沿光谱方向进行融合。在真实HSI数据集上的实验表明,该方法优于无分割的CPD和具有更好检测性能的传统RX异常检测器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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