We propose a novel approach to unsupervised facial image
alignment. Differently from previous approaches, that
are confined to affine transformations on either the entire
face or separate patches, we extract a nonrigid mapping between
facial images. Based on a regularized face model, we
frame unsupervised face alignment into the Lucas-Kanade
image registration approach. We propose a robust optimization
scheme to handle appearance variations. The method
is fully automatic and can cope with pose variations and expressions,
all in an unsupervised manner. Experiments on a
large set of images showed that the approach is effective.
Jianke Zhu, Luc Van Gool and Steven C. H. Hoi