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Accurate Human Motion Capture Using an Ergonomics-Based Anthropometric Human Model

机译:使用基于人体工程学的人体测量人体模型进行准确的人体动作捕捉

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In this paper we present our work on markerless model-based 3D human motion capture using multiple cameras. We use an industry proven anthropometric human model that was modeled taking ergonomic considerations into account. The outer surface consists of a precise yet compact 3D surface mesh that is mostly rigid on body part level apart from some small but important torsion deformations. Benefits are the ability to capture a great amount of possible human appearances with high accuracy while still having a simple to use and computationally efficient model. We have introduced special optimizations such as caching into the model to improve its performance in tracking applications. Available force and comfort measures within the model provide further opportunities for future research. 3D articulated pose estimation is performed in a Bayesian framework, using a set of hierarchically coupled local particle filters for tracking. This makes it possible to sample efficiently from the high dimensional space of articulated human poses without constraining the allowed movements. Sequences of tracked upper-body as well as full-body motions captured by three cameras show promising results. Despite the high dimensionality of our model (51 DOF) we succeed at tracking using only silhouette overlap as weighting function due to the precise outer appearance of our model and the hierarchical decomposition.
机译:在本文中,我们介绍了我们使用多台摄像机进行的基于无标记模型的3D人体运动捕捉的工作。我们使用经过行业验证的人体测量人体模型,该模型是在考虑人体工程学因素的基础上进行建模的。外表面由精确而紧凑的3D表面网格组成,除了一些较小但重要的扭转变形外,该网格在主体部位水平上几乎是刚性的。好处是能够以高精度捕获大量可能的人类外观,同时仍具有易于使用和计算效率高的模型。我们在模型中引入了特殊的优化,例如缓存,以提高其在跟踪应用程序中的性能。模型中可用的力和舒适度度量为将来的研究提供了更多机会。使用一组分层耦合的局部粒子滤波器进行跟踪,在贝叶斯框架中执行3D关节姿态估计。这使得可以从关节运动的人体姿势的高维空间有效采样,而不会限制允许的运动。由三个摄像机捕获的跟踪的上半身和全身运动的序列显示出令人鼓舞的结果。尽管我们的模型具有很高的维度(51 DOF),但由于模型的精确外观和层次分解,我们仅使用轮廓重叠作为加权函数成功进行了跟踪。

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