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Temporal motion models for monocular and multiview 3D human body tracking

机译:用于单眼和多视图3D人体跟踪的时间运动模型

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We explore an approach to 3D people tracking with learned motion models and deterministic optimization. The tracking problem is formulated as the minimization of a differentiable criterion whose differential structure is rich enough for optimization to be accomplished via hill-climbing. This avoids the computational expense of Monte Carlo methods, while yielding good results under challenging conditions. To demonstrate the generality of the approach we show that we can learn and track cyclic motions such as walking and running, as well as acyclic motions such as a golf swing. We also show results from both monocular and multi-camera tracking. Finally, we provide results with a motion model learned from multiple activities, and show how this models might be used for recognition. (c) 2006 Elsevier Inc. All rights reserved.
机译:我们探索一种通过学习的运动模型和确定性优化来跟踪3D人的方法。跟踪问题被表述为可微分准则的最小化,该可微分准则的差分结构足够丰富,可以通过爬山来实现优化。这避免了蒙特卡洛方法的计算开销,同时在具有挑战性的条件下产生了良好的结果。为了证明这种方法的通用性,我们表明我们可以学习和跟踪诸如步行和跑步之类的周期性运动以及诸如高尔夫挥杆之类的非周期性运动。我们还显示了单眼和多摄像机跟踪的结果。最后,我们提供了从多个活动中学到的运动模型的结果,并展示了该模型如何用于识别。 (c)2006 Elsevier Inc.保留所有权利。

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