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Real-Time Data-Driven Gait Phase Detection Using Infinite Gaussian Mixture Model and Parallel Particle Filter

机译:使用无限高斯混合模型和平行粒子滤波器的实时数据驱动的步态相位检测

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The world is experiencing an unprecedented, enduring, and pervasive aging process. With more people who need walking assistance, the demand for gait rehabilitation has increased rapidly over the years. Effective gait rehabilitation requires a comprehensive gait analysis, in which gait phase detection plays an important role. Although many specialized sensing systems have been developed for gait monitoring, most existing gait phase detection algorithms rely on significant input from medical professionals, which are subjective, manual and inaccurate. To address these problems, this paper presents a datadriven approach for real-time gait phase detection. The approach combines an infinite Gaussian mixture model (IGMM) to classify different gait phases based on the ground contact force (GCF) measurement, and a parallel particle filter to estimate and update the model parameters. Effective particle sharing mechanisms are further designed to distribute particles among different working nodes judiciously and thus strike a good balance between computational overhead and estimation accuracy. The proposed algorithm is implemented in our gait monitoring and analysis platform developed on Microsoft Azure, and examined using the data trace collected from a healthy human subject. The algorithm effectiveness is validated through extensive experiments.
机译:世界正在经历一场前所未有的,持久的和普遍的老龄化进程。随着越来越多的人谁需要行走辅助,步态康复的需求在过去几年增长迅速。有效的步态康复需要一个全面的步态分析,在这种步态相位检测起着重要的作用。虽然许多专门检测系统已用于步态监控的发展,现有的大多数步态相位检测算法依赖于由医学专家,这是主观的,手工的,不准确显著输入。为了解决这些问题,本文提出了一种实时的步态相位检测数据驱动的方法。该方法结合了一个无限高斯混合模型(IGMM)至(GCF)的测量,和一个平行颗粒过滤器来估计和更新模型参数根据地面接触力不同步态阶段分类。有效粒子共享机制进一步被设计明智地分配不同的工作节点之间的颗粒,因此撞击的计算开销和估计精度之间的良好平衡。该算法是在我们对微软的Azure开发步态监控和分析平台上实现,并使用从健康人受试者采集的数据跟踪检查。该算法的有效性通过大量的实验验证。

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