Title :
Effective two-step method for face hallucination based on sparse compensation on over-complete patches
Author :
Haju Mohamed, Mohamed ; Yao Lu ; Feng Lv
Author_Institution :
Beijing Lab. of Intell. Inf. Technol., Beijing Inst. of Technol., Beijing, China
Abstract :
Sparse representation has been successfully applied to image d using low- and high-resolution training face images based on sparse representation. In this study, the sparse residual compensation is adopted to face hallucination. Firstly, a global face image is constructed by optimal coefficients of the interpolated training images. Secondly, the high-resolution residual image (local face image) is found by using an over-complete patch dictionary and the sparse representation. Finally, a hallucinated face image is obtained by combining these two steps. In addition, the more details of the face image in high frequency parts are recovered using a residual compensation strategy. In the authors´ experimental work, it is observed that balance sparsity parameter (λ) has affected the residual compensation. Further, the proposed algorithm can acquire a high-resolution image even though the number of training image pairs is comparatively smaller. The experiments show that the authors´ method is more effective than the other existing two-step face hallucination methods.
Keywords :
face recognition; image representation; image resolution; balance sparsity parameter; effective two-step method; face hallucination; global face image; high-resolution residual image; high-resolution training face images; interpolated training images; local face image; low-resolution training face images; optimal coefflcients; over-complete patch dictionary; over-complete patches; residual compensation; residual compensation strategy; sparse compensation; sparse representation; two-step face hallucination methods;
Journal_Title :
Image Processing, IET
DOI :
10.1049/iet-ipr.2012.0554