论文标题

对人类动态的弱监督学习

Weakly-supervised Learning of Human Dynamics

论文作者

Zell, Petrissa, Rosenhahn, Bodo, Wandt, Bastian

论文摘要

本文提出了一个弱监督的学习框架,用于从人类运动中估算动力学估计。尽管有许多解决方案可以捕获纯人类运动,但它们的数据不足以分析运动的质量和效率。取而代之的是,需要考虑推动人类运动的力量和力矩。由于记录动力学是一项费力的任务,需要昂贵的传感器和复杂的耗时的优化,因此与人类运动数据集相比,动态数据集很小,并且很少公开。所提出的方法利用了易于获得的运动数据,该数据能够在小动态集和弱监督的域转移上进行弱监督的学习。我们的方法包括在端到端训练期间用于前进和反向动态的新型神经网络(NN)层。在此基础上,可以最大程度地减少纯运动数据之间的环状损失,即在训练过程中不需要地面真相和力矩。所提出的方法在地面反应力,地面反应力矩和关节扭矩回归方面实现了最先进的方法,并能够在大幅降低的集合上保持良好的性能。

This paper proposes a weakly-supervised learning framework for dynamics estimation from human motion. Although there are many solutions to capture pure human motion readily available, their data is not sufficient to analyze quality and efficiency of movements. Instead, the forces and moments driving human motion (the dynamics) need to be considered. Since recording dynamics is a laborious task that requires expensive sensors and complex, time-consuming optimization, dynamics data sets are small compared to human motion data sets and are rarely made public. The proposed approach takes advantage of easily obtainable motion data which enables weakly-supervised learning on small dynamics sets and weakly-supervised domain transfer. Our method includes novel neural network (NN) layers for forward and inverse dynamics during end-to-end training. On this basis, a cyclic loss between pure motion data can be minimized, i.e. no ground truth forces and moments are required during training. The proposed method achieves state-of-the-art results in terms of ground reaction force, ground reaction moment and joint torque regression and is able to maintain good performance on substantially reduced sets.

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