Gait phase classification for in-home gait assessment

Minxiang Ye, Cheng Yang, V. Stanković, L. Stanković, Samuel Cheng
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引用次数: 10

Abstract

With growing ageing population, acquiring joint measurements with sufficient accuracy for reliable gait assessment is essential. Additionally, the quality of gait analysis relies heavily on accurate feature selection and classification. Sensor-driven and one-camera optical motion capture systems are becoming increasingly popular in the scientific literature due to their portability and cost-efficacy. In this paper, we propose 12 gait parameters to characterise gait patterns and a novel gait-phase classifier, resulting in comparable classification performance with a state-of-the-art multi-sensor optical motion system. Furthermore, a novel multi-channel time series segmentation method is proposed that maximizes the temporal information of gait parameters improving the final classification success rate after gait event reconstruction. The validation, conducted over 126 experiments on 6 healthy volunteers and 9 stroke patients with handlabelled ground truth gait phases, demonstrates high gait classification accuracy.
家用步态评估的步态阶段分类
随着人口老龄化的不断增长,获得足够精确的关节测量以进行可靠的步态评估是必不可少的。此外,步态分析的质量很大程度上依赖于准确的特征选择和分类。传感器驱动和单摄像头光学运动捕捉系统由于其便携性和成本效益在科学文献中越来越受欢迎。在本文中,我们提出了12个步态参数来表征步态模式和一种新的步态相位分类器,从而获得与最先进的多传感器光学运动系统相当的分类性能。此外,提出了一种新的多通道时间序列分割方法,最大限度地利用步态参数的时间信息,提高步态事件重构后的最终分类成功率。在6名健康志愿者和9名中风患者身上进行了126次实验,验证了步态分类的高准确性。
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