Head Pose Estimation Via Probabilistic High-Dimensional Regression

2015 IEEE International Conference on Image Processing (ICIP)(2015)

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摘要
This paper addresses the problem of head pose estimation with three degrees of freedom (pitch, yaw, roll) from a single image. Pose estimation is formulated as a high-dimensional to low-dimensional mixture of linear regression problem. We propose a method that maps HOG-based descriptors, extracted from face bounding boxes, to corresponding head poses. To account for errors in the observed bounding-box position, we learn regression parameters such that a HOG descriptor is mapped onto the union of a head pose and an offset, such that the latter optimally shifts the bounding box towards the actual position of the face in the image. The performance of the proposed method is assessed on publicly available datasets. The experiments that we carried out show that a relatively small number of locally-linear regression functions is sufficient to deal with the non-linear mapping problem at hand. Comparisons with state-of-the-art methods show that our method outperforms several other techniques.
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关键词
head pose estimation,probabilistic high-dimensional regression,three-degree-of-freedom,pitch value,yaw value,roll value,high-dimensional linear regression problem,low-dimensional linear regression problem,HOG-based descriptor mapping,face bounding boxes,bounding-box position,regression parameter learning,publicly available datasets,locally-linear regression functions,nonlinear mapping problem
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