Martinez-Hernandez Uriel, Awad Mohammed I, Mahmood Imran, Dehghani-Sanij Abbas A
IEEE Int Conf Rehabil Robot. 2017 Jul;2017:13-18. doi: 10.1109/ICORR.2017.8009214.
In this paper, a robust probabilistic formulation for prediction of gait events from human walking activities using wearable sensors is presented. This approach combines the output from a Bayesian perception system with observations from actions and decisions made over time. The perception system makes decisions about the current gait events, while observations from decisions and actions allow to predict the most probable gait event during walking activities. Furthermore, our proposed method is capable to evaluate the accuracy of its predictions, which permits to obtain a better performance and trade-off between accuracy and speed. In our work, we use data from wearable inertial measurement sensors attached to the thigh, shank and foot of human participants. The proposed perception system is validated with multiple experiments for recognition and prediction of gait events using angular velocity data from three walking activities; level-ground, ramp ascent and ramp descent. The results show that our method is fast, accurate and capable to evaluate and adapt its own performance. Overall, our Bayesian perception system demonstrates to be a suitable high-level method for the development of reliable and intelligent assistive and rehabilitation robots.
本文提出了一种稳健的概率公式,用于使用可穿戴传感器从人类行走活动中预测步态事件。该方法将贝叶斯感知系统的输出与随时间做出的动作和决策的观察结果相结合。感知系统对当前的步态事件做出决策,而来自决策和动作的观察结果则有助于预测行走活动中最可能的步态事件。此外,我们提出的方法能够评估其预测的准确性,从而在准确性和速度之间获得更好的性能和权衡。在我们的工作中,我们使用了附着在人类参与者大腿、小腿和脚部的可穿戴惯性测量传感器的数据。所提出的感知系统通过多个实验进行了验证,这些实验使用来自三种行走活动(平地行走、斜坡上升和斜坡下降)的角速度数据来识别和预测步态事件。结果表明,我们的方法快速、准确,并且能够评估和调整自身性能。总体而言,我们的贝叶斯感知系统证明是一种适用于开发可靠且智能的辅助和康复机器人的高级方法。