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Automated recognition of construction labour activity using accelerometers in field situations

机译:在现场情况下使用加速度计自动识别建筑工人的活动

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Purpose - Worker activity identification and classification is the most crucial and difficult stage in work sampling studies. Manual methods of recording are tedious and prone to error and, hence automating the task of observing and classifying worker activities is an important step towards improving the current practice. Very recently, accelerometer-based systems have been explored to automate activity recognition in construction, but it had been carried out in controlled environment. The purpose of this paper is to cover the evaluation of the system in field situations. Design/methodology/approach - Experimental investigation was carried out on crews of iron workers and carpenters with accelerometer data loggers worn at selected locations on the human body. The accelerometer data collection was spread over a time period of two weeks, and video recording of the worker activities was concurrently carried out to serve as ground truth, the reference used for comparison. The activity recognition analysis was carried out on accelerometer data features using a decision tree algorithm. Findings - It was found that the classification using the individual training scheme performed better when compared with the collective training scheme for both the trades. The field studies results showed that the classification accuracies for iron work and carpentry are 90.07 and 77.74 per cent, respectively, using decision tree classifier. It was found that similarities of movements were a major cause for lower accuracy of recognition. Research limitations/implications - The work being preliminary in nature has used the basic classifier and pre-processing methods and, standard settings of algorithms. Originality/value - The paper has investigated accelerometer-based method for construction labour activity classification in field situations.
机译:目的-工人活动的识别和分类是工作抽样研究中最关键和最困难的阶段。手动记录方法繁琐且容易出错,因此,将观察和分类工人活动的任务自动化是改进当前实践的重要一步。最近,已经探索了基于加速度计的系统来自动识别建筑中的活动,但是它是在受控环境中进行的。本文的目的是涵盖在现场情况下对系统的评估。设计/方法/方法-对铁工和木匠的工作人员进行了实验研究,并在人体的选定位置佩戴了加速度计数据记录器。加速度计数据收集分散在两个星期的时间内,并同时进行了工人活动的视频记录,以作为基础事实,用于进行比较。使用决策树算法对加速度计的数据特征进行活动识别分析。调查结果-与两个行业的集体培训方案相比,使用个体培训方案进行分类的效果更好。现场研究结果表明,使用决策树分类器,对铁制品和木工制品的分类准确率分别为90.07%和77.74%。已经发现,运动的相似性是降低识别精度的主要原因。研究局限性/意义-这项工作本质上是初步的,使用了基本的分类器和预处理方法以及算法的标准设置。原创性/价值-本文研究了基于加速度计的现场情况下建筑工人活动分类的方法。

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