Title :
Human Age Estimation Based on Locality and Ordinal Information
Author :
Changsheng Li ; Qingshan Liu ; Weishan Dong ; Xiaobin Zhu ; Jing Liu ; Hanqing Lu
Author_Institution :
IBM Res. - China, Beijing, China
Abstract :
In this paper, we propose a novel feature selection-based method for facial age estimation. The face aging is a typical temporal process, and facial images should have certain ordinal patterns in the aging feature space. From the geometrical perspective, a facial image can be usually seen as sampled from a low-dimensional manifold embedded in the original high-dimensional feature space. Thus, we first measure the energy of each feature in preserving the underlying local structure information and the ordinal information of the facial images, respectively, and then we intend to learn a low-dimensional aging representation that can maximally preserve both kinds of information. To further improve the performance, we try to eliminate the redundant local information and ordinal information as much as possible by minimizing nonlinear correlation and rank correlation among features. Finally, we formulate all these issues into a unified optimization problem, which is similar to linear discriminant analysis in format. Since it is expensive to collect the labeled facial aging images in practice, we extend the proposed supervised method to a semi-supervised learning mode including the semi-supervised feature selection method and the semi-supervised age prediction algorithm. Extensive experiments are conducted on the FACES dataset, the Images of Groups dataset, and the FG-NET aging dataset to show the power of the proposed algorithms, compared to the state-of-the-arts.
Keywords :
ageing; face recognition; feature selection; learning (artificial intelligence); optimisation; FACES dataset; FG-NET aging dataset; facial age estimation; facial aging images; high-dimensional feature space; human age estimation; linear discriminant analysis; locality information; low-dimensional aging representation; ordinal information; semisupervised age prediction algorithm; semisupervised feature selection method; semisupervised learning mode; unified optimization problem; Aging; Correlation; Estimation; Face; Linear programming; Manifolds; Optimization; Age estimation; feature selection; local manifold structure; ordinal pattern; semi-supervised learning;
Journal_Title :
Cybernetics, IEEE Transactions on
DOI :
10.1109/TCYB.2014.2376517