Face identification is the problem of determining
whether two face images depict the same person or not.
This is difficult due to variations in scale, pose, lighting,
background, expression, hairstyle, and glasses. In
this paper we present two methods for learning robust distance
measures: (a) a logistic discriminant approach which
learns the metric from a set of labelled image pairs (LDML)
and (b) a nearest neighbour approach which computes the
probability for two images to belong to the same class
(MkNN). We evaluate our approaches on the Labeled Faces
in the Wild data set, a large and very challenging data set
of faces from Yahoo! News. The evaluation protocol for this
data set defines a restricted setting, where a fixed set of positive
and negative image pairs is given, as well as an unrestricted
one, where faces are labelled by their identity. We
are the first to present results for the unrestricted setting,
and show that our methods benefit from this richer traini...