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Blur kernel estimation using sparse representation and cross scale self similari

上传者: 2021-03-12 20:25:59上传 PDF文件 2.62MB 热度 18次
Blind image deconvolution, i.e., estimating both the latent image and the blur kernel from the only observed blurry image, is a severely ill-posed inverse problem. In this paper, we propose a blur kernel estimation method for blind motion deblurring using sparse representation and cross-scale self-similarity of image patches as priors to recover the latent sharp image from a single blurry image. Sparse representation indicates that image patches can always be represented well as a sparse linear
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