Image denoising using derotated complex wavelet coefficients.

IEEE Transactions on Image Processing(2008)

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摘要
A method for removing additive Gaussian noise from digital images is described. It is based on statistical modeling of the coefficients of a redundant, oriented, complex multiscale transform. Two types of modeling are used to model the wavelet coefficients. Both are based on Gaussian scale mixture (GSM) modeling of neighborhoods of coefficients at adjacent locations and scales. Modeling of edge and ridge discontinuities is performed using wavelet coefficients derotated by twice the phase of the coefficient at the same location and the next coarser scale. Other areas are modeled using standard wavelet coefficients. An adaptive Bayesian model selection framework is used to determine the modeling applied to each neighborhood. The proposed algorithm succeeds in providing improved denoising performance at structural image features, reducing ringing artifacts and enhancing sharpness, while avoiding degradation in other areas. The method outperforms previously published methods visually and in standard tests.
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关键词
next coarser scale,additive gaussian noise,derotated complex wavelet coefficients,image,wavelet transforms,wavelet coefficient,standard wavelet coefficient,ridge discontinuity,standard test,statistical modeling,image denoising,adjacent location,interscale phase,bayes methods,complex multiscale,wavelet,edge discontinuity,denoising,index terms,restoration,adaptive bayesian model selection framework,adaptive bayesian model selection,gaussian scale mixture,gaussian noise,complex,statistical modelling,gsm,image features,digital image,indexing terms,noise reduction
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