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Subject- and Environment-Based Sensor Variability for Wearable Lower-Limb Assistive Devices

机译:可穿戴式下肢辅助设备的基于受试者和环境的传感器可变性

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摘要

Significant research effort has gone towards the development of powered lower limb prostheses that control power during gait. These devices use forward prediction based on electromyography (EMG), kinetics and kinematics to command the prosthesis which locomotion activity is desired. Unfortunately these predictions can have substantial errors, which can potentially lead to trips or falls. It is hypothesized that one reason for the significant prediction errors in the current control systems for powered lower-limb prostheses is due to the inter- and intra-subject variability of the data sources used for prediction. Environmental data, recorded from a depth sensor worn on a belt, should have less variability across trials and subjects as compared to kinetics, kinematics and EMG data, and thus its addition is proposed. The variability of each data source was analyzed, once normalized, to determine the intra-activity and intra-subject variability for each sensor modality. Then measures of separability, repeatability, clustering and overall desirability were computed. Results showed that combining Vision, EMG, IMU (inertial measurement unit), and Goniometer features yielded the best separability, repeatability, clustering and desirability across subjects and activities. This will likely be useful for future application in a forward predictor, which will incorporate Vision-based environmental data into a forward predictor for powered lower-limb prosthesis and exoskeletons.
机译:大量的研究努力已用于开发在步态中控制力量的下肢动力假肢。这些设备使用基于肌电图(EMG),动力学和运动学的前向预测来命令假体需要运动活动。不幸的是,这些预测可能会有重大错误,有可能导致绊倒或跌倒。假设在动力下肢假体的当前控制系统中,显着的预测误差的原因之一是由于用于预测的数据源在受试者之间和受试者内部的可变性。与动力学,运动学和EMG数据相比,从佩戴在皮带上的深度传感器记录的环境数据在试验和对象之间的变异性应较小,因此建议将其添加。一旦标准化,就分析每个数据源的变异性,以确定每种传感器模态的活动内和受试者内变异性。然后计算可分离性,可重复性,聚类和总体合意性的度量。结果表明,将Vision,EMG,IMU(惯性测量单位)和测角仪功能结合在一起,可以在各个主题和活动之间实现最佳的可分离性,可重复性,聚类和合意性。这对于将来在前向预测器中的应用可能会很有用,它将基于视觉的环境数据合并到前向预测器中,以用于动力式下肢假体和外骨骼。

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