Hybrid inter- and intra-wavelet scale image restoration

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This paper exploits both the inter- and intra-scale interdependencies that exist in wavelet coefficients to improve image restoration from noise-corrupted data. Using an over-complete wavelet expansion, we group the wavelet coefficients with the same spatial orientation at several scales. We then apply the linear minimum mean squared-error estimation to smooth noise. This scheme exploits the inter-scale correlation information of wavelet coefficients. To exploit the intra-scale dependencies, we calculate the co-variance matrix of each vector locally using a centered square-shaped window. Experiments show that the proposed hybrid scheme significantly outperforms methods exploiting only the intra- or inter-scale dependencies. The performance of noise removal also depends on wavelet filters. In our experiments a biorthogonal wavelet, which best characterizes the image inter-scale dependencies, achieves the best results.

论文关键词:Image restoration,Overcomplete wavelet expansion,Inter- and intra-scale dependency,LMMSE

论文评审过程:Received 15 February 2002, Revised 18 November 2002, Accepted 18 November 2002, Available online 14 February 2003.

论文官网地址:https://doi.org/10.1016/S0031-3203(02)00350-3