A new learning strategy for object detection is presented.
The proposed scheme forgoes the need to train a collection
of detectors dedicated to homogeneous families of poses,
and instead learns a single classifier that has the inherent
ability to deform based on the signal of interest.
Specifically, we train a detector with a standard AdaBoost
procedure by using combinations of pose-indexed
features and pose estimators instead of the usual image features.
This allows the learning process to select and combine
various estimates of the pose with features able to implicitly
compensate for variations in pose. We demonstrate
that a detector built in such a manner provides noticeable
gains on two hand video sequences and analyze the performance
of our detector as these data sets are synthetically
enriched in pose while not increased in size.