Fast log-Gabor-based nonlocal means image denoising methods

ICIP(2014)

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摘要
This paper explores the possibility of incorporating log-Gabor features into nonlocal means image denoising framework. It is found that log-Gabor features are better choice for this task than previously studied geometrical features. Moreover, we combine log-Gabor features with original image patch information to arrive at mixed similarity measure, which leads to further denoising performance improvement. In addition, we test a random projection-based approach to nonlocal means speed-up, guided by the well-known Johnson-Lindenstrauss lemma. Experimental results are quite encouraging.
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关键词
fast log gabor,nonlocal means,gabor filters,image denoising methods,dimensionality reduction,image denoising,geometrical features,johnson-lindenstrauss lemma,mixed similarity measure,log-gabor features,image patch information
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