Zhao Jingjing, Fang Qi, Liang Zhicheng, Hu Changsheng, Yang Fumeng, Zhan Shu. Sketch face recognition based on super-resolution reconstruction[J]. Journal of Image and Graphics, 2016, 21(2): 218-224. DOI: 10.11834/jig.20160211.
Super-resolution reconstruction by learning can better describe image details and significantly enhance image resolution
thus improving the visual effect of the image because of the introduction of priori knowledge. Applying super-resolution reconstruction to sketch face recognition does not only improve the quality of the image but also effectively increases the recogniton rate. First
eigenface algorithm is used to synthesize a photo according to the input sketch. Then
super-resolution reconstruction via sparse representation is executed on the synthesized photo. Finally
principal component analysis is employed to recognize the synthesized photos that have been formed before the reconstruction and after. The experiment is performed on CUHK Face Sketch Database (CUFS). Experimental results show that
after super-resolution reconstruction
the synthesized photo can describe the facial details better
such as the eyes. Moreover
because of the introduction of priori knowledge
the sketch face recognition rate is improved after reconstruction. Experimental results also indicate that the recognition rate of support vector machine algorithm is improved from 65% to 66%
and the recognition rate of the principal component analysis algorithm is improved from 87% to 89%. Sketch face recognition based on super-resolution reconstruction can improve the image visual effect and increase the sketch face recognition rate effectively.