A Quantitative Evaluation of Video-based 3D Person Tracking

A. O. Balan, L. Sigal, Michael J. Black
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引用次数: 191

Abstract

The Bayesian estimation of 3D human motion from video sequences is quantitatively evaluated using synchronized, multi-camera, calibrated video and 3D ground truth poses acquired with a commercial motion capture system. While many methods for human pose estimation and tracking have been proposed, to date there has been no quantitative comparison. Our goal is to evaluate how different design choices influence tracking performance. Toward that end, we independently implemented two fairly standard Bayesian person trackers using two variants of particle filtering and propose an evaluation measure appropriate for assessing the quality of probabilistic tracking methods. In the Bayesian framework we compare various image likelihood functions and prior models of human motion that have been proposed in the literature. Our results suggest that in constrained laboratory environments, current methods perform quite well. Multiple cameras and background subtraction, however, are required to achieve reliable tracking suggesting that many current methods may be inappropriate in more natural settings. We discuss the implications of the study and the directions for future research that it entails
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基于视频的三维人物跟踪的定量评价
利用同步、多摄像机、校准视频和商业动作捕捉系统获得的3D地面真实姿态,定量评估了视频序列中3D人体运动的贝叶斯估计。虽然已经提出了许多人体姿态估计和跟踪的方法,但迄今为止还没有进行定量比较。我们的目标是评估不同的设计选择如何影响跟踪性能。为此,我们使用粒子滤波的两种变体独立实现了两个相当标准的贝叶斯人跟踪器,并提出了适合于评估概率跟踪方法质量的评估度量。在贝叶斯框架中,我们比较了文献中提出的各种图像似然函数和先前的人体运动模型。我们的结果表明,在受限的实验室环境中,目前的方法表现相当好。然而,为了实现可靠的跟踪,需要多个摄像机和背景减法,这表明许多当前的方法可能不适合更自然的环境。我们讨论了研究的意义和未来研究的方向,它需要
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