Contemporary face recognition algorithms rely on precise
localization of keypoints (corner of eye, nose etc.). Unfortunately,
finding keypoints reliably and accurately remains
a hard problem. In this paper we pose two questions.
First, is it possible to exploit the gallery image in order to
find keypoints in the probe image? For instance, consider
finding the left eye in the probe image. Rather than using
a generic eye model, we use a model that is informed by
the appearance of the eye in the gallery image. To this end
we develop a probabilistic model which combines recognition
and keypoint localization. Second, is it necessary to
localize keypoints? Alternatively we can consider keypoint
position as a hidden variable which we marginalize over
in a Bayesian manner. We demonstrate that both of these
innovations improve performance relative to conventional
methods in both frontal and cross-pose face recognition.
Peng Li, Simon J. D. Prince