A Mixed Non-local Prior Model for Image Super-resolution Reconstruction

Generating high-resolution image from a set of degraded low-resolution images is a challenge problem in image processing. Due to the ill-posed nature of Super-resolution(SR), it is necessary to find an effective image prior model to make it well-posed. For this purpose, we propose a mixed non-local...

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Veröffentlicht in:电子学报:英文版 2017 (4), p.778-783
1. Verfasser: ZHAO Shengrong LYU Zehua LIANG Hu Mudar SAREM
Format: Artikel
Sprache:eng
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Zusammenfassung:Generating high-resolution image from a set of degraded low-resolution images is a challenge problem in image processing. Due to the ill-posed nature of Super-resolution(SR), it is necessary to find an effective image prior model to make it well-posed. For this purpose, we propose a mixed non-local prior model by adaptively combining the non-local total variation and non-local H1 models, and establish a multi-frame SR method based on this mixed non-local prior model. The unknown Highresolution(HR) image, motion parameters and hyperparameters related to the new prior model and noise statistics are determined automatically, resulting in an unsupervised super-resolution method. Extensive experiments demonstrate the effectiveness of the proposed SR method,which can not only preserve image details better but also suppress noise better.
ISSN:1022-4653