Proceedings Article10.1109/CVPR.2006.13
3D Face Recognition Using 3D Alignment for PCA
T.D. Russ,Chris Bensing Boehnen,T. Peters +2 more
- 17 Jun 2006
- Vol. 2, pp 1391-1398
96
TL;DR: The approach addresses the issue of proper 3D face alignment required by PCA for maximum data compression and good generalization performance for new untrained faces by achieving correspondence of facial points by registering a3D face to a scaled generic 3D reference face and subsequently perform a surface normal search algorithm.
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Abstract: This paper presents a 3D approach for recognizing faces based on Principal Component Analysis (PCA). The approach addresses the issue of proper 3D face alignment required by PCA for maximum data compression and good generalization performance for new untrained faces. This issue has traditionally been addressed by 2D data normalization, a step that eliminates 3D object size information important for the recognition process. We achieve correspondence of facial points by registering a 3D face to a scaled generic 3D reference face and subsequently perform a surface normal search algorithm. 3D scaling of the generic reference face is performed to enable better alignment of facial points while preserving important 3D size information in the input face. The benefits of this approach for 3D face recognition and dimensionality reduction have been demonstrated on components of the Face Recognition Grand Challenge (FRGC) database versions 1 and 2.
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Citations
Three-Dimensional Face Recognition in the Presence of Facial Expressions: An Annotated Deformable Model Approach
Ioannis A. Kakadiaris,G. Passalis,George Toderici,Mohammed N. Murtuza,Yunliang Lu,Nikos Karampatziakis,Theoharis Theoharis +6 more
TL;DR: This paper presents the computational tools and a hardware prototype for 3D face recognition and presents the results on the largest known, and now publicly available, face recognition grand challenge 3D facial database consisting of several thousand scans.
Robust 3D Face Recognition by Local Shape Difference Boosting
TL;DR: A fast posture alignment method which is self-dependent and avoids the registration between an input face against every face in the gallery, and a Signed Shape Difference Map (SSDM) is computed between two aligned 3D faces as a mediate representation for the shape comparison.
A survey of local feature methods for 3D face recognition
TL;DR: This survey presents a state-of-the-art for 3D face recognition using local features, with the main focus being the extraction of these features.
163
Iterative Closest Normal Point for 3D Face Recognition
TL;DR: The iterative closest normal point method for finding the corresponding points between a generic reference face and every input face is introduced, showing that the surface normal vectors of the face at the sampled points contain more discriminatory information than the coordinates of the points.
148
Automatic facial expression recognition on a single 3D face by exploring shape deformation
Boqing Gong,Yueming Wang,Jianzhuang Liu,Xiaoou Tang +3 more
- 19 Oct 2009
TL;DR: Unlike previous methods which recognize a facial expression with the help of manually labeled key points and/or a neutral face, this method works on a single 3D face without any manual assistance.
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