Author/Authors :
Han, Yu School of Information and Electronics - Beijing Institute of Technology - Beijing, China , Du, Huiqian School of Information and Electronics - Beijing Institute of Technology - Beijing, China , Lam, Fan University of Illinois at Urbana-Champaign - Urbana, USA , Mei, Wenbo School of Information and Electronics - Beijing Institute of Technology - Beijing, China , Fang, Liping School of Mathematics - Beijing Institute of Technology - Beijing, China
Abstract :
The analysis model has been previously exploited as an alternative to the classical sparse synthesis model for designing image
reconstruction methods. Applying a suitable analysis operator on the image of interest yields a cosparse outcome which enables us to
reconstruct the image from undersampled data. In this work, we introduce additional prior in the analysis context and theoretically
study the uniqueness issues in terms of analysis operators in general position and the specific 2D finite difference operator. We
establish bounds on the minimum measurement numbers which are lower than those in cases without using analysis model prior.
Based on the idea of iterative cosupport detection (ICD), we develop a novel image reconstruction model and an effective algorithm,
achieving significantly better reconstruction performance. Simulation results on synthetic and practical magnetic resonance (MR)
images are also shown to illustrate our theoretical claims.
Keywords :
Reconstruction , Analysis , Prior , ICD