Abstract

When a face in an image is considerably occluded, existing local search and global fitting methods often cannot find the facial features due to failures in the local facial feature detectors or the fitting limitations of appearance modeling. To solve these problems, we propose a new face alignment method that combines the local search and global fitting methods, where local misalignments in the local search method are restricted by holistic appearance fitting in the global fitting method and the divergent or shrinking alignments in the global fitting method are avoided by the restricting local movements in the local search method. The proposed alignment method consists of two stages: the initialization stage detects the face, estimates the facial pose and obtains the initial facial features by locating a pose-specific mean shape on the detected face; the optimization stage then obtains the facial features by updating the parameter set from the combined Hessian matrix and the combined gradient vector. We also extend the proposed face alignment to face tracking by adding a template image that is warped from the facial features obtained in the previous frame. In the experiments, the proposed method yields more accurate and stable face alignment or tracking under heavy occlusion and pose variation than the existing methods.

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