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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Regularized motion blur-kernel estimation with adaptive sparse image prior learning
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Regularized motion blur-kernel estimation with adaptive sparse image prior learning

机译:自适应稀疏图像先验学习的正则运动模糊核估计

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This paper proposes a regularized negative log-marginal-likelihood minimization method for motion blur-kernel estimation, which is the core problem of blind motion deblurring. In contrast to existing approaches, the proposed method treats the blur-kernel as a deterministic parameter in a directed graphical model wherein, the sharp image is sparsely modeled by using a three-layer hierarchical Bayesian prior and the inverse noise variance is supposed distributed to the Gamma hyper-prior. By borrowing the ideas of mean filed approximation and iteratively reweighted least squares, the posterior distributions of the sharp image, the inverse noise variance and the hyper-parameters involved in the image prior, as well as the deterministic model parameters including the motion blur-kernel and those involved in the hyper-priors, are all estimated automatically for each blind motion deblurring problem. It is worthy to note that, the new approach relies on a strict minimization objective function, and learns a more adaptive sparse image prior while with considerably less implementation heuristics compared with existing motion blur-kernel estimation approaches. Experimental results on both benchmark and real-world motion blurred images demonstrate that the proposed method has achieved state-of-the-art or even better performance than the current blind motion deblurring approaches in terms of the image deblurring quality. The results also show that the proposed approach is robust to the size of the motion blur-kernel to a great extent. (C) 2015 Elsevier Ltd. All rights reserved.
机译:提出了一种运动模糊核估计的正则化负对数边际似然最小化方法,这是盲运动去模糊的核心问题。与现有方法相比,所提出的方法将模糊核作为有向图形模型中的确定性参数,其中,使用三层分层贝叶斯先验稀疏地建模清晰图像,并假设将逆噪声方差分布到伽玛优先级更高。通过借鉴均值逼近和迭代加权最小二乘的思想,清晰图像的后验分布,逆噪声方差和图像先验中涉及的超参数,以及确定性模型参数(包括运动模糊核)对于每个盲目运动去模糊问题,都将自动估算超优先级中涉及的那些变量。值得一提的是,新方法依赖于严格的最小化目标函数,并且与现有的运动模糊核估计方法相比,可以在先学习更自适应的稀疏图像,同时实现的启发式方法要少得多。在基准和真实运动模糊图像上的实验结果表明,在图像去模糊质量方面,所提出的方法比当前的盲运动去模糊方法达到了最先进的甚至更好的性能。结果还表明,所提出的方法在很大程度上对运动模糊核的大小具有鲁棒性。 (C)2015 Elsevier Ltd.保留所有权利。

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