posted on 2007-01-01, 00:00authored byJose Gonzalez-Mora, Fernando De la Torre, Rajesh Murthi, Nicolas Guil, Emilio L. Zapata
Appearance Models have been applied to model the
space of human faces over the last two decades. In particular,
Active Appearance Models (AAMs) have been successfully
used for face tracking, synthesis and recognition,
and they are one of the state-of-the-art approaches due to
its efficiency and representational power. Although widely
employed, AAMs suffer from a few drawbacks, such as the
inability to isolate pose, identity and expression changes.
This paper proposes Bilinear Active Appearance Models
(BAAMs), an extension of AAMs, that effectively decouple
changes due to pose and expression/identity. We derive a
gradient-descent algorithm to efficiently fit BAAMs to new
images. Experimental results show how BAAMs improve
generalization and convergence with respect to the linear
model. In addition, we illustrate decoupling benefits of
BAAMs in face recognition across pose. We show how the
pose normalization provided by BAAMs i