Automatic scalable face model design for 2D model-based video coding
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摘要
Scalable low bit-rate video coding is vital for the transmission of video signals over wireless channels. A scalable model-based video coding scheme is proposed in this paper to achieve this. This paper mainly addresses automatic scalable face model design. Firstly, a robust and adaptive face segmentation method is proposed, which is based on piecewise skin-colour distributions. 43 million skin pixels from 900 images are used to train the skin-colour model, which can identify skin-colour pixels reliably under different lighting conditions. Next, reliable algorithms are proposed for detecting the eyes, mouth and chin that are used to verify the face candidatures. Then, based on the detected facial features and human face muscular distributions, a heuristic scalable face model is designed to represent the rigid and non-rigid motion of head and facial features. A novel motion estimation algorithm is proposed to estimate the object model motion hierarchically. Experimental results are provided to illustrate the performance of the proposed algorithms for facial feature detection and the accuracy of the designed scalable face model for representing face motion.
论文关键词:Face detection,Facial feature extraction,Scalable face modelling,Model-based video coding,Scalable compression
论文评审过程:Received 14 August 2003, Revised 14 January 2004, Accepted 6 February 2004, Available online 26 March 2004.
论文官网地址:https://doi.org/10.1016/j.image.2004.02.003