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      Image denoising via sparse and redundant representations over learned dictionaries.

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          Abstract

          We address the image denoising problem, where zero-mean white and homogeneous Gaussian additive noise is to be removed from a given image. The approach taken is based on sparse and redundant representations over trained dictionaries. Using the K-SVD algorithm, we obtain a dictionary that describes the image content effectively. Two training options are considered: using the corrupted image itself, or training on a corpus of high-quality image database. Since the K-SVD is limited in handling small image patches, we extend its deployment to arbitrary image sizes by defining a global image prior that forces sparsity over patches in every location in the image. We show how such Bayesian treatment leads to a simple and effective denoising algorithm. This leads to a state-of-the-art denoising performance, equivalent and sometimes surpassing recently published leading alternative denoising methods.

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          Author and article information

          Journal
          IEEE Trans Image Process
          IEEE transactions on image processing : a publication of the IEEE Signal Processing Society
          Institute of Electrical and Electronics Engineers (IEEE)
          1057-7149
          1057-7149
          Dec 2006
          : 15
          : 12
          Affiliations
          [1 ] Department of Computer Science, The Technion-Israel Institute of Technology, Haifa 32000, Israel. elad@cs.technion.ac.il
          Article
          10.1109/tip.2006.881969
          17153947
          d3ca3242-f801-4a16-9063-f8af6542a216
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