Real-time Intent Recognition for a Powered Knee and Ankle Transfemoral Prosthesis

H. A. Varol, M. Goldfarb
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引用次数: 31

Abstract

This paper describes a real-time gait intent recognition approach for use in controlling a fully powered transfemoral prosthesis. Rather than utilize an "echo control" as proposed by others, which requires instrumentation of the sound-side leg, the proposed approach infers user intent based on the characteristic shape of the force and moment vector of interaction between the user and prosthesis. The real-time intent recognition approach utilizes a K-nearest neighbor algorithm with majority voting and threshold biasing schemes to increase its robustness. The ability of the approach to recognize in real time a person's intent to stand or walk at one of three different speeds is demonstrated on measured biomechanics data.
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动力膝关节和踝关节经股假体的实时意图识别
本文描述了一种用于控制全动力股骨假体的实时步态意图识别方法。与其使用其他人提出的“回声控制”,这需要声音侧腿的仪器,该方法根据力的特征形状和用户与假肢之间交互的力矩矢量来推断用户意图。实时意图识别方法采用k近邻算法,结合多数投票和阈值偏置方案来提高其鲁棒性。测量的生物力学数据表明,这种方法能够实时识别一个人以三种不同速度站立或行走的意图。
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