Motion Reconstruction from Sparse Accelerometer Data Using PLSR

Charence Wong, Zhiqiang Zhang, R. Kwasnicki, Jindong Liu, Guang-Zhong Yang
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引用次数: 5

Abstract

Detailed motion reconstruction is a prerequisite of biomotion analysis and physical function assessment for a variety of scenarios. For example, biomechanical analysis can be used to assess physical activity to diagnose pathological conditions, to provide an objective measure of biomechanics for peri-operative care, and to monitor patients with mobility issues. Unfortunately, current motion capture systems cannot perform biomechanical analysis continuously in the patient's natural environment. In this paper, a pose estimation scheme from a sparse network of accelerometer-based wearable sensors, which does not impose restrictions upon the patient's daily life, is presented. In the proposed method, a marker-based motion capture system is used for acquiring the 3D motion data, and partial least squares regression (PLSR) is used to establish the implicit model between 3D body pose and the wearable sensor measurements. A linear constant velocity process model and measurement model are designed and a Kalman filter is then deployed to estimate the posture. Experimental results demonstrate the strength of the technique and how it can be used to estimate detailed 3D motion from a sparse set of sensors.
基于PLSR的稀疏加速度计数据运动重建
详细的运动重建是对各种场景进行生物运动分析和身体功能评估的前提。例如,生物力学分析可用于评估身体活动,以诊断病理状况,为围手术期护理提供客观的生物力学测量,并监测有行动障碍的患者。不幸的是,目前的动作捕捉系统不能在患者的自然环境中连续进行生物力学分析。本文提出了一种基于加速度计的可穿戴传感器稀疏网络的姿态估计方案,该方案不限制患者的日常生活。该方法利用基于标记的运动捕捉系统获取三维运动数据,利用偏最小二乘回归(PLSR)建立三维人体姿态与可穿戴传感器测量值之间的隐式模型。设计了线性等速过程模型和测量模型,利用卡尔曼滤波对姿态进行估计。实验结果证明了该技术的强度,以及它如何用于从稀疏的传感器集估计详细的3D运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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