Compressed Sensing and Low-Rank Matrix Decomposition in Multisource Images Fusion
2014 ◽
Vol 2014
◽
pp. 1-7
◽
Keyword(s):
Low Rank
◽
We propose a novel super-resolution multisource images fusion scheme via compressive sensing and dictionary learning theory. Under the sparsity prior of images patches and the framework of the compressive sensing theory, the multisource images fusion is reduced to a signal recovery problem from the compressive measurements. Then, a set of multiscale dictionaries are learned from several groups of high-resolution sample image’s patches via a nonlinear optimization algorithm. Moreover, a new linear weights fusion rule is proposed to obtain the high-resolution image. Some experiments are taken to investigate the performance of our proposed method, and the results prove its superiority to its counterparts.
How Does the Low-Rank Matrix Decomposition Help Internal and External Learnings for Super-Resolution
2018 ◽
Vol 27
(3)
◽
pp. 1086-1099
◽