Learning Patch Correspondences for Improved Viewpoint Invariant Face Recognition
Abstract
Variation due to viewpoint is one of the key challenges that stand in the way of a complete solution to the face recognition problem. It is easy to note that local regions of the face change differently in appearance as the viewpoint varies. Recently, patch-based approaches, such as those of Kanade and Yamada, have taken advantage of this effect resulting in improved viewpoint invariant face recognition. In this paper we propose a data-driven extension to their approach, in which we not only model how a face patch varies in appearance, but also how it deforms spatially as the viewpoint varies. We propose a novel alignment strategy which we refer to as ?tack ?ow?that discovers viewpoint induced spatial deformities undergone by a face at the patch level. One can then view the spatial deformation of a patch as the correspondence of that patch between two viewpoints. We present improved identi?cation and veri?cation results to demonstrate the utility of our technique.
BibTeX
@conference{Ashraf-2008-9987,author = {Ahmed Bilal Ashraf and Simon Lucey and Tsuhan Chen},
title = {Learning Patch Correspondences for Improved Viewpoint Invariant Face Recognition},
booktitle = {Proceedings of (CVPR) Computer Vision and Pattern Recognition},
year = {2008},
month = {June},
keywords = {Viewpoint Invariant Face Recogntion},
}