Detection of Gait Modes Using an Artificial Neural Network during Walking with a Powered Ankle-Foot Orthosis

Mazharul Islam, E. Hsiao-Wecksler
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引用次数: 22

Abstract

This paper presents an algorithm, for use with a Portable Powered Ankle-Foot Orthosis (i.e., PPAFO) that can automatically detect changes in gait modes (level ground, ascent and descent of stairs or ramps), thus allowing for appropriate ankle actuation control during swing phase. An artificial neural network (ANN) algorithm used input signals from an inertial measurement unit and foot switches, that is, vertical velocity and segment angle of the foot. Output from the ANN was filtered and adjusted to generate a final data set used to classify different gait modes. Five healthy male subjects walked with the PPAFO on the right leg for two test scenarios (walking over level ground and up and down stairs or a ramp; three trials per scenario). Success rate was quantified by the number of correctly classified steps with respect to the total number of steps. The results indicated that the proposed algorithm's success rate was high (99.3%, 100%, and 98.3% for level, ascent, and descent modes in the stairs scenario, respectively; 98.9%, 97.8%, and 100% in the ramp scenario). The proposed algorithm continuously detected each step's gait mode with faster timing and higher accuracy compared to a previous algorithm that used a decision tree based on maximizing the reliability of the mode recognition.
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利用人工神经网络检测动力踝足矫形器行走时的步态模式
本文提出了一种用于便携式供电踝足矫形器(即PPAFO)的算法,该算法可以自动检测步态模式的变化(平地,楼梯或坡道的上升和下降),从而允许在摆动阶段进行适当的踝关节驱动控制。人工神经网络(ANN)算法利用惯性测量单元和足部开关的输入信号,即足部的垂直速度和分段角。对人工神经网络的输出进行过滤和调整,以生成用于对不同步态模式进行分类的最终数据集。五名健康男性受试者在两种测试场景中右腿佩戴PPAFO行走(在平地上行走,上下楼梯或斜坡;每个场景三次试验)。成功率通过正确分类的步骤数相对于总步骤数来量化。结果表明,该算法在楼梯场景下的水平模式、上升模式和下降模式下的成功率分别为99.3%、100%和98.3%;98.9%、97.8%和100%(斜坡场景)。与以往基于模式识别可靠性最大化的决策树算法相比,该算法以更快的时序和更高的精度连续检测每步的步态模式。
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