Electrical Engineering Department, Campus of Gijon, University of Oviedo, 33204 Gijón, Spain.
Sensors (Basel). 2022 Aug 4;22(15):5828. doi: 10.3390/s22155828.
The short-term prediction of a person's trajectory during normal walking becomes necessary in many environments shared by humans and robots. Physics-based approaches based on Newton's laws of motion seem best suited for short-term predictions, but the intrinsic properties of human walking conflict with the foundations of the basic kinematical models compromising their performance. In this paper, we propose a short-time prediction method based on gait biomechanics for real-time applications. This method relays on a single biomechanical variable, and it has a low computational burden, turning it into a feasible solution to implement in low-cost portable devices. We evaluate its performance from an experimental benchmark where several subjects walked steadily over straight and curved paths. With this approach, the results indicate a performance good enough to be applicable to a wide range of human-robot interaction applications.
在人类和机器人共享的许多环境中,对一个人在正常行走过程中的轨迹进行短期预测变得非常必要。基于牛顿运动定律的物理方法似乎最适合进行短期预测,但人类行走的内在特性与基本运动学模型的基础相冲突,从而影响了它们的性能。在本文中,我们提出了一种基于步态生物力学的短期预测方法,适用于实时应用。该方法依赖于单个生物力学变量,计算负担低,是在低成本便携式设备中实现的可行解决方案。我们从一个实验基准中评估了它的性能,其中几个受试者在直线路径和曲线路径上稳定行走。通过这种方法,结果表明其性能足以适用于广泛的人机交互应用。