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首页> 外文期刊>Journal of information and computational science >Non-blind Motion Deblurring Using L1 Data Fidelity and L0 Sparse Representation
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Non-blind Motion Deblurring Using L1 Data Fidelity and L0 Sparse Representation

机译:使用L1数据保真度和L0稀疏表示的非盲运动去模糊

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摘要

Motion deblurring is very useful in image processing and attracted much attention in recent years. Non-blind deconvolution is the key component in motion deblurring approaches when the kernel is estimated. Non-blind deconvolution is an ill-posed problem, we introduce L0 sparse prior term for motion deblurring because it is a better smoothing term in edge-preserving smoothing approaches. In this paper, L1 norm based data fidelity term is also introduced for the superior in edge and corner preserving. For the ease of equation solving about L1 norm, the Split Bregman method is introduced. Extensive experiments on image deblurring with different blurs indicate that the proposed approach is stable and valide.
机译:运动去模糊在图像处理中非常有用,并且近年来引起了很多关注。当估计内核时,非盲反卷积是运动去模糊方法中的关键组成部分。非盲反卷积是一个不适定的问题,我们为运动去模糊引入L0稀疏先验项,因为它是保留边缘的平滑方法中较好的平滑项。本文还介绍了基于L1范数的数据保真度术语,以实现边缘和拐角保留方面的优越性。为了简化关于L1范数的方程求解,引入了Split Bregman方法。大量的针对不同模糊图像去模糊的实验表明,该方法是稳定有效的。

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