Learning a Discriminative Prior for Blind Image Deblurring

2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition(2018)

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摘要
We present an effective blind image deblurring method based on a data-driven discriminative prior.Our work is motivated by the fact that a good image prior should favor clear images over blurred images.In this work, we formulate the image prior as a binary classifier which can be achieved by a deep convolutional neural network (CNN).The learned prior is able to distinguish whether an input image is clear or not.Embedded into the maximum a posterior (MAP) framework, it helps blind deblurring in various scenarios, including natural, face, text, and low-illumination images.However, it is difficult to optimize the deblurring method with the learned image prior as it involves a non-linear CNN.Therefore, we develop an efficient numerical approach based on the half-quadratic splitting method and gradient decent algorithm to solve the proposed model.Furthermore, the proposed model can be easily extended to non-uniform deblurring.Both qualitative and quantitative experimental results show that our method performs favorably against state-of-the-art algorithms as well as domain-specific image deblurring approaches.
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关键词
binary classifier,deep convolutional neural network,input image,blind deblurring,low-illumination images,learned image,nonlinear CNN,half-quadratic splitting method,nonuniform deblurring,domain-specific image deblurring approaches,effective blind image deblurring method,clear images,maximum a posterior framework,data-driven discriminative prior,gradient decent algorithm,deblurring method
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