Fast and Robust Multiframe Super Resolution

Sina Farsiu(University of California, Santa Cruz), Michael D. Robinson(University of California, Santa Cruz), Michael Elad(Technion – Israel Institute of Technology), Peyman Milanfar(University of California, Santa Cruz)
IEEE Transactions on Image Processing
September 7, 2004
Cited by 2,022

Abstract

Super-resolution reconstruction produces one or a set of high-resolution images from a set of low-resolution images. In the last two decades, a variety of super-resolution methods have been proposed. These methods are usually very sensitive to their assumed model of data and noise, which limits their utility. This paper reviews some of these methods and addresses their short-comings. We propose an alternate approach using L1 norm minimization and robust regularization based on a bilateral prior to deal with different data and noise models. This computationally inexpensive method is robust to errors in motion and blur estimation and results in images with sharp edges. Simulation results confirm the effectiveness of our method and demonstrate its superiority to other super-resolution methods.


Related Papers

No related papers found

Powered by citation graph analysis