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基于鞋的可穿戴传感器的姿势分配和活动监测。

Monitoring of posture allocations and activities by a shoe-based wearable sensor.

机构信息

Department of Electrical and Computer Engineering, The University of Alabama, Tuscaloosa, AL 35487, USA.

出版信息

IEEE Trans Biomed Eng. 2011 Apr;58(4):983-90. doi: 10.1109/TBME.2010.2046738. Epub 2010 Apr 15.


DOI:10.1109/TBME.2010.2046738
PMID:20403783
Abstract

Monitoring of posture allocations and activities enables accurate estimation of energy expenditure and may aid in obesity prevention and treatment. At present, accurate devices rely on multiple sensors distributed on the body and thus may be too obtrusive for everyday use. This paper presents a novel wearable sensor, which is capable of very accurate recognition of common postures and activities. The patterns of heel acceleration and plantar pressure uniquely characterize postures and typical activities while requiring minimal preprocessing and no feature extraction. The shoe sensor was tested in nine adults performing sitting and standing postures and while walking, running, stair ascent/descent and cycling. Support vector machines (SVMs) were used for classification. A fourfold validation of a six-class subject-independent group model showed 95.2% average accuracy of posture/activity classification on full sensor set and over 98% on optimized sensor set. Using a combination of acceleration/pressure also enabled a pronounced reduction of the sampling frequency (25 to 1 Hz) without significant loss of accuracy (98% versus 93%). Subjects had shoe sizes (US) M9.5-11 and W7-9 and body mass index from 18.1 to 39.4 kg/m2 and thus suggesting that the device can be used by individuals with varying anthropometric characteristics.

摘要

姿势分配和活动监测可实现对能量消耗的精确估计,有助于肥胖的预防和治疗。目前,精确的设备依赖于分布在身体上的多个传感器,因此对于日常使用可能过于繁琐。本文提出了一种新型可穿戴传感器,能够非常准确地识别常见姿势和活动。脚跟加速度和足底压力模式独特地描述了姿势和典型活动,同时需要最小的预处理,无需特征提取。鞋传感器在九名成年人进行坐姿和站姿以及行走、跑步、上下楼梯和骑自行车时进行了测试。支持向量机 (SVM) 用于分类。对六类独立组模型的四折验证表明,在完整传感器组上的姿势/活动分类平均准确率为 95.2%,在优化传感器组上的准确率超过 98%。使用加速度/压力的组合还可以显著降低采样频率(从 25 到 1 Hz),而不会显著降低准确性(98% 对 93%)。受试者的鞋码(美国)为 M9.5-11 和 W7-9,体重指数为 18.1-39.4 kg/m2,因此表明该设备可用于具有不同人体测量特征的个体。

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Monitoring of posture allocations and activities by a shoe-based wearable sensor.

IEEE Trans Biomed Eng. 2010-4-15

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引用本文的文献

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Investigating Performance of an Embedded Machine Learning Solution for Classifying Postural Behaviors.

Sensors (Basel). 2025-7-9

[2]
Detection of freezing of gait in Parkinson's disease from foot-pressure sensing insoles using a temporal convolutional neural network.

Front Aging Neurosci. 2024-7-18

[3]
Influence of motor capacity of the lower extremity and mobility performance on foot plantar pressures in community-dwelling older women.

Heliyon. 2024-3-19

[4]
Distinguishing features of Parkinson's disease fallers based on wireless insole plantar pressure monitoring.

NPJ Parkinsons Dis. 2024-3-19

[5]
Human Posture Estimation: A Systematic Review on Force-Based Methods-Analyzing the Differences in Required Expertise and Result Benefits for Their Utilization.

Sensors (Basel). 2023-11-6

[6]
Prediction of Three-Directional Ground Reaction Forces during Walking Using a Shoe Sole Sensor System and Machine Learning.

Sensors (Basel). 2023-11-5

[7]
A Pilot Study of Plantar Mechanics Distributions and Fatigue Profiles after Running on a Treadmill: Using a Support Vector Machine Algorithm.

J Healthc Eng. 2023

[8]
A Comparison among Different Strategies to Detect Potential Unstable Behaviors in Postural Sway.

Sensors (Basel). 2022-9-20

[9]
Empirical Study on Human Movement Classification Using Insole Footwear Sensor System and Machine Learning.

Sensors (Basel). 2022-4-2

[10]
A Novel Elderly Tracking System Using Machine Learning to Classify Signals from Mobile and Wearable Sensors.

Int J Environ Res Public Health. 2021-11-30

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