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用于高精度实时代谢能量估计和运动识别的可穿戴腿部运动监测系统。

Wearable Leg Movement Monitoring System for High-Precision Real-Time Metabolic Energy Estimation and Motion Recognition.

作者信息

Yuan Jinfeng, Zhang Yuzhong, Liu Shiqiang, Zhu Rong

机构信息

State Key Laboratory of Precision Measurement Technology and Instruments, Department of Precision Instrument, Tsinghua University, Beijing 100084, China.

出版信息

Research (Wash D C). 2023 Aug 23;6:0214. doi: 10.34133/research.0214. eCollection 2023.

Abstract

Comprehensive and quantitative assessment of human physical activity in daily life is valuable for healthcare, especially for those who suffer from obesity and neurological disorders or are at high risk of dementia. Common wearable devices, e.g., smartwatches, are insufficient and inaccurate for monitoring highly dynamic limb movements and assessing human motion. Here, we report a new wearable leg movement monitoring system incorporating a custom-made motion sensor with machine learning algorithm to perceive human motion accurately and comprehensively during diverse walking and running actions. The system enables real-time multimodal perceptions of personal identity, motion state, locomotion speed, and energy expenditure for wearers. A general law of extracting real-time metabolic energy from leg movements is verified although individual gaits show differences. In addition, we propose a novel sensing configuration combining unilateral lower leg movement velocity with its angular rate to achieve high accuracy and good generalizability while simplifying the wearable system. Advanced performances in personal identification (accuracy of 98.7%) and motion-state recognition (accuracy of 93.7%) are demonstrated. The wearable system also exhibites high-precision real-time estimations of locomotion speed (error of 3.04% to 9.68%) and metabolic energy (error of 4.18% to 14.71%) for new subjects across various time-varying conditions. The wearable system allows reliable leg movement monitoring and quantitative assessment of bodily kinematic and kinetic behaviors during daily activities, as well as safe identity authentication by gait parameters, which would greatly facilitate smart life, personal healthcare, and rehabilitation training.

摘要

对人类日常生活中的身体活动进行全面和定量评估,对医疗保健具有重要价值,特别是对于那些患有肥胖症和神经系统疾病或有患痴呆症高风险的人。常见的可穿戴设备,如智能手表,在监测高度动态的肢体运动和评估人类运动方面存在不足且不准确。在此,我们报告了一种新型可穿戴腿部运动监测系统,该系统集成了定制的运动传感器和机器学习算法,能够在各种行走和跑步动作中准确、全面地感知人类运动。该系统能够对佩戴者的个人身份、运动状态、运动速度和能量消耗进行实时多模态感知。尽管个体步态存在差异,但从腿部运动中提取实时代谢能量的一般规律得到了验证。此外,我们提出了一种新颖的传感配置,将单侧小腿运动速度与其角速率相结合,在简化可穿戴系统的同时实现高精度和良好的通用性。该系统在个人识别(准确率98.7%)和运动状态识别(准确率93.7%)方面表现出先进的性能。该可穿戴系统还在各种时变条件下对新受试者的运动速度(误差3.04%至9.68%)和代谢能量(误差4.18%至14.71%)进行了高精度实时估计。该可穿戴系统能够在日常活动中可靠地监测腿部运动,并对身体的运动学和动力学行为进行定量评估,同时通过步态参数进行安全的身份认证,这将极大地促进智能生活、个人医疗保健和康复训练。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/46d9/11918258/b3a2f76f438a/research.0214.fig.001.jpg

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