Adaptive Lower-Limb Prosthetic Control: Towards Personalized Intent Recognition & Context Estimation

C. Johnson, J. Cho, Jairo Maldonado-Contreras, S. Chaluvadi, Aaron J. Young
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Abstract

Historical advancements in lower-limb prostheses have reflected the challenges of diverse anthropomorphic biomechanics, limiting intelligent control systems from being implemented and reflecting true user intent. With recent advancements in machine learning (ML), however, this notion is being challenged. In transfemoral-powered prostheses, time series information has been used to infer context (slope angle and walking speed) and intent (ambulation mode) and scale torque assistance accordingly in real time. In this study, we build off this work by proposing and validating a real-time framework for adaptive walking speed context estimation. Our system makes use of the general similarity in human gait patterns and iterates subject-independent ML models used for prediction towards subject-dependent models by method of batched retrospective labeling and retraining. Offline validation for walking speed estimation has been completed using seven amputee subjects' data, showing an average subject-independent MAE of 0.063 being reduced to 0.043 m/s, a 31.7% improvement. In addition, we discuss and present preliminary results for walking speed estimation and several alternative methods of retrospective labeling.
自适应下肢假肢控制:迈向个性化意图识别与情境估计
下肢假肢的历史进步反映了各种拟人化生物力学的挑战,限制了智能控制系统的实施和反映真实的用户意图。然而,随着最近机器学习(ML)的进步,这一概念正在受到挑战。在经股动力假肢中,时间序列信息被用于推断上下文(斜坡角度和行走速度)和意图(行走模式),并相应地实时缩放扭矩辅助。在这项研究中,我们通过提出和验证一个自适应步行速度上下文估计的实时框架来建立这项工作。我们的系统利用人类步态模式的一般相似性,并通过批量回顾性标记和再训练的方法迭代用于预测的独立于主题的ML模型到依赖于主题的模型。使用7名截肢者的数据完成了对步行速度估计的离线验证,结果显示,平均受试者独立MAE从0.063降低到0.043 m/s,提高了31.7%。此外,我们讨论并提出了步行速度估计的初步结果和几种回顾性标记的替代方法。
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