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Hyperspectral Anomaly Detection via Background and Potential Anomaly Dictionaries Construction

机译:通过背景和潜在异常字典构建进行高光谱异常检测

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In this paper, we propose a new anomaly detection method for hyperspectral images based on two well-designed dictionaries: background dictionary and potential anomaly dictionary. In order to effectively detect an anomaly and eliminate the influence of noise, the original image is decomposed into three components: background, anomalies, and noise. In this way, the anomaly detection task is regarded as a problem of matrix decomposition. Considering the homogeneity of background and the sparsity of anomalies, the low-rank and sparse constraints are imposed in our model. Then, the background and potential anomaly dictionaries are constructed using the background and anomaly priors. For the background dictionary, a joint sparse representation (JSR)-based dictionary selection strategy is proposed, assuming that the frequently used atoms in the overcomplete dictionary tend to he the background. In order to make full use of the prior information of anomalies hidden in the scene, the potential anomaly dictionary is constructed. We define a criterion, i.e., the anomalous level of a pixel, by using the residual calculated in the JSR model within its local region. Then, it is combined with a weighted term to alleviate the influence of noise and background. Experiments show that our proposed anomaly detection method based on potential anomaly and background dictionaries construction can achieve superior results compared with other state-of-the-art methods.
机译:本文基于背景字典和潜在异常字典两种设计良好的字典,提出了一种新的高光谱图像异常检测方法。为了有效地检测异常并消除噪声的影响,原始图像被分解为三个部分:背景,异常和噪声。这样,异常检测任务被认为是矩阵分解的问题。考虑到背景的均匀性和异常的稀疏性,在我们的模型中施加了低等级和稀疏约束。然后,使用背景和异常先验构造背景和潜在异常字典。对于背景字典,提出了基于联合稀疏表示(JSR)的字典选择策略,并假设超完备字典中经常使用的原子趋于背景。为了充分利用隐藏在场景中的异常的先验信息,构造了潜在的异常字典。我们通过使用JSR模型在其局部区域内计算出的残差来定义一个标准,即像素的异常水平。然后,将其与加权项组合以减轻噪声和背景的影响。实验表明,我们提出的基于潜在异常和背景字典构造的异常检测方法与其他最新方法相比,可以获得更好的结果。

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