DocumentCode :
3700114
Title :
VRank: Voting system on Ranking model for human age estimation
Author :
Tekoing Lim;Kai-Lung Hua;Hong-Cyuan Wang;Kai-Wen Zhao;Min-Chun Hu;Wen-Huang Cheng
Author_Institution :
Research Center for Information Technology Innovation (CITI), Academia Sinica, Taipei, 115 Taiwan
fYear :
2015
Firstpage :
1
Lastpage :
6
Abstract :
Ranking algorithms have proven the potential for human age estimation. Currently, a common paradigm is to compare the input face with reference faces of known age to generate a ranking relation whereby the first-rank reference is exploited for labeling the input face. In this paper, we proposed a framework to improve upon the typical ranking model, called Voting system on Ranking model (VRank), by leveraging relational information (comparative relations, i.e. if the input face is younger or older than each of the references) to make a more robust estimation. Our approach has several advantages: firstly, comparative relations can be explicitly involved to benefit the estimation task; secondly, few incorrect comparisons will not influence much the accuracy of the result, making this approach more robust than the conventional approach; finally, we propose to incorporate the deep learning architecture for training, which extracts robust facial features for increasing the effectiveness of classification. In comparison to the best results from the state-of-the-art methods, the VRank showed a significant outperformance on all the benchmarks, with a relative improvement of 5.74% ~ 69.45% (FG-NET), 19.09% ~ 68.71% (MORPH), and 0.55% ~ 17.73% (IoG).
Keywords :
"Bismuth","Estimation","Face","Support vector machines","Robustness","Machine learning","Feature extraction"
Publisher :
ieee
Conference_Titel :
Multimedia Signal Processing (MMSP), 2015 IEEE 17th International Workshop on
Type :
conf
DOI :
10.1109/MMSP.2015.7340789
Filename :
7340789
Link To Document :
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