SPARSE REPRESENTATION BASED BLIND IMAGE DEBLURRING
Haichao Zhang, Jianchao Yang, Yanning Zhang, Thomas HuangAbstract
We propose a sparse representation based blind image deblurring method. The proposed method exploits the sparsity property of natural images, by assuming that the patches from the natural images can be sparsely represented by an over-complete dictionary. By incorporating this prior into the deblurring process, we can effectively regularize the ill-posed inverse problem and alleviate the undesirable ring effect which is usually suffered by conventional deblurring methods. Experimental results compared with \emph{state-of-the-art} blind deblurring method demonstrate the effectiveness of the proposed method.
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