3D facial landmark detection under large yaw and expression variations.

IEEE Transactions on Pattern Analysis and Machine Intelligence(2013)

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摘要
A 3D landmark detection method for 3D facial scans is presented and thoroughly evaluated. The main contribution of the presented method is the automatic and pose-invariant detection of landmarks on 3D facial scans under large yaw variations (that often result in missing facial data), and its robustness against large facial expressions. Three-dimensional information is exploited by using 3D local shape descriptors to extract candidate landmark points. The shape descriptors include the shape index, a continuous map of principal curvature values of a 3D object's surface, and spin images, local descriptors of the object's 3D point distribution. The candidate landmarks are identified and labeled by matching them with a Facial Landmark Model (FLM) of facial anatomical landmarks. The presented method is extensively evaluated against a variety of 3D facial databases and achieves state-of-the-art accuracy (4.5-6.3 mm mean landmark localization error), considerably outperforming previous methods, even when tested with the most challenging data.
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关键词
3d local shape descriptor,candidate landmark point,spin images,principal curvature value,image matching,shape recognition,face recognition,facial databases,pose-invariant detection,face models,3d object surface,3d facial scan,local descriptors,landmark detection method,candidate landmark,large facial expression,flm,automatic detection,landmark detection,feature extraction,facial landmark detection,large yaw variation,missing facial data,expression variation,facial scan,object detection,facial anatomical landmark,large yaw,facial landmark model,shape index,3d point distribution,expression variations,landmark localization error,3d facial landmark detection,biometric identification,face,algorithms,indexes,shape
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