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Concave-convex norm ratio prior based double model and fast algorithm for blind deconvolution

机译:基于凹凸标准比先验的双重模型和盲去卷积快速算法

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A blurred image is usually modeled as the convolution of a sharp image with a blur kernel, so blind image deconvolution is a difficult ill-posed problem since both the blur kernel and the sharp image are unknown. To overcome this difficulty, regularization methods are required to stabilize the solution, which usually utilizes some convex priors to solve an optimization model. Recent theoretical results have demonstrated the superiority of the non-convex sparse prior over the convex counterparts. The non-convex prior, however, leads to a non-convex, non-smooth optimization model that is difficult to solve accurately and efficiently. In this paper, we propose a double model to solve single image blind deconvolution problem. The model consists of 2 cost functions. The first function consists of a L1 data fitting term and a concave-convex norm ratio prior, which is used to estimate the sharp image, the second function consists of a L2 data fitting term and a L1 prior term, which is used to estimate the kernel. We utilize multi-scale analysis method to estimate the blur kernel from coarse to fine. For the non-convex prior, we introduce a split method and a closed-form thresholding formulas to restore the sharp image. This method can obtain fast convergence and get more sharp image. Experimental results on image deblurring verify the effectiveness and efficiency of our model and algorithm. The proposed model and fast algorithm can be easily used in sparse modeling and representation learning. (C) 2015 Elsevier B.V. All rights reserved.
机译:通常将模糊图像建模为清晰图像与模糊内核的卷积,因此盲图像反卷积是一个困难的不适定问题,因为模糊内核和清晰图像都是未知的。为了克服此困难,需要使用正则化方法来稳定求解,该方法通常利用一些凸先验来求解优化模型。最近的理论结果证明了非凸稀疏先于凸凸类的优势。但是,非凸先验会导致难以精确有效地求解的非凸,非平滑优化模型。在本文中,我们提出了一个双重模型来解决单图像盲反卷积问题。该模型包含2个成本函数。第一个函数由一个L1数据拟合项和一个凹凸标准比prior组成,用于估计清晰图像;第二个函数由一个L2数据拟合项和一个L1先验项组成,用于估算锐利图像核心。我们利用多尺度分析方法来估计从粗糙到精细的模糊核。对于非凸先验,我们引入了分割方法和封闭形式的阈值公式来恢复清晰图像。该方法可以获得快速收敛并获得更清晰的图像。图像去模糊的实验结果验证了我们模型和算法的有效性和效率。所提出的模型和快速算法可以很容易地用于稀疏建模和表示学习中。 (C)2015 Elsevier B.V.保留所有权利。

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