Title :
Model-Assisted Adaptive Recovery of Compressed Sensing with Imaging Applications
Author :
Wu, Xiaolin ; Dong, Weisheng ; Zhang, Xiangjun ; Shi, Guangming
Author_Institution :
Dept. of Electr. & Comput. Eng., McMaster Univ., Hamilton, ON, Canada
Abstract :
In compressive sensing (CS), a challenge is to find a space in which the signal is sparse and, hence, faithfully recoverable. Since many natural signals such as images have locally varying statistics, the sparse space varies in time/spatial domain. As such, CS recovery should be conducted in locally adaptive signal-dependent spaces to counter the fact that the CS measurements are global and irrespective of signal structures. On the contrary, existing CS reconstruction methods use a fixed set of bases (e.g., wavelets, DCT, and gradient spaces) for the entirety of a signal. To rectify this problem, we propose a new framework for model-guided adaptive recovery of compressive sensing (MARX) and show how a 2-D piecewise autoregressive model can be integrated into the MARX framework to make CS recovery adaptive to spatially varying second order statistics of an image. In addition, MARX offers a mechanism of characterizing and exploiting structured sparsities of natural images, greatly restricting the CS solution space. Simulation results over a wide range of natural images show that the proposed MARX technique can improve the reconstruction quality of existing CS methods by 2-7 dB.
Keywords :
autoregressive processes; compressed sensing; image processing; 2D piecewise autoregressive model; MARX framework; adaptive signal-dependent spaces; compressed sensing; imaging applications; model-assisted adaptive recovery; model-guided adaptive recovery; signal structures; sparse space; Adaptation models; Compressed sensing; Computational modeling; Image reconstruction; Inverse problems; PSNR; Pixel; Adaptive modeling; autoregressive process; compressive sensing (CS); inverse problem;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2011.2163520