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Hyperspectral Anomaly Detection Based on Low-Rank Representation and Learned Dictionary

机译:基于低秩表示和学习词典的高光谱异常检测

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In this paper, a novel hyperspectral anomaly detector based on low-rank representation (LRR) and learned dictionary (LD) has been proposed. This method assumes that a two-dimensional matrix transformed from a three-dimensional hyperspectral imagery can be decomposed into two parts: a low rank matrix representing the background and a sparse matrix standing for the anomalies. The direct application of LRR model is sensitive to a tradeoff parameter that balances the two parts. To mitigate this problem, a learned dictionary is introduced into the decomposition process. The dictionary is learned from the whole image with a random selection process and therefore can be viewed as the spectra of the background only. It also requires a less computational cost with the learned dictionary. The statistic characteristic of the sparse matrix allows the application of basic anomaly detection method to obtain detection results. Experimental results demonstrate that, compared to other anomaly detection methods, the proposed method based on LRR and LD shows its robustness and has a satisfactory anomaly detection result.
机译:本文提出了一种基于低秩表示(LRR)和学习字典(LD)的高光谱异常检测器。该方法假定从三维高光谱图像转换而来的二维矩阵可以分解为两个部分:代表背景的低秩矩阵和代表异常的稀疏矩阵。 LRR模型的直接应用对平衡两个部分的折衷参数很敏感。为了减轻这个问题,将学习字典引入分解过程。通过随机选择过程从整个图像中学习字典,因此只能将其视为背景的光谱。学习的字典还需要较少的计算成本。稀疏矩阵的统计特性允许应用基本的异常检测方法来获得检测结果。实验结果表明,与其他异常检测方法相比,基于LRR和LD的方法具有较强的鲁棒性,并具有令人满意的异常检测结果。

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