多光谱图像去噪的可分解非局部张量字典学习

Yi Peng, Deyu Meng, Zongben Xu, Chenqiang Gao, Yi Yang, Biao Zhang
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引用次数: 298

摘要

与传统的RGB或灰度图像相比,多光谱图像(MSI)可以更忠实地呈现真实场景,并提高许多计算机视觉任务的性能。然而,在实际应用中,微信号总是受到各种噪声的破坏。在本文中,我们提出了一种有效的MSI去噪方法,通过组合考虑MSI的两个内在特征:空间上的非局部相似性和频谱上的全局相关性。具体而言,通过明确考虑MSI的空间自相似性,我们构建了一个具有群块稀疏性约束的非局部张量字典学习模型,使相似的全带斑块(FBP)共享来自空间和光谱字典的相同原子。此外,通过利用MSI的谱相关性和假设字典的过冗余,约束非局部MSI字典学习模型可以分解为一系列无约束的低秩张量逼近问题,这些问题可以很容易地用现成的高阶统计量来解决。实验结果表明,在综合定量性能指标下,我们的方法优于所有最先进的MSI去噪方法。
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Decomposable Nonlocal Tensor Dictionary Learning for Multispectral Image Denoising
As compared to the conventional RGB or gray-scale images, multispectral images (MSI) can deliver more faithful representation for real scenes, and enhance the performance of many computer vision tasks. In practice, however, an MSI is always corrupted by various noises. In this paper we propose an effective MSI denoising approach by combinatorially considering two intrinsic characteristics underlying an MSI: the nonlocal similarity over space and the global correlation across spectrum. In specific, by explicitly considering spatial self-similarity of an MSI we construct a nonlocal tensor dictionary learning model with a group-block-sparsity constraint, which makes similar full-band patches (FBP) share the same atoms from the spatial and spectral dictionaries. Furthermore, through exploiting spectral correlation of an MSI and assuming over-redundancy of dictionaries, the constrained nonlocal MSI dictionary learning model can be decomposed into a series of unconstrained low-rank tensor approximation problems, which can be readily solved by off-the-shelf higher order statistics. Experimental results show that our method outperforms all state-of-the-art MSI denoising methods under comprehensive quantitative performance measures.
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