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A Hybrid Kinematic-Acoustic System for Automated Activity Detection of Construction Equipment

机译:用于建筑设备活动自动检测的混合运动学-声学系统

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摘要

Automatically recognizing and tracking construction equipment activities is the first step towards performance monitoring of a job site. Recognizing equipment activities helps construction managers to detect the equipment downtime/idle time in a real-time framework, estimate the productivity rate of each equipment based on its progress, and efficiently evaluate the cycle time of each activity. Thus, it leads to project cost reduction and time schedule improvement. Previous studies on this topic have been based on single sources of data (e.g., kinematic, audio, video signals) for automated activity-detection purposes. However, relying on only one source of data is not appropriate, as the selected data source may not be applicable under certain conditions and fails to provide accurate results. To tackle this issue, the authors propose a hybrid system for recognizing multiple activities of construction equipment. The system integrates two major sources of data—audio and kinematic—through implementing a robust data fusion procedure. The presented system includes recording audio and kinematic signals, preprocessing data, extracting several features, as well as dimension reduction, feature fusion, equipment activity classification using Support Vector Machines (SVM), and smoothing labels. The proposed system was implemented in several case studies (i.e., ten different types and equipment models operating at various construction job sites) and the results indicate that a hybrid system is capable of providing up to 20% more accurate results, compared to cases using individual sources of data.
机译:自动识别和跟踪建筑设备活动是迈向工作现场绩效监控的第一步。识别设备活动可帮助建筑经理在实时框架中检测设备的停机时间/空闲时间,根据其进度估算每个设备的生产率,并有效地评估每个活动的周期时间。因此,它可以减少项目成本并改善时间表。先前关于该主题的研究已经基于用于自动活动检测目的的单个数据源(例如,运动,音频,视频信号)。但是,仅依靠一个数据源是不合适的,因为选定的数据源在某些情况下可能不适用,并且无法提供准确的结果。为了解决这个问题,作者提出了一种用于识别建筑设备的多种活动的混合系统。该系统通过实施可靠的数据融合程序,集成了两个主要的数据源(音频和运动学)。提出的系统包括记录音频和运动信号,预处理数据,提取多个特征,以及尺寸缩减,特征融合,使用支持向量机(SVM)进行的设备活动分类以及平滑标签。该提议的系统已在多个案例研究中实施(即,在各种建筑工地运行的十种不同类型和设备模型),结果表明,与使用单个案例相比,混合系统能够提供多达20%的准确结果。数据来源。

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