基于下肢运动状态的地面摄动检测。

Maria T Tagliaferri, Leonardo Campeggi, Owen N Beck, Inseung Kang
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引用次数: 0

摘要

由于对平衡障碍的生理反应延迟,在日常行走活动中跌倒是老年人受伤的主要原因。下肢外骨骼有可能通过在使用者之前检测并对扰动做出反应来减轻跌倒事故。尽管通常使用的是摄动检测的标准度量,全身角动量,由于计算延迟和额外的调谐,不太适合外骨骼应用。为了解决这个问题,我们开发了一种新的地面摄动探测器,使用运动期间的下肢运动学状态。为了识别扰动,我们跟踪了运动状态与其名义稳态轨迹的偏差。采用数据驱动的方法,我们利用开源的地面扰动生物力学数据集优化了探测器。9个受试者的交叉验证表明,我们的模型区分受干扰和未受干扰的步态周期的准确率为95.5%,步态周期内的延迟仅为33.1%,检测准确率比基准测试高出49.4%。我们的研究结果为我们的探测器及其在增强机器人辅助外骨骼的可控性方面的潜在应用提供了令人兴奋的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ground Perturbation Detection via Lower-Limb Kinematic States During Locomotion.

Falls during daily ambulation activities are a leading cause of injury in older adults due to delayed physiological responses to disturbances of balance. Lower-limb exoskeletons have the potential to mitigate fall incidents by detecting and reacting to perturbations before the user. Although commonly used, the standard metric for perturbation detection, whole-body angular momentum, is poorly suited for exoskeleton applications due to computational delays and additional tunings. To address this, we developed a novel ground perturbation detector using lower-limb kinematic states during locomotion. To identify perturbations, we tracked deviations in the kinematic states from their nominal steady-state trajectories. Using a data-driven approach, we optimized our detector with an open-source ground perturbation biomechanics dataset. A nine-subject cross-validation demonstrated that our model distinguished perturbed from unperturbed gait cycles with 95.5% accuracy and only a delay of 33.1% within the gait cycle, outperforming the benchmark by 49.4% in detection accuracy. The results of our study offer exciting promise for our detector and its potential utility to enhance the controllability of robotic assistive exoskeletons.

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