Abstract

In this paper, we propose a novel generic image prior-gradient profile prior, which implies the prior knowledge of natural image gradients. In this prior, the image gradients are represented by gradient profiles, which are 1-D profiles of gradient magnitudes perpendicular to image structures. We model the gradient profiles by a parametric gradient profile model. Using this model, the prior knowledge of the gradient profiles are learned from a large collection of natural images, which are called gradient profile prior. Based on this prior, we propose a gradient field transformation to constrain the gradient fields of the high resolution image and the enhanced image when performing single image super-resolution and sharpness enhancement. With this simple but very effective approach, we are able to produce state-of-the-art results. The reconstructed high resolution images or the enhanced images are sharp while have rare ringing or jaggy artifacts.

Keywords

Image gradientMorphological gradientImage (mathematics)Ringing artifactsImage resolutionTransformation (genetics)Artificial intelligenceImage restorationComputer scienceParametric statisticsGradient analysisComputer visionImage processingMathematicsFeature detection (computer vision)

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Publication Info

Year
2010
Type
article
Volume
20
Issue
6
Pages
1529-1542
Citations
335
Access
Closed

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Cite This

Jian Sun, Jian Sun, Zongben Xu et al. (2010). Gradient Profile Prior and Its Applications in Image Super-Resolution and Enhancement. IEEE Transactions on Image Processing , 20 (6) , 1529-1542. https://doi.org/10.1109/tip.2010.2095871

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DOI
10.1109/tip.2010.2095871