DocumentCode
3707611
Title
Single face image super-resolution via solo dictionary learning
Author
Felix Juefei-Xu;Marios Savvides
Author_Institution
Carnegie Mellon University, Pittsburgh, Pennsylvania 15213, USA
fYear
2015
Firstpage
2239
Lastpage
2243
Abstract
In this work, we have proposed a single face image super-resolution approach based on solo dictionary learning. The core idea of the proposed method is to recast the super-resolution task as a missing pixel problem, where the low-resolution image is considered as its high-resolution counterpart with many pixels missing in a structured manner. A single dictionary is therefore sufficient for recovering the super-resolved image by filling the missing pixels. In order to fill in 93.75% of the missing pixels when super-resolving a 16 × 16 low-resolution image to a 64 × 64 one, we adopt a whole image-based solo dictionary learning scheme. The proposed procedure can be easily extended to low-resolution input images with arbitrary dimensions, as well as high-resolution recovery images of arbitrary dimensions. Also, for a fixed desired super-resolution dimension, there is no need to retrain the dictionary when the input low-resolution image has arbitrary zooming factors. Based on a large-scale fidelity experiment on the FRGC ver2 database, our proposed method has outperformed other well established interpolation methods as well as the coupled dictionary learning approach.
Keywords
"Dictionaries","Interpolation","Signal resolution","Spatial resolution","Kernel","Face"
Publisher
ieee
Conference_Titel
Image Processing (ICIP), 2015 IEEE International Conference on
Type
conf
DOI
10.1109/ICIP.2015.7351199
Filename
7351199
Link To Document