Real-time 3D face tracking based on active appearance model constrained by depth data
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摘要
Active Appearance Model (AAM) is an algorithm for fitting a generative model of object shape and appearance to an input image. AAM allows accurate, real-time tracking of human faces in 2D and can be extended to track faces in 3D by constraining its fitting with a linear 3D morphable model. Unfortunately, this AAM-based 3D tracking does not provide adequate accuracy and robustness, as we show in this paper. We introduce a new constraint into AAM fitting that uses depth data from a commodity RGBD camera (Kinect). This addition significantly reduces 3D tracking errors. We also describe how to initialize the 3D morphable face model used in our tracking algorithm by computing its face shape parameters of the user from a batch of tracked frames. The described face tracking algorithm is used in Microsoft's Kinect system.
论文关键词:Face tracking,Active Appearance Models,Morphable models,Fitting,Gradient descent,Kinect
论文评审过程:Received 5 February 2014, Revised 31 May 2014, Accepted 4 August 2014, Available online 10 August 2014.
论文官网地址:https://doi.org/10.1016/j.imavis.2014.08.005