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基于惯性测量单元和时间卷积神经网络的老年人太极拳运动识别与精准干预

Tai Chi Movement Recognition and Precise Intervention for the Elderly Based on Inertial Measurement Units and Temporal Convolutional Neural Networks.

机构信息

School of Physical Education and Sports, Beijing Normal University, Beijing 100875, China.

Department of Physical Education, Xinzhou Normal University, Xinzhou 034000, China.

出版信息

Sensors (Basel). 2024 Jun 28;24(13):4208. doi: 10.3390/s24134208.

Abstract

(1) Background: The objective of this study was to recognize tai chi movements using inertial measurement units (IMUs) and temporal convolutional neural networks (TCNs) and to provide precise interventions for elderly people. (2) Methods: This study consisted of two parts: firstly, 70 skilled tai chi practitioners were used for movement recognition; secondly, 60 elderly males were used for an intervention study. IMU data were collected from skilled tai chi practitioners performing Bafa Wubu, and TCN models were constructed and trained to classify these movements. Elderly participants were divided into a precision intervention group and a standard intervention group, with the former receiving weekly real-time IMU feedback. Outcomes measured included balance, grip strength, quality of life, and depression. (3) Results: The TCN model demonstrated high accuracy in identifying tai chi movements, with percentages ranging from 82.6% to 94.4%. After eight weeks of intervention, both groups showed significant improvements in grip strength, quality of life, and depression. However, only the precision intervention group showed a significant increase in balance and higher post-intervention scores compared to the standard intervention group. (4) Conclusions: This study successfully employed IMU and TCN to identify Tai Chi movements and provide targeted feedback to older participants. Real-time IMU feedback can enhance health outcome indicators in elderly males.

摘要

(1) 背景:本研究旨在使用惯性测量单元 (IMU) 和时间卷积神经网络 (TCN) 识别太极拳动作,并为老年人提供精准干预。

(2) 方法:本研究分为两部分:首先,使用 70 名熟练的太极拳练习者进行动作识别;其次,使用 60 名老年男性进行干预研究。从熟练的太极拳练习者那里采集进行八法五步的 IMU 数据,并构建和训练 TCN 模型对这些动作进行分类。老年参与者分为精准干预组和标准干预组,前者每周接受实时 IMU 反馈。测量的结果包括平衡、握力、生活质量和抑郁。

(3) 结果:TCN 模型在识别太极拳动作方面表现出很高的准确性,准确率在 82.6%至 94.4%之间。经过八周的干预,两组的握力、生活质量和抑郁都有显著改善。然而,只有精准干预组在平衡方面表现出显著提高,并且干预后的评分高于标准干预组。

(4) 结论:本研究成功地使用 IMU 和 TCN 识别太极拳动作,并为老年参与者提供针对性的反馈。实时 IMU 反馈可以增强老年男性的健康结果指标。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/478b/11244047/d782a97f57b9/sensors-24-04208-g001.jpg

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