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Estimation of Full-Body Poses Using Only Five Inertial Sensors: An Eager or Lazy Learning Approach?

机译:仅使用五个惯性传感器估算全身姿势:渴望还是懒惰的学习方法?

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摘要

Human movement analysis has become easier with the wide availability of motion capture systems. Inertial sensing has made it possible to capture human motion without external infrastructure, therefore allowing measurements in any environment. As high-quality motion capture data is available in large quantities, this creates possibilities to further simplify hardware setups, by use of data-driven methods to decrease the number of body-worn sensors. In this work, we contribute to this field by analyzing the capabilities of using either artificial neural networks (eager learning) or nearest neighbor search (lazy learning) for such a problem. Sparse orientation features, resulting from sensor fusion of only five inertial measurement units with magnetometers, are mapped to full-body poses. Both eager and lazy learning algorithms are shown to be capable of constructing this mapping. The full-body output poses are visually plausible with an average joint position error of approximately 7 cm, and average joint angle error of 7. Additionally, the effects of magnetic disturbances typical in orientation tracking on the estimation of full-body poses was also investigated, where nearest neighbor search showed better performance for such disturbances.
机译:随着运动捕捉系统的广泛应用,人体运动分析变得更加容易。惯性感应使得无需外部基础设施即可捕获人体运动成为可能,因此可以在任何环境下进行测量。由于可以获取大量高质量的运动捕获数据,因此通过使用数据驱动的方法来减少人体传感器的数量,可以进一步简化硬件设置。在这项工作中,我们通过分析针对此类问题使用人工神经网络(渴望学习)或最近邻居搜索(惰性学习)的功能来为该领域做出贡献。仅有五个惯性测量单元与磁力计的传感器融合所产生的稀疏定向特征被映射到全身姿势。急切学习算法和懒惰学习算法均被证明能够构建此映射。全身输出姿势在视觉上是合理的,平均关节位置误差约为7 cm,平均关节角度误差为7 。此外,还研究了定向跟踪中典型的电磁干扰对人体姿势估计的影响,其中最近邻居搜索显示了针对此类干扰的更好性能。

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