Authors
Pascal Paysan, Reinhard Knothe, Brian Amberg, Sami Romdhani, Thomas Vetter
Publication date
2009/9/2
Conference
2009 sixth IEEE international conference on advanced video and signal based surveillance
Pages
296-301
Publisher
Ieee
Description
Generative 3D face models are a powerful tool in computer vision. They provide pose and illumination invariance by modeling the space of 3D faces and the imaging process. The power of these models comes at the cost of an expensive and tedious construction process, which has led the community to focus on more easily constructed but less powerful models. With this paper we publish a generative 3D shape and texture model, the Basel face model (BFM), and demonstrate its application to several face recognition task. We improve on previous models by offering higher shape and texture accuracy due to a better scanning device and less correspondence artifacts due to an improved registration algorithm. The same 3D face model can be fit to 2D or 3D images acquired under different situations and with different sensors using an analysis by synthesis method. The resulting model parameters separate pose …
Total citations
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Scholar articles
P Paysan, R Knothe, B Amberg, S Romdhani, T Vetter - 2009 sixth IEEE international conference on advanced …, 2009