基于优化DAG-SVM的外骨骼机器人步态相位检测

Shuaishuai Hu, Jianbin Zheng, Liping Huang
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摘要

提出了一种基于加权欧氏距离优化的有向无环图支持向量机(DAG-SVM)步态相位检测方法。将一个步态周期划分为六个步态阶段,包括三个站立阶段和三个摇摆阶段。用足跟、球压力、膝关节和髋部角度数据融合作为输入信号。在计算类别样本之间的欧氏距离时,根据待分类步态阶段所属的类别,对压力数据和角度数据设置不同的系数。得到加权欧氏距离,并根据计算结果对DAG-SVM拓扑进行优化,将其应用于步态相位检测。该方法可以有效地解决DAG-SVM的结构偏好问题。通过实验对比,该方法比随机结构的DAG-SVM具有更高的检测精度。
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Gait Phase Detection of Exoskeleton Robot Based on Optimized DAG-SVM
This paper proposes a gait phase detection method based on directed acyclic graph support vector machines (DAG-SVM) using weighted Euclidean distance optimization. Divide a gait cycle into six gait phases, including three stance phases and three swing phases. Heel, ball pressure, and knee and hip angle data fusion were used as input signals. When calculating the Euclidean distance between category samples, different coefficients are set for pressure data and angle data according to the category to which the gait phase to be classified belongs. The weighted Euclidean distance is obtained, and the topology of DAG-SVM is optimized according to the calculation results, so that it is applied to gait phase detection. This method can effectively solve the structural preference problem of DAG-SVM. Through experimental comparison, this method has higher detection accuracy than DAG-SVM with random structure.
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