Facial age estimation by nonlinear aging pattern subspace
conference contribution
posted on 2008-01-01, 00:00authored byX Geng, K Smith-Miles, Z H Zhou
Human age estimation by face images is an interesting yet challenging research topic emerging in recent years. This paper extends our previous work on facial age estimation (a linear method named AGES). In order to match the nonlinear nature of the human aging progress, a new algorithm named KAGES is proposed based on a nonlinear subspace trained on the aging patterns, which are defined as sequences of individual face images sorted in time order. Both the training and test (age estimation) processes of KAGES rely on a probabilistic model of KPCA. In the experimental results, the performance of KAGES is not only better than all the compared algorithms, but also better than the human observers in age estimation. The results are sensitive to parameter choice however, and future research challenges are identified.
History
Event
ACM International Conference on Multimedia (16th : 2008 : Vancouver, BC, Canada)
Pagination
721 - 724
Publisher
Association for Computing Machinery
Location
Vancouver, Canada
Place of publication
[New York, N.Y.]
Start date
2008-10-26
End date
2008-10-31
ISBN-13
9781605583037
ISBN-10
1605583030
Language
eng
Publication classification
E1 Full written paper - refereed
Copyright notice
2008, ACM
Title of proceedings
MM 2008 : Proceedings of the 2008 ACM International Conference on Multimedia, with co-located symposium & workshops : Vancouver, BC, Canada, October 27-31, 2008 : AREA '08, CommunicabilityMS '08, HCC '08, MIR '08, MS '08, SAME '08, SRMC '08, TVS '08, VNBA