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Vision-Based Method Integrating Deep Learning Detection for Tracking Multiple Construction Machines

机译:基于视觉的方法对追踪多种施工机的深度学习检测

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摘要

Tracking construction machines in videos is a fundamental step in the automated surveillance of construction productivity, safety, and project progress. However, existing vision-based tracking methods are not able to achieve high tracking precision, robustness, and practical processing speed simultaneously. Occlusions and illumination variations on construction sites also prevent vision-based tracking methods from obtaining optimal tracking performance. To address these challenges, this research proposes a vision-based method, called construction machine tracker (CMT), to track multiple construction machines in videos. CMT consists of three main modules: detection, association, and assignment. The detection module detects construction machines using the deep learning algorithm YOLOv3 in each frame. Then the association module relates the detection results of two consecutive frames, and the assignment module produces the tracking results. In testing, CMT achieved 93.2% in multiple object tracking accuracy (MOTA) and 86.5% in multiple object tracking precision (MOTP) with a processing speed of 20.8 frames per second when tested on four construction videos. The proposed CMT was integrated into a framework of analyzing excavator productivity in earthmoving cycles and achieved 96.9% accuracy.
机译:追踪视频中的施工机器是建筑生产力,安全和项目进度自动监测的基本步骤。然而,现有的基于视觉的跟踪方法不能同时实现高跟踪精度,鲁棒性和实际处理速度。建筑地点的闭塞和照明变化还防止了基于视觉的跟踪方法获得了最佳的跟踪性能。为了解决这些挑战,本研究提出了一种基于视觉的方法,称为建筑机械跟踪器(CMT),以跟踪视频中的多个施工机器。 CMT由三个主要模块组成:检测,关联和分配。检测模块在每个帧中使用深度学习算法Yolov3检测建筑机器。然后,关联模块涉及两个连续帧的检测结果,并且分配模块产生跟踪结果。在测试中,CMT在多个物体跟踪精度(MOTA)中实现了93.2%,在多个物体跟踪精度(MOTP)中的86.5%,在四个施工视频上测试时,每秒20.8帧的处理速度。所提出的CMT被整合到分析土壤中循环中的挖掘机生产率的框架中,精度达到96.9%。

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