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Analyzing human gait and posture by combining feature selection and kernel methods

机译:结合特征选择和核方法来分析人的步态和姿势

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摘要

This paper evaluates a set of computational algorithms for the automatic estimation of human postures and gait properties from signals provided by an inertial body sensor. The use of a single sensor device imposes limitations for the automatic estimation of relevant properties, like step length and gait velocity, as well as for the detection of standard postures like sitting or standing. Moreover, the exact location and orientation of the sensor are also a common restriction that is relaxed in this study.Based on accelerations provided by a sensor, known as the '9× 2’,three approaches are presented extracting kinematic information from the user motion and posture. First, a two-phases procedure implementing feature extraction and support vector machine based classification for daily living activity monitoring is presented. Second, support vector regression is applied on heuristically extracted features for the automatic computation of spatiotemporal properties during gait. Finally, sensor information is interpreted as an observation of a particular trajectory of the human gait dynamical system, from which a reconstruction space is obtained, and then transformed using standard principal components analysis, finally support vector regression is used for prediction.Daily living activities are detected and spatiotemporal parameters of human gait are estimated using methods sharing a common structure based on feature extraction and kernel methods. The approaches presented are susceptible to be used for medical purposes.
机译:本文评估了一组计算算法,用于根据惯性人体传感器提供的信号自动估算人体姿势和步态。单个传感器设备的使用对自动估计相关属性(例如步长和步态速度)以及检测标准姿势(例如坐着或站着)施加了限制。此外,传感器的精确位置和方向也是本研究中放松的一个普遍限制。基于传感器提供的加速度,即“ 9×2”,提出了三种方法来从用户运动中提取运动信息和姿势。首先,提出了一个分为两阶段的过程,该过程实现了基于特征的提取和基于支持向量机的日常生活活动监控分类。其次,将支持向量回归应用于启发式提取的特征,以便在步态期间自动计算时空特性。最后,将传感器信息解释为对人体步态动力学系统特定轨迹的观察,从中获得重构空间,然后使用标准主成分分析对其进行转换,最后将支持向量回归用于预测。使用基于特征提取和核方法共享共同结构的方法,估计人的步态检测到的时空参数。提出的方法易于用于医学目的。

著录项

  • 来源
    《Neurocomputing》 |2011年第16期|p.2665-2674|共10页
  • 作者单位

    CETpD - Technical Research Centre for Dependency Care and Autonomous Living. Vilanova i la Geltru, Barcelona, Spain FHCSAA - Sant Antoni Abat Hospital, Spain;

    rnCETpD - Technical Research Centre for Dependency Care and Autonomous Living. Vilanova i la Geltru, Barcelona, Spain UPC - Technical University of Catalonia, Spain;

    rnCETpD - Technical Research Centre for Dependency Care and Autonomous Living. Vilanova i la Geltru, Barcelona, Spain FHCSAA - Sant Antoni Abat Hospital, Spain;

    rnCETpD - Technical Research Centre for Dependency Care and Autonomous Living. Vilanova i la Geltru, Barcelona, Spain UPC - Technical University of Catalonia, Spain;

    rnCETpD - Technical Research Centre for Dependency Care and Autonomous Living. Vilanova i la Geltru, Barcelona, Spain UPC - Technical University of Catalonia, Spain;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    human gait and posture detection; inertial body sensor; kernel methods application; time series analysis;

    机译:步态和姿势检测;惯性传感器内核方法应用;时间序列分析;
  • 入库时间 2022-08-18 02:08:15

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