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Anomaly Detection for Hyperspectral Images Based on Anisotropic Spatial-Spectral Total Variation and Spars Constraint

机译:基于各向异性空间光谱总变化和翼梁约束的高光谱图像的异常检测

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A novel anomaly detection method for hyperspectral images (HSIs) is proposed based on anisotropic spatial-spectral total variation and sparse constraint. HSIs are assumed to be not only smooth in spectral dimension but also piecewise smooth in spatial dimension. The proposed method adopts the anisotropic spatial-spectral total variation model which combines 2D spatial total variation and 1D spectral variation to explore the spatial-spectral smooth property of HSIs. Meanwhile, the sparse property of anomalies is exploited for its low probability in the image. To utilize both the spatial and spectral information of HSIs, we preserve the original cubic form of HSIs and divide the HSIs into three 3D arrays, each representing the background, the anomaly, and the noise respectively. By using anisotropic spatial-spectral total variation regularization on the background component and sparse constraint on the anomaly component, this anomaly detection problem has therefore been formulated as a constraint optimization problem whose solution has been derived by alternately using Split Bregman Method and Go Decomposition (GoDec) Method. Experimental results on hyperspectral datasets illustrate that our proposed method has a better detection performance than state-of-the-art hyperspectral anomaly detection methods.
机译:基于各向异性空间光谱总变化和稀疏约束,提出了一种用于高光谱图像(HSIS)的新型异常检测方法。假设HSIS不仅在光谱尺寸中平滑,而且在空间尺寸下也是平滑的。所提出的方法采用各向异性空间光谱总变化模型,其结合了2D空间总变化和1D光谱变化以探索HSIS的空间光谱平滑特性。同时,对图像的低概率来利用异常的稀疏性。为了利用HSI的空间和光谱信息,我们保留原始立方体形态的HSI,并将HSIS分成三个3D阵列,每个三个3D阵列分别代表背景,异常和噪声。通过在后台组分上使用各向异性空间 - 光谱总变化正规和异常组分的稀疏约束,因此,该异常检测问题被制定为约束优化问题,其通过拆分BREGMAN方法交替地推导出来的解决方案(GODEC ) 方法。高光谱数据集的实验结果表明,我们所提出的方法具有比最先进的高光谱异常检测方法更好的检测性能。

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