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首页> 外文期刊>Journal of Computing in Civil Engineering >Adaptive Detector and Tracker on Construction Sites Using Functional Integration and Online Learning
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Adaptive Detector and Tracker on Construction Sites Using Functional Integration and Online Learning

机译:使用功能集成和在线学习的建筑工地上的自适应检测器和跟踪器

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Tracking construction equipment is a major task when monitoring work in progress and performance on construction sites. Real-time location data of heavy equipment can be used not only to prevent collision accidents but also to predict work types and idle time. Many researchers have investigated the two-dimensional (2D) tracking of construction equipment from images. However, this method still frequently fails to track construction equipment in the long term due to the high interclass/intraclass variations of construction equipment and sites. In order to overcome this problem, this paper adapts and customizes a tracking method composed of two main concepts for (1) functional integration of a detector and a tracker and (2) real-time online learning using an automatically developed training database on site. The functional integration is first used to solve retracking issues and provide information used for database development. On the other hand, the online learning focuses on the use of a detector, which utilizes a site-customized database that is developed and updated automatically in real time. Validation was conducted using video stream data collected from four different construction sites. The average precision, recall rates, and data sampling accuracy were 86.53, 86.21, and 79.35%, respectively. The eigenvalues were also calculated as 0.66 and 0.39. The experiment results show the proposed method is able to consider the diverse characteristics of construction equipment and sites with promising performance. The contribution of this study is to improve performance and applicability of the functional integration and online learning for enhancing site awareness in the construction domain. (C) 2017 American Society of Civil Engineers.
机译:在监视施工现场的工作进度和性能时,跟踪施工设备是一项主要任务。重型设备的实时位置数据不仅可以用来防止碰撞事故,还可以预测工作类型和空闲时间。许多研究人员从图像中调查了建筑设备的二维(2D)跟踪。但是,由于施工设备和工地之间的等级间/等级间变化很大,从长远来看,该方法仍然经常无法跟踪施工设备。为了克服这个问题,本文对跟踪方法进行了改编和定制,跟踪方法由两个主要概念组成:(1)检测器和跟踪器的功能集成,以及(2)使用现场自动开发的培训数据库进行实时在线学习。功能集成首先用于解决重新跟踪问题并提供用于数据库开发的信息。另一方面,在线学习侧重于检测器的使用,该检测器利用了实时自动开发和更新的站点定制数据库。使用从四个不同施工现场收集的视频流数据进行验证。平均精度,召回率和数据采样精度分别为86.53、86.21和79.35%。特征值也被计算为0.66和0.39。实验结果表明,该方法能够考虑施工设备和场地的各种特性,具有良好的性能。这项研究的目的是提高功能集成和在线学习的性能和适用性,以增强建筑领域的现场意识。 (C)2017年美国土木工程师学会。

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