利用OpenPose模块采集的骨骼数据中膝关节角度信号进行足尖和正常步态的区分

Shahzad Moghimifar, F. Farokhi
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引用次数: 0

摘要

背景:本文提出了一种基于OpenPose模块的人体步态识别新方法。建议的技术强调检测特定的不常见步态,如脚尖。方法:为此,采用OpenPose模块提取骨骼和关节,利用膝关节信号获取直线行走步态。此外,通过动态时间规整算法评估检测到的步态与正常(作为参考)步态之间的相似性。结果:利用算法输出、归一化因子和输入与参考信号的非归一化距离对正常步态和脚尖步态进行分类。选择两个特征作为最重要的特征进行分类。该方法在70个人中进行了测试,在踮脚走路和正常走路之间,准确率达到92%。结论:与参考测量值的强相关性支持推荐的估计脚尖步态的方法。步态中的膝关节角度分析可以被认为是其他行走障碍的标识符。上述差异可能是每种行走疾病的特定标识符。因此,目前的研究结果反映了建议的方法用于识别其他行走障碍的潜力。此外,步行评估可以通过获得相似的典型步态来完成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distinguishing between Tip-Toe and Normal Gaits using Knee Angle Signal from the Skeleton Data Gathered by using OpenPose Module
Background: This article offers a novel method for human gait recognition with OpenPose Module. The suggested technique emphasizes the detection of specific uncommon gait like tiptoe. Methods: For this purpose, an OpenPose module was employed to extract skeleton and joints, and the gaits in straight walking were obtained by using knee signal. Additionally, the similarity between the detected and normal (as reference) gaits was assessed with a dynamic time warping algorithm. Resultss: The algorithm outputs, normalizing factor, and unnormalized distance between input and reference signals were utilized to classify the normal and tiptoe gaits. Two features were selected as the most important features for classification. The proposed approach was tested among 70 individuals, which reached an accuracy of 92% between tiptoe and normal walking. Conclusions: The strong correlations with reference measurements support the recommended method for estimating tiptoe gait. The knee angle analysis during gait can be considered an identifier in other walking disorders. The mentioned difference may be a particular identifier for each walking disease. Accordingly, the present study results reflected the potential of the suggested approach to be used in identifying other walking disorders. Besides, walking evaluation can be done by getting similar to a typical gait.
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