Face verification has many potential applications including
filtering and ranking image/video search results on
celebrities. Since these images/videos are taken under uncontrolled
environments, the problem is very challenging
due to dramatic lighting and pose variations, low resolutions,
compression artifacts, etc. In addition, the available
number of training images for each celebrity may be limited,
hence learning individual classifiers for each person
may cause overfitting. In this paper, we propose two ideas
to meet the above challenges. First, we propose to use individual
bins, instead of whole histograms, of Local Binary
Patterns (LBP) as features for learning, which yields significant
performance improvements and computation reduction
in our experiments. Second, we present a novel Multi-Task
Learning (MTL) framework, called Boosted MTL, for face
verification with limited training data. It jointly learns classifiers
for multiple people by sharing a few boosting cl...