Abstract

We propose in this paper to unify two different approaches to image restoration: On the one hand, learning a basis set (dictionary) adapted to sparse signal descriptions has proven to be very effective in image reconstruction and classification tasks. On the other hand, explicitly exploiting the self-similarities of natural images has led to the successful non-local means approach to image restoration. We propose simultaneous sparse coding as a framework for combining these two approaches in a natural manner. This is achieved by jointly decomposing groups of similar signals on subsets of the learned dictionary. Experimental results in image denoising and demosaicking tasks with synthetic and real noise show that the proposed method outperforms the state of the art, making it possible to effectively restore raw images from digital cameras at a reasonable speed and memory cost.

Keywords

Computer scienceArtificial intelligenceImage restorationNeural codingNoise reductionImage (mathematics)Pattern recognition (psychology)Set (abstract data type)Coding (social sciences)Computer visionNoise (video)DemosaicingImage processingColor imageMathematics

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Publication Info

Year
2009
Type
article
Pages
2272-2279
Citations
1690
Access
Closed

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Julien Mairal, Francis Bach, Jean Ponce et al. (2009). Non-local sparse models for image restoration. , 2272-2279. https://doi.org/10.1109/iccv.2009.5459452

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DOI
10.1109/iccv.2009.5459452