DocumentCode :
3580413
Title :
Multi-feature deep learning for face gender recognition
Author :
Yuxin Jiang ; Songbin Li ; Peng Liu ; Qiongxing Dai
Author_Institution :
Haikou Lab., Inst. of Acoust., Haikou, China
fYear :
2014
Firstpage :
507
Lastpage :
511
Abstract :
Face gender recognition is a challenging problem in the traditional field of pattern recognition. In this paper, we propose a deep learning model that can learn the joint high-level and low-level features of human face to address this problem. Our deep neural networks apply convolution and subsampling in extracting the local and abstract features of human face, and reconstruct the raw input images to learn global and effective features as supplementary information at the same time. We also add a trainable weight in the networks when combining the two kinds of features to realize the final gender classification. Experiment results show that our method achieves the highest accuracy compared with existing methods, when test on the mixed face dataset. Further, in the generalization test, the average classification rate on 3 public datasets of our method is 5% higher than the joint Local Binary Pattern (LBP) and Support Vector Machine (SVM) method, and is nearly 1% higher than the SVM with face pixels method. This proves our method outperforms the traditional methods in both learning ability and generalization ability.
Keywords :
face recognition; gender issues; image classification; neural nets; sampling methods; support vector machines; LBP; SVM method; abstract features; average classification rate; convolution; face gender recognition; face pixels method; gender classification; generalization ability; generalization test; human face; joint local binary pattern; learning ability; mixed face dataset; multifeature deep learning model; neural networks; pattern recognition; public datasets; subsampling; support vector machine; Accuracy; Face; Face recognition; Feature extraction; Joints; Neurons; Support vector machines; deep learning; face gender recognition; generalization ability; multi-feature learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Technology and Artificial Intelligence Conference (ITAIC), 2014 IEEE 7th Joint International
Print_ISBN :
978-1-4799-4420-0
Type :
conf
DOI :
10.1109/ITAIC.2014.7065102
Filename :
7065102
Link To Document :
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