3D shape descriptor based facial landmark detection: A machine learning approach Reihaneh Rostami, Zeyun Yu Computer Science Department University of Wisconsin.

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Presentation transcript:

3D shape descriptor based facial landmark detection: A machine learning approach Reihaneh Rostami, Zeyun Yu Computer Science Department University of Wisconsin – Milwaukee Objective 3D Facial Landmark Detection (FLD): the process of detecting keypoints on 3D face models A combination of knowledge-driven and data-driven approaches was used Located landmarks are used for point-to-point correspondence 3D face reconstruction Face registration 3D face morphing and animation Various medical applications such as diagnosis of craniofacial disorders

Approach

Results