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Image denoising with expected patch log likelihood using eigenvectors of graph Laplacian

机译:使用图形拉普拉斯的特征向量的预期补丁日志似然性的图像去噪

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Recently, an Expected Patch Log Likelihood (EPLL) method is presented for image denoising, which can well restore details of natural images. However, the EPLL is viewed as a local method, and seldom takes into account the relationship among patches. In this paper, a non-local EPLL algorithm using eigenvectors of the graph Laplacian of patches is proposed to fully exploit such relationship. In detail, the eigenvectors of the graph Laplacian are incorporated as basis functions to employ the geometrical structures of patches. Meanwhile, the residual error constraint is considered to deal with the noise corruption in the iterative procedure. Sequently, an eigenvector-based EPLL problem is presented under a set of residual error constraints, and the corresponding approximate solution is efficiently provided. Experiments show that the proposed algorithm can achieve a better performance than the traditional EPLL, and is comparable with some other state-of-art denoising methods.
机译:最近,提出了预期的补丁日志似然(EPLL)方法用于图像去噪,可以恢复自然图像的细节。但是,EPLL被视为本地方法,很少考虑补丁之间的关系。在本文中,提出了一种非局部EPLL算法,使用斑块的图表拉普拉斯的特征向量进行充分利用这种关系。详细地,图拉普拉斯的特征向量被纳入了采用贴片的几何结构的基本作用。同时,剩余误差约束被认为是在迭代过程中处理噪声损坏。总的来说,在一组残差约束下呈现了基于特征向量的EPLL问题,并且有效地提供了相应的近似解。实验表明,该算法可以实现比传统EPLL更好的性能,并且与其他一些最先进的去噪方法相当。

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