Wearable sensing and haptic feedback research platform for gait retraining

Junkai Xu, Ung Hee Lee, T. Bao, Yangjian Huang, K. Sienko, P. Shull
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引用次数: 12

Abstract

Gait retraining is an important rehabilitation method for re-establishing health gait patterns resulting from disease or injury. Optical marker-based motion capture systems are effective for sensing but aren't used widely, due to cost and lack of portability. Moreover, to perform gait retraining, feedback is needed in addition to sensing. This paper presents a wearable sensing and haptic feedback research platform for gait retraining. The platform contains eight distributed nodes (Dots) and a central control unit (Hub) that wirelessly connects to the Dots. Each Dot provides 9-axis inertial sensing and can be configured for sensing or/and providing vibrotactile feedback according to movement training requirements. The Hub receives the sensor data, performs algorithm computation and distributes feedback commands based on the feedback strategy. A foot progression angle (FPA) gait retraining task was performed by six healthy older adults. Participants used the wearable system to learn toe-in gait (foot pointing more inward) and toe-out gait (foot pointing more outward) by adjusting their FPA based on haptic cues to fall within the no feedback zone, i.e. the desired range of acceptable FPAs. After gait retraining, FPA during toe-in gait (1.8±5.6 deg) was significantly higher than during baseline walking (−4.3±5.1 deg) (p<0.01) and during toe-out gait (−9.9±3.2 deg) (p<0.01). The no feedback zone was easily found by participants as the percentage of time with no feedback for toe-in gait was 68.3%, and for toe-out gait it was 89.4%. This work demonstrates that the wearable system can be an effective gait retraining research platform.
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步态再训练的可穿戴传感与触觉反馈研究平台
步态再训练是疾病或损伤后重建健康步态模式的重要康复方法。基于光学标记的运动捕捉系统对传感是有效的,但由于成本和缺乏可移植性而没有广泛使用。此外,为了进行步态再训练,除了传感之外,还需要反馈。提出了一种用于步态再训练的可穿戴式传感与触觉反馈研究平台。该平台包含8个分布式节点(Dots)和一个无线连接到Dots的中央控制单元(Hub)。每个Dot提供9轴惯性感应,并可根据运动训练要求配置为感应或/和提供振动触觉反馈。Hub接收传感器数据,执行算法计算,并根据反馈策略分发反馈命令。对6名健康老年人进行足部进展角(FPA)步态再训练任务。参与者使用可穿戴系统,通过根据触觉信号调整他们的FPA,使其落在无反馈区域,即可接受的FPA的期望范围内,来学习脚趾向内(脚更内向)和脚趾向外(脚更外向)的步态。步态再训练后,足尖入步时FPA(1.8±5.6度)显著高于基线步行时(- 4.3±5.1度)(p<0.01)和足尖出步时(- 9.9±3.2度)(p<0.01)。无反馈区域很容易被参与者发现,因为没有反馈的时间百分比在脚趾向内的步态中为68.3%,在脚趾向外的步态中为89.4%。研究结果表明,该可穿戴系统可作为一种有效的步态再训练研究平台。
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