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Robust head tracking using 3D ellipsoidal head model in particle filter

机译:在粒子滤波器中使用3D椭圆头模型进行可靠的头跟踪

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摘要

This paper proposes a real-time 3D head tracking method that can handle large rotation and translation. To achieve this goal, we incorporate the following three approaches into the particle filter. First, we take the 3D ellipsoidal head model to handle the large head rotation more effectively, especially the large rotation around the x-axis (pitch). Second, we take the online appearance model (OAM) that can adapt both the short-term and long-term appearance changes in the appearance model image effectively. Third, we take the adaptive state transition model to track the fast moving 3D heads, where the most plausible state for the next time is estimated by using the motion history model and the particles are distributed near the estimated state. This enables the real-time 3D head tracking by reducing the required number of particles greatly. The experimental results show that (1) the tracking accuracy of the 3D ellipsoidal head model is more precise than that of the 3D cylindrical head model by 15%, (2) the OAM provides more stable tracking than the wandering model, and (3) the adaptive state transition model can track faster moving heads than the zero-velocity model. (c) 2008 Elsevier Ltd. All rights reserved.
机译:本文提出了一种可以处理较大旋转和平移的实时3D头部跟踪方法。为了实现此目标,我们将以下三种方法合并到粒子过滤器中。首先,我们采用3D椭圆头模型来更有效地处理大头旋转,尤其是绕x轴(螺距)的大旋转。其次,我们采用在线外观模型(OAM),该模型可以有效地适应外观模型图像中的短期和长期外观变化。第三,我们采用自适应状态转换模型来跟踪快速移动的3D磁头,其中使用运动历史模型来估计下一次最合理的状态,并将粒子分布在所估计的状态附近。通过大大减少所需的粒子数量,可以实现实时3D头部跟踪。实验结果表明:(1)3D椭圆头模型的跟踪精度比3D圆柱头模型的跟踪精度高15%;(2)OAM比漂移模型更稳定,以及(3)自适应状态转换模型可以比零速度模型跟踪更快的移动磁头。 (c)2008 Elsevier Ltd.保留所有权利。

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