基于无标记动作捕捉传感器的人体步态分类系统

IF 1.7 Q2 REHABILITATION
K. Madhana, L. Jayashree, K. Perumal
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引用次数: 0

摘要

目的人体步态分析是基于肌肉、骨骼、神经和呼吸系统的重要组成部分。步态分析被广泛采用,以帮助患者增加社区参与和独立生活。设计/方法/方法本文介绍了一种利用无标记3D运动捕捉设备对人体异常步态进行分类的系统。本研究旨在检测和估计不同组的步态障碍受试者的三维步态分析获得的时空和运动学参数,并将这些参数与健康受试者的参数进行比较,以解释步态模式。分类是基于数学模型,根据步态参数的偏差区分正常和异常的步态模式。通过Bland和Altman方法,使用95%的一致性限来检查对照组和每个疾病组的步态测量之间的差异。散点图显示帕金森和共济失调步态的步态变化以及偏瘫步态的膝关节角度变化,与健康对照相比。为了证明Kinect摄像头的有效性,在Kinect和基于惯性的步态测试之间检测到显著的相关性。原创性/价值用于步态评估的各种技术通常价格很高,并且存在组件障碍等局限性。结果表明,基于kinect的步态评估技术可以作为临床环境中昂贵的基础设施步态实验室测试的低成本、低侵入性替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
System for classification of human gaits using markerless motion capture sensor
PurposeHuman gait analysis is based on a significant part of the musculoskeletal, nervous and respiratory systems. Gait analysis is widely adopted to help patients increase community involvement and independent living.Design/methodology/approachThis paper presents a system for the classification of abnormal human gaits using a Markerless 3D Motion Capture device. This study aims at examining and estimating the spatiotemporal and kinematic parameters obtained by 3D gait analysis in diverse groups of gait-impaired subjects and compares the parameters with that of healthy participants to interpret the gait patterns.FindingsThe classification is based on mathematical models that distinguish between normal and abnormal gait patterns depending on the deviations in the gait parameters. The difference between the gait measures of the control and each disease group was examined using 95% limits of agreement by the Bland and Altman method. The scatter plots demonstrated gait variability in Parkinsonian and ataxia gait and knee joint angle variation in hemiplegic gait when compared with those of healthy controls. To prove the validity of the Kinect camera, significant correlations were detected between Kinect- and inertial-based gait tests.Originality/valueThe various techniques used for gait assessments are often high in price and have existing limitations like the hindrance of components. The results suggest that the Kinect-based gait assessment techniques can be used as a low-cost, less-intrusive alternative to expensive infrastructure gait lab tests in the clinical environment.
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来源期刊
CiteScore
4.10
自引率
9.10%
发文量
21
期刊介绍: The Journal of Enabling Technologies (JET) seeks to provide a strong, insightful, international, and multi-disciplinary evidence-base in health, social care, and education. This focus is applied to how technologies can be enabling for children, young people and adults in varied and different aspects of their lives. The focus remains firmly on reporting innovations around how technologies are used and evaluated in practice, and the impact that they have on the people using them. In addition, the journal has a keen focus on drawing out practical implications for users and how/why technology may have a positive impact. This includes messages for users, practitioners, researchers, stakeholders and caregivers (in the broadest sense). The impact of research in this arena is vital and therefore we are committed to publishing work that helps draw this out; thus providing implications for practice. JET aims to raise awareness of available and developing technologies and their uses in health, social care and education for a wide and varied readership. The areas in which technologies can be enabling for the scope of JET include, but are not limited to: Communication and interaction, Learning, Independence and autonomy, Identity and culture, Safety, Health, Care and support, Wellbeing, Quality of life, Access to services.
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