This paper presents a component based deformable
model for generalized face alignment, in which a novel bistage
statistical framework is proposed to account for both
local and global shape characteristics. Instead of using statistical
analysis on the entire shape as in previous alignment
work, we build separate Gaussian models for shape
components to preserve more detailed local shape deformations.
In each model of components the Markov Network
is integrated to provide simple geometry constraints for our
search strategy. In order to make a better description of
the nonlinear interrelationships over the shape components,
the Gaussian Process Latent Variable Model is adopted to
obtain enough control of full range shape variations. Furthermore,
we propose an illumination-robust feature to lead
the local fitting of every shape point when light conditions
change dramatically. Based on this approach, our system
can generate optimal shape for images with exaggerated expression...