School of Biomedical Engineering, Health Science Center, Shenzhen University, Shenzhen 518056, China.
Zhejiang Provincial Hospital of Traditional Clinical Medical, Hangzhou 310006, China.
J Healthc Eng. 2020 Jul 23;2020:8024789. doi: 10.1155/2020/8024789. eCollection 2020.
Recently, computer vision and deep learning technology has been applied in various gait rehabilitation researches. Considering the long short-term memory (LSTM) network has been proved an excellent performance in learn sequence feature representations, we proposed a lower limb joint trajectory prediction method based on LSTM for conducting active rehabilitation on a rehabilitation robotic system. Our approach based on synergy theory exploits that the follow-up lower limb joint trajectory, i.e. limb intention, could be generated by joint angles of the previous swing process of upper limb which were acquired from Kinect platform, an advanced computer vision platform for motion tracking. A customize Kinect-Treadmill data acquisition platform was built for this study. With this platform, data acquisition on ten healthy subjects is processed in four different walking speeds to acquire the joint angles calculated by Kinect visual signals of upper and lower limb swing. Then, the angles of hip and knee in one side which were presented as lower limb intentions are predicted by the fore angles of the elbow and shoulder on the opposite side via a trained LSTM model. The results indicate that the trained LSTM model has a better estimation of predicting the lower limb intentions, and the feasibility of Kinect visual signals has been validated as well.
最近,计算机视觉和深度学习技术已经应用于各种步态康复研究中。考虑到长短期记忆 (LSTM) 网络在学习序列特征表示方面表现出色,我们提出了一种基于 LSTM 的下肢关节轨迹预测方法,用于在康复机器人系统上进行主动康复。我们的方法基于协同理论,利用从 Kinect 平台(一种用于运动跟踪的先进计算机视觉平台)获取的上肢前摆过程中的关节角度来生成后续的下肢关节轨迹,即肢体意图。为此研究构建了一个定制的 Kinect-跑步机数据采集平台。通过该平台,在四种不同的步行速度下对 10 名健康受试者进行数据采集,以获取由 Kinect 视觉信号计算得出的上下肢摆动的关节角度。然后,通过训练有素的 LSTM 模型,利用对侧肘和肩的前角预测单侧的髋关节和膝关节的角度,这些角度被表示为下肢意图。结果表明,经过训练的 LSTM 模型在预测下肢意图方面具有更好的估计能力,同时也验证了 Kinect 视觉信号的可行性。