劳动活动的自动识别:使用可穿戴传感器捕捉活动生理模式的机器学习方法

Hamad Al Jassmi, Mahmoud Al Ahmad, Soha Ahmed
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引用次数: 5

摘要

开发自动化建筑工人绩效监控系统的第一步是首先建立一个完整的、有能力的活动识别解决方案,这一点目前仍然缺乏。本研究旨在提出一种利用可穿戴传感器收集的劳动生理数据作为远程和自动活动识别手段的新方法。对三名预制石材建筑工人进行了一项试点研究,通过三个完整的轮班,测试通过实时测量的生理信号(即血容量脉搏、呼吸频率、心率、皮肤电反应和皮肤温度)自动识别他们在现场进行的活动类型的能力。生理数据从可穿戴传感器广播到为此特定目的开发的平板电脑应用程序,因此用于训练和评估各种机器学习分类器的性能。使用人工神经网络分类器进行活动识别,准确率达到88%。然而,对于一些引起类似生理模式的活动,需要特别注意。预计将这种方法与其他目前开发的基于相机或基于动力学的方法混合将产生更高的活动识别精度水平。提出的方法补充了先前提出的劳动跟踪方法,该方法侧重于监测劳动轨迹和姿势,通过使用来自劳动生理学的额外丰富信息源,进行实时和远程活动识别。最终,这为自动化和全面的解决方案铺平了道路,施工经理可以远程监控、控制和收集有关工人绩效的丰富实时数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic recognition of labor activity: a machine learning approach to capture activity physiological patterns using wearable sensors
The first step toward developing an automated construction workers performance monitoring system is to initially establish a complete and competent activity recognition solution, which is still lacking. This study aims to propose a novel approach of using labor physiological data collected through wearable sensors as means of remote and automatic activity recognition.,A pilot study is conducted against three pre-fabrication stone construction workers throughout three full working shifts to test the ability of automatically recognizing the type of activities they perform in-site through their lively measured physiological signals (i.e. blood volume pulse, respiration rate, heart rate, galvanic skin response and skin temperature). The physiological data are broadcasted from wearable sensors to a tablet application developed for this particular purpose, and are therefore used to train and assess the performance of various machine-learning classifiers.,A promising result of up to 88% accuracy level for activity recognition was achieved by using an artificial neural network classifier. Nonetheless, special care needs to be taken for some activities that evoke similar physiological patterns. It is expected that blending this method with other currently developed camera-based or kinetic-based methods would yield higher activity recognition accuracy levels.,The proposed method complements previously proposed labor tracking methods that focused on monitoring labor trajectories and postures, by using additional rich source of information from labors physiology, for real-time and remote activity recognition. Ultimately, this paves for an automated and comprehensive solution with which construction managers could monitor, control and collect rich real-time data about workers performance remotely.
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