Authors
Shengyang Dai, Mei Han, Wei Xu, Ying Wu, Yihong Gong
Publication date
2007/6/17
Conference
2007 IEEE Conference on Computer Vision and Pattern Recognition
Pages
1-8
Publisher
IEEE
Description
Effective image prior is necessary for image super resolution, due to its severely under-determined nature. Although the edge smoothness prior can be effective, it is generally difficult to have analytical forms to evaluate the edge smoothness, especially for soft edges that exhibit gradual intensity transitions. This paper finds the connection between the soft edge smoothness and a soft cut metric on an image grid by generalizing the Geocuts method [5], and proves that the soft edge smoothness measure approximates the average length of all level lines in an intensity image. This new finding not only leads to an analytical characterization of the soft edge smoothness prior, but also gives an intuitive geometric explanation. Regularizing the super resolution problem by this new form of prior can simultaneously minimize the length of all level lines, and thus resulting in visually appealing results. In addition, this paper …
Total citations
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Scholar articles
S Dai, M Han, W Xu, Y Wu, Y Gong - 2007 IEEE Conference on Computer Vision and …, 2007