Title :
Sparsity Fine Tuning in Wavelet Domain With Application to Compressive Image Reconstruction
Author :
Weisheng Dong ; Xiaolin Wu ; Guangming Shi
Author_Institution :
Sch. of Electron. Eng., Xidian Univ., Xi´an, China
Abstract :
In compressive sensing, wavelet space is widely used to generate sparse signal (image signal in particular) representations. In this paper, we propose a novel approach of statistical context modeling to increase the level of sparsity of wavelet image representations. It is shown, contrary to a widely held assumption, that high-frequency wavelet coefficients have nonzero mean distributions if conditioned on local image structures. Removing this bias can make wavelet image representations sparser, i.e., having a greater number of zero and close-to-zero coefficients. The resulting unbiased probability models can significantly improve the performance of existing wavelet-based compressive image reconstruction methods in both PSNR and visual quality. An efficient algorithm is presented to solve the compressive image recovery (CIR) problem using the refined models. Experimental results on both simulated compressive sensing (CS) image data and real CS image data show that the new CIR method significantly outperforms existing CIR methods in both PSNR and visual quality.
Keywords :
compressed sensing; data compression; image coding; image reconstruction; image representation; probability; statistical analysis; wavelet transforms; PSNR; close-to-zero coefficients; compressive image recovery problem; compressive sensing; high-frequency wavelet coefficients; local image structures; nonzero mean distributions; sparse signal representation generation; sparsity level; statistical context modeling; unbiased probability models; visual quality; wavelet image representations; wavelet space; wavelet-based compressive image reconstruction method; zero coefficients; Adaptation models; Context; Context modeling; Estimation error; Hidden Markov models; Image reconstruction; Wavelet transforms; Compressive sensing; structured sparsity; wavelet-based sparse representation;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2014.2363616