Efficient Learning-based Image Enhancement: Application to Super-resolution and Compression Artifact Removal
Author(s) -
Younghee Kwon,
Kwang In Kim,
Jin Kim,
Christian Theobalt
Publication year - 2012
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.26.14
Subject(s) - computer science , jpeg , artificial intelligence , regularization (linguistics) , gaussian , image compression , computer vision , image (mathematics) , pattern recognition (psychology) , algorithm , image processing , physics , quantum mechanics
In this paper, we describe a framework for learning-based image enhancement. At the core of our algorithm lies a generic regularization framework that comprises a prior on natural images, as well as an application-specific conditional model based on Gaussian processes. In contrast to prior learning-based approaches, our algorithm can instantly learn task-specific degradation models from sample images which enables users to easily adopt the algorithm to a specific problem and data set of interest. This is facilitated by our efficient approximation scheme of large-scale Gaussian processes. We demonstrate the efficiency and effectiveness of our approach by applying it to two example enhancement applications: single-image super-resolution as well as artifact removal in JPEG-encoded images
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