Electronics Optics & Control, Volume. 23, Issue 12, 1(2016)
A Sparse Representation Based Method for Infrared Image Super-Resolution Reconstruction
To solve the problems of low quality and poor resolution of infrared images, super-resolution reconstruction based on sparse representation is put forward. First of all, Sobel operators of different directions are applied to extract the feature of low-resolution images, and the high and low-resolution dictionaries are trained by using the extracted feature images. Then the same way is used to obtain the feature image of low-resolution target image. The sparse coefficient of the target image is obtained through low-resolution dictionary and the feature image. Finally, according to the structural similarity between high and low-resolution images, the high-resolution image can be reconstructed by using the sparse coefficient and high-resolution dictionary. The experiments prove that this method can get a better super-resolution reconstruction effect.
Get Citation
Copy Citation Text
YANG Min, LI Min, YI Ya-xing. A Sparse Representation Based Method for Infrared Image Super-Resolution Reconstruction[J]. Electronics Optics & Control, 2016, 23(12): 1
Category:
Received: Dec. 8, 2015
Accepted: --
Published Online: Jan. 25, 2021
The Author Email: