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- Title
Age estimation based on improved discriminative Gaussian process latent variable model.
- Authors
Cai, Lijun; Huang, Lei; Liu, Changping
- Abstract
Affected by various factors (genes, living habits and so on), different people present distinct aging patterns. To discover the underlying trend of aging patterns, we propose an effective age estimation method based on DGPLVM (Discriminative Gaussian Process Latent Variable Model). DGPLVM is a kind of discriminative latent variable method for manifold learning. It discovers the low-dimensional manifold by employing a discriminative prior distribution over the latent space. DGPLVM with KFDA (Kernel Fisher Discriminant Analysis) prior has been studied and successfully applied to face verification. Different with face verification which is a two-class problem, age estimation is a linearly inseparable multi-class problem. In this paper, DGPLVM with KFDA is reformulated to get the low-dimensional representations for age estimation. After low-dimensional representations are obtained, Gaussian process regression model is adopted to find the age regressor mapping low-dimensional representations to ages. Experimental results on two widely used databases FG-NET and MORPH show that reformulated DGPLVM with KFDA is a good application in age estimation and achieves comparable results to state-of-the arts.
- Subjects
ESTIMATION theory; GAUSSIAN processes; FISHER discriminant analysis; FACE perception; ARTIFICIAL neural networks
- Publication
Multimedia Tools & Applications, 2016, Vol 75, Issue 19, p11977
- ISSN
1380-7501
- Publication type
Article
- DOI
10.1007/s11042-015-2668-4