Abstract

Patch based image modeling has achieved a great success in low level vision such as image denoising. In particular, the use of image nonlocal self-similarity (NSS) prior, which refers to the fact that a local patch often has many nonlocal similar patches to it across the image, has significantly enhanced the denoising performance. However, in most existing methods only the NSS of input degraded image is exploited, while how to utilize the NSS of clean natural images is still an open problem. In this paper, we propose a patch group (PG) based NSS prior learning scheme to learn explicit NSS models from natural images for high performance denoising. PGs are extracted from training images by putting nonlocal similar patches into groups, and a PG based Gaussian Mixture Model (PG-GMM) learning algorithm is developed to learn the NSS prior. We demonstrate that, owe to the learned PG-GMM, a simple weighted sparse coding model, which has a closed-form solution, can be used to perform image denoising effectively, resulting in high PSNR measure, fast speed, and particularly the best visual quality among all competing methods.

Keywords

Artificial intelligenceNoise reductionComputer sciencePattern recognition (psychology)Image (mathematics)Self-similaritySimilarity (geometry)Image denoisingNeural codingNon-local meansComputer visionMathematics

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Year
2015
Type
article
Pages
244-252
Citations
405
Access
Closed

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Jun Xu, Lei Zhang, Wangmeng Zuo et al. (2015). Patch Group Based Nonlocal Self-Similarity Prior Learning for Image Denoising. , 244-252. https://doi.org/10.1109/iccv.2015.36

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DOI
10.1109/iccv.2015.36