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A novel subspace spatial-spectral low rank learning method for hyperspectral denoising

机译:一种新的高光谱降噪子空间空间光谱低秩学习方法

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Due to the limitation of sensors and atmospheric conditions, hyperspectral images (HSI) are always contaminated by heavy noises, which significantly limits the subsequent applications. To mitigate the problem, this paper proposes a novel subspace spatial-spectral low rank learning method for hyper-spectral denoising. It is based on the assumption that spectra in HSI lie in a low-rank subspace and nonlocal spatial patches are self-similar. The spectral low-rank property is explored by decomposing the clean HSI into two sub-matrices of low rank and the spatial self similarity is exploited by weighed nuclear norm minimization in a nonlocal sense. The proposed restoration model is formulated into an iterative optimization model which can be effectively solved by a cyclic descent algorithm. Experimental results on both simulated and real HSI datasets show that the proposed method can significantly outperform the state-of-the-art methods in terms of quantitative assessment and visual quality.
机译:由于传感器和大气条件的限制,高光谱图像(HSI)始终被重噪声污染,这严重限制了后续应用。为了缓解这一问题,本文提出了一种新的用于高光谱降噪的子空间空间光谱低秩学习方法。它基于这样的假设:HSI中的频谱位于低秩子空间中,并且非局部空间斑块是自相似的。通过将干净的HSI分解为两个低秩的子矩阵来探索频谱的低秩性质,并通过在非局部意义上通过加权核规范最小化来利用空间自相似性。将提出的恢复模型公式化为迭代优化模型,可以通过循环下降算法有效地对其进行求解。在模拟和真实HSI数据集上的实验结果表明,在定量评估和视觉质量方面,该方法可以大大优于最新方法。

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