联合极端通道和0-正则化强度和梯度先验的盲图像去模糊

Kai Zhou, Peixian Zhuang, J. Xiong, Jin Zhao, Muyao Du
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引用次数: 5

摘要

极端通道先验(ECP)依赖于图像的明暗通道,基于极端通道先验的方法在盲图像去模糊中表现良好。然而,我们通过实验观察到,在一些图像中,暗通道和亮通道的像素值并没有分别集中分布在0和1上。在此基础上,我们开发了一个联合先验模型,该模型将极端通道先验和$L_{0}-$正则化强度和梯度先验相结合,用于盲图像去模糊,而之前基于暗通道先验、$L_{0^{-}}$正则化强度和梯度和极端通道先验的图像去模糊方法可以视为我们模型的一个特殊案例。然后,我们利用半二次分裂法推导了一种有效的优化算法来解决非凸$L_{0}-$最小化问题。最后进行了大量的实验,证明了所提出的模型在细节恢复和人工制品去除方面的优越性,并且在主观结果和客观评估方面,我们的模型优于几种领先的去模糊方法。此外,我们的方法更适用于自然图像、文本图像和人脸图像的去模糊处理,这些图像没有太多的明暗像素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind Image Deblurring With Joint Extreme Channels And L0-Regularized Intensity And Gradient Priors
The extreme channels prior (ECP) relies on the bright and dark channels of an image, and the corresponding ECP-based methods perform well in blind image deblurring. However, we experimentally observe that the pixel values of dark and bright channels in some images are not concentratedly distributed on 0 and 1 respectively. Based on this observation, we develop a model with a joint prior which combines the extreme channels prior and the $L_{0}-$regularized intensity and gradient prior for blind image deblurring, and previous image deblurring approaches based on dark channel prior, $L_{0^{-}}$ regularized intensity and gradient, and extreme channels prior can be seen as a particular case of our model. Then we derive an efficient optimization algorithm using the half-quadratic splitting method to address the non-convex $L_{0}-$minimization problem. A large number of experiments are finally performed to demonstrate the superiority of the proposed model in details restoration and artifacts removal, and our model outperforms several leading deblurring approaches in terms of subjective results and objective assessments. In addition, our method is more applicable for deblurring natural, text and face images which do not contain many bright or dark pixels.
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