一种鲁棒的基于模型的视频序列三维头部跟踪方法

M. Malciu, F. Prêteux
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引用次数: 75

摘要

我们提出了一种通用的、鲁棒的方法,用于单目和非校准视频序列中基于模型的全局3D头部姿态估计。所提出的方法依赖于整个序列中估计的2D图像特征与通用头部模型的3D对象特征之间的3D/2D匹配。具体来说,它结合了运动和纹理特征的迭代优化过程,基于下坡单纯形算法。基于块匹配过程,在每一帧执行适当的姿态参数初始化,以便考虑大振幅运动。出于同样的原因,我们开发了一种基于非线性光流的插值算法来提高帧率。实验表明,该方法在包括大的头部运动、遮挡、各种头部姿势和光照变化在内的扩展序列中是稳定的。估计精度与头部模型有关,分别采用椭球体模型和自适应综合模型建立了头部模型。该方法具有一定的通用性,可以应用于其他跟踪应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A robust model-based approach for 3D head tracking in video sequences
We present a generic and robust method for model-based global 3D head pose estimation in monocular and non-calibrated video sequences. The proposed method relies on a 3D/2D matching between 2D image features estimated throughout the sequence and 3D object features of a generic head model. Specifically, it combines motion and texture features in an iterative optimization procedure based on the downhill simplex algorithm. A proper initialization of the pose parameters, based on a block matching procedure, is performed at each frame in order to take into account large amplitude motions. For the same reason, we have developed a nonlinear optical flow-based interpolation algorithm for increasing the frame rate. Experiments demonstrate that this method is stable over extended sequences including large head motions, occlusions, various head postures and lighting variations. The estimation accuracy is related to the head model, as established by using an ellipsoidal model and an ad hoc synthesized model. The proposed method is general enough to be applied to other tracking applications.
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