Department of Data Analysis and Artificial Intelligence, Faculty of Computer Science, National Research University Higher School of Economics, 20 Myasnitskaya ulitsa, Moscow 101000, Russia.
Sensors (Basel). 2018 Nov 26;18(12):4146. doi: 10.3390/s18124146.
Several studies have analyzed human gait data obtained from inertial gyroscope and accelerometer sensors mounted on different parts of the body. In this article, we take a step further in gait analysis and provide a methodology for predicting the movements of the legs, which can be applied in prosthesis to imitate the missing part of the leg in walking. In particular, we propose a method, called GaIn, to control non-invasive, robotic, prosthetic legs. GaIn can infer the movements of both missing shanks and feet for humans suffering from double trans-femoral amputation using biologically inspired recurrent neural networks. Predictions are performed for casual walking related activities such as walking, taking stairs, and running based on thigh movement. In our experimental tests, GaIn achieved a 4.55 prediction error for shank movements on average. However, a patient's intention to stand up and sit down cannot be inferred from thigh movements. In fact, intention causes thigh movements while the shanks and feet remain roughly still. The GaIn system can be triggered by thigh muscle activities measured with electromyography (EMG) sensors to make robotic prosthetic legs perform standing up and sitting down actions. The GaIn system has low prediction latency and is fast and computationally inexpensive to be deployed on mobile platforms and portable devices.
已有多项研究对人体惯性陀螺仪和加速度计传感器在身体不同部位采集的步态数据进行了分析。在本文中,我们在步态分析方面更进一步,提出了一种预测腿部运动的方法,该方法可应用于假肢中,以模仿腿部在行走时缺失的部分。具体来说,我们提出了一种名为 GaIn 的方法,用于控制非侵入式、机器人、假肢腿。GaIn 可以使用受生物启发的递归神经网络来推断双侧股骨截肢患者的缺失小腿和脚部的运动。根据大腿运动,预测与日常行走相关的活动,如行走、上下楼梯和跑步。在我们的实验测试中,GaIn 对小腿运动的平均预测误差为 4.55。然而,仅凭大腿运动无法推断患者站立和坐下的意图。实际上,意图会引起大腿运动,而小腿和脚部基本保持静止。GaIn 系统可以通过肌电图(EMG)传感器测量的大腿肌肉活动来触发,从而使机器人假肢腿执行站立和坐下动作。GaIn 系统具有较低的预测延迟,并且速度快、计算成本低,可在移动平台和便携式设备上快速部署。