Abstract
Multiview
face recognition has become an active research area in the last few years. In
this paper, we present an approach for video-based face recognition in camera
networks. Our goal is to handle pose variations by exploiting the redundancy in
the multiview video data. However, unlike traditional approaches that
explicitly estimate the pose of the face, we propose a novel feature for robust
face recognition in the presence of diffuse lighting and pose variations. The
proposed feature is developed using the spherical harmonic representation of
the face texture-mapped onto a sphere; the texture map itself is generated by
back-projecting the multiview video data. Video plays an important role in this
scenario. First, it provides an automatic and efficient way for feature
extraction. Second, the data redundancy renders the recognition algorithm more
robust. We measure the similarity between feature sets from different videos
using the reproducing kernel Hilbert space. We demonstrate that the proposed
approach outperforms traditional algorithms on a multiview video database.
Domain : Image Processing
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