3D Facial feature location with spin images

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[1] Conde, Cristina
[2] Cipolla, Roberto
[3] Rodríguez-Aragón, Licesio J.
[4] Serrano, Ángel
[5] Cabello, Enrique
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Conde, C. (cristina.conde@urjc.es) | / IAPR TC-8; MVA Conference Committee; Natl. Inst. Adv. Ind. Sci. Technol. (AIST)卷 / Machine Vision Applications, MVA期
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This paper shows an original 3D facial feature localization method. The localization of feature points in the face is a relevant step that allows the normalization of the data in size and orientation. This stage is essential previous to a range data calculation or a verification process. The localization procedure proposed is based on both, clustering techniques over discrete curvatures calculated, and Spin Images as a global registration method. This method has been tested with a 3D Face Database acquired by a laser scanner in several conditions of position and gesture. The aim is to find three specific feature points: nose-tip and left eye and right eye inside corners. Results show a success rate of 100% and a low computation time allowing the system to work in real time. Copyright © 2005 by MVA Conference Committee.
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