Interscale Stein's Unbiased Risk Estimate and Intrascale Feature Patches Distance Constraint for Image Denoising
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概要
- 論文の詳細を見る
The influence of noise is an important problem on image acquisition and transmission stages. The traditional image denoising approaches only analyzing the pixels of local region with a moving window, which calculated by neighbor pixels to denoise. Recently, this research has been focused on the transform domain and feature space. Compare with the traditional approaches, the global multi-scale analyzing and unchangeable noise distribution is the advantage. Apparently, the estimation based methods can be used in transform domain and get better effect. This paper proposed a new approach to image denoising in orthonormal wavelet domain. In this paper, we adopt Steins unbiased risk estimate (SURE) based method to denoise the low-frequency bands and the feature patches distance constraint (FPDC) method also be proposed to estimate the noise free bands in Wavelet domain. The key point is that how to divide the lower frequency sub-bands and the higher frequency sub-bands, and do interscale SURE and intrascale FPDC, respectively. We compared our denoising method with some well-known and new denoising algorithms, the experimental results show that the proposed method can give better performance and keep more detail information in most objective and subjective criteria than other methods.
- (社)電子情報通信学会の論文
- 2010-08-01
著者
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KAMATA Sei-ichiro
Graduate School of Information, Production and Systems, Waseda University
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Ahrary Alireza
Fukuoka Industry Science And Technology Foundation
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Ahrary Alireza
Department Of Informatics Nagasaki Institute Of Applied Science
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Kamata Sei-ichiro
Graduate School Of Information Production And System Waseda University
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Ahrary Alireza
Information Production And Systems Research Center Waseda University
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ZHANG Qieshi
Graduate School of Information, Production and Systems, Waseda University
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Zhang Qieshi
Graduate School Of Information Production And Systems Waseda University
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