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A Practical Gait Feedback Method Based on Wearable Inertial Sensors for a Drop Foot Assistance Device

机译:一种基于可穿戴惯性传感器的滴脚辅助装置的实用步态反馈方法

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摘要

To maximise the efficiency of gait interventions, gait phase and joint kinematics are important for closing the system loop of adaptive robotic control. However, few studies have applied an inertial sensor system including both gait phase detection and joint kinematic measurement. Many algorithms for joint measurement require careful alignment of the inertial measurement unit (IMU) to the body segment. In this paper, we propose a practical gait feedback method, which provides sufficient feedback without requiring precise alignment of the IMUs. The method incorporates a two-layer model to realise simultaneous gait stance and swing phase detection and ankle joint angle measurement. Recognition of gait phases is performed by a high-level probabilistic method using angular rate from the sensor attached to the shank while the ankle angle is calculated using a data fusion algorithm based on the complementary filter and sensor-to-segment calibration. The online performance of the algorithm was experimentally validated when 10 able-bodied participants walked on the treadmill with three different speeds. The outputs were compared to the ones measured by an optical motion analysis system. The results showed that the IMU-based algorithm achieved a good accuracy of the gait phase recognition (above 95%) with a short delay response below 20 ms and accurate angle measurements with root mean square errors below 3.5 degrees compared to the optical reference. It demonstrates that our method can be used to provide gait feedback for the correction of drop foot.
机译:为了最大限度地提高步态干预效率,步态阶段和关节运动学对于关闭自适应机器人控制的系统环路很重要。然而,很少有研究施加了包括步态相位检测和关节运动学测量的惯性传感器系统。用于关节测量的许多算法需要仔细对准惯性测量单元(IMU)到车身段。在本文中,我们提出了一种实用的步态反馈方法,它提供足够的反馈,而无需精确对准IMU。该方法包括双层模型,以实现同时步态姿势和摆动相位检测和踝关节角度测量。通过使用基于互补滤波器和传感器到段校准的数据融合算法计算脚踝角度,通过从附接到柄的传感器的传感器的角速率来执行步态阶段的识别。当10个能够使用三种不同的速度时,当10个能够的参与者走在跑步机上时,算法的在线性能是通过实验验证的。将输出与光学运动分析系统测量的输出进行比较。结果表明,基于IMU的算法在与光学参考相比,具有低于20毫秒的短延迟响应,延迟响应的步态识别(高于95%)的良好精度。它表明,我们的方法可用于提供用于矫正跌幅的步态反馈。

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