Abstract:To overcome the limitations of traditional face recognition methods for single sample face recognition,a sub-pattern Gabor features fusion method for single sample face recognition is proposed. Firstly,facial local features are extracted by Gabor wavelet transformation. Then,the Gabor face images are blocked to take full advantage of the spatial location information of facial organs,and the minimum distance classifiers are used for each sub-pattern. Finally,the recognition result is achieved by the fusion of the sub-pattern classifiers′ results at the decision level. According to the difference of sub-pattern construction and fusion method,two kinds of sub-pattern Gabor features integration programs are proposed. The experimental results and comparative analysis on ORL face database and CAS-PEAL-R1 face database show that the proposed method achieves better classification rate and improves the performance of single sample face recognition system.
王科俊,邹国锋. 基于子模式的Gabor特征融合的单样本人脸识别[J]. 模式识别与人工智能, 2013, 26(1): 50-56.
WANG Ke-Jun,ZOU Guo-Feng. A Sub-Pattern Gabor Features Fusion Method for Single Sample Face Recognition. , 2013, 26(1): 50-56.
[1] Tan Xiaoyang,Chen Songcan,Zhou Zhihua,et al. Face Recognition from a Single Image per Person: A Survey. Pattern Recognition,2006,39(9): 1725-1745 [2] Zhang Daolin,Chen Songcan,Zhou Zhihua. A New Face Recognition Method Based on SVD Perturbation for Single Example Image per Person. Applied Mathematics and Computation,2005,163(2): 895-907 [3] Li Xin,Wang Kejun,Ben Xianye. MW(2D)2PCA Based Face Recognition with Single Training Sample. Pattern Recognition and Artificial Intelligence,2010,23(1): 77-83 (in Chinese) (李欣,王科俊,贲晛烨.基于MW(2D)2PCA的单训练样本人脸识别.模式识别与人工智能,2010,23(1): 77-83) [4] Chang Xueping,Zheng Zhonglong,Xie Chenmao. Sparse Representation-Based Face Recognition for Single Sample. Computer Engineering,2010,36(21): 175-177 (in Chinese) (畅雪萍,郑忠龙,谢陈毛.基于稀疏表征的单样本人脸识别.计算机工程,2010,36(21): 175-177) [5] Yang Jun,Gao Zhisheng,Yuan Hongzhao,et al. Single Sample Face Recognition Based on LBP Feature and Bayes Model. Journal of Optoelectronics Laser,2010,22(5): 763-765 (in Chinese) (杨军,高志升,袁红照,等.基于LBP特征和贝叶斯模型的单样本人脸识别.光电子·激光,2010,22(5): 763-765) [6] Su Yu,Shan Shiguang,Chen Xilin,et al. Adaptive Generic Learning for Face Recognition from a Single Sample per Person//Proc of the 23rd IEEE Conference on Computer Vision and Pattern Recognition. San Francisco,USA,2010: 2699-2706 [7] Qiao Lishan,Chen Songcan,Tan Xiaoyang. Sparsity Preserving Discriminant Analysis for Single Training Image Face Recognition. Pattern Recognition Letters,2010,31(5): 422-429 [8] Wang Kejun,Duan Shengli,Feng Weixing. A Survey of Face Recognition Using Single Training Sample. Pattern Recognition and Artificial Intelligence,2008,21(5): 635-642 (in Chinese) (王科俊,段胜利,冯伟兴.单训练样本人脸识别技术综述.模式识别与人工智能,2008,21(5): 635-642) [9] Daugman J. Uncertainty Relation for Resolution in Space,Spatial,Frequency,and Orientation Optimized by Two-Dimensional Visual Cortical Filters. Journal of the Optical Society of America,1985,2(7): 1160-1169 [10] Nikolay P. Biologically Motivated Computationally Intensive Approaches to Image Pattern Recognition. Future Generation Computer Systems,1995,11(4/5): 451-465 [11] Chiang J H. Aggregating Membership Values by a Choquet-Fuzzy-Integral Based Operator. Fuzzy Sets and Systems,2000,114(3): 367-375 [12] Yin Hongtao,Fu Ping,Meng Shengwei. Face Recognition Based on Local Feature Fusion. Journal of Test and Measurement Technology,2006,20(6): 539-542 (in Chinese) (尹洪涛,付平,孟升卫.基于局部特征融合的人脸识别.测试技术学报,2006,20(6): 539-542)