Abstract

Recently there have been significant advances in image up scaling or image super-resolution based on a dictionary of low and high resolution exemplars. The running time of the methods is often ignored despite the fact that it is a critical factor for real applications. This paper proposes fast super-resolution methods while making no compromise on quality. First, we support the use of sparse learned dictionaries in combination with neighbor embedding methods. In this case, the nearest neighbors are computed using the correlation with the dictionary atoms rather than the Euclidean distance. Moreover, we show that most of the current approaches reach top performance for the right parameters. Second, we show that using global collaborative coding has considerable speed advantages, reducing the super-resolution mapping to a precomputed projective matrix. Third, we propose the anchored neighborhood regression. That is to anchor the neighborhood embedding of a low resolution patch to the nearest atom in the dictionary and to precompute the corresponding embedding matrix. These proposals are contrasted with current state-of-the-art methods on standard images. We obtain similar or improved quality and one or two orders of magnitude speed improvements. © 2013 IEEE.

Keywords

EmbeddingComputer scienceArtificial intelligenceNeural codingEuclidean distanceResolution (logic)Coding (social sciences)k-nearest neighbors algorithmScalingAlgorithmImage resolutionPattern recognition (psychology)RegressionSparse matrixMathematicsStatistics

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Year
2013
Type
article
Pages
1920-1927
Citations
1381
Access
Closed

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Cite This

Radu Timofte, Vincent De, Luc Van Gool (2013). Anchored Neighborhood Regression for Fast Example-Based Super-Resolution. , 1920-1927. https://doi.org/10.1109/iccv.2013.241

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DOI
10.1109/iccv.2013.241