Sparse representation has attracted extensive attention and performed well on image super-resolution (SR) in the last decade. However, many current image SR methods face the contradiction of detail recovery and artifact suppression. We propose a multi-resolution dictionary learning (MRDL) model to solve this contradiction, and give a fast single image SR method based on the MRDL model. To obtain the MRDL model, we first extract multi-scale patches by using our proposed adaptive patch partition method (APPM). The APPM divides images into patches of different sizes according to their detail richness. Then, the multiresolution dictionary pairs, which contain structural primitives of various resolutions, can be trained from these multi-scale patches. Owing to the MRDL strategy, our SR algorithm not only recovers details well, with less jag and noise, but also significantly improves the computational efficiency. Experimental results validate that our algorithm performs better than other SR methods in evaluation metrics and visual perception.
CITATION STYLE
Zhao, W., Bian, X., Huang, F., Wang, J., & Abidi Mongi, A. (2018). Fast image super-resolution algorithm based on multi-resolution dictionary learning and sparse representation. Journal of Systems Engineering and Electronics, 29(3), 471–482. https://doi.org/10.21629/JSEE.2018.03.04
Mendeley helps you to discover research relevant for your work.