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Feasibility of a Drone-Based On-Site Proximity Detection in an Outdoor Construction Site

机译:在室外施工现场进行基于无人机的现场接近检测的可行性

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Being struck by equipment, such as a heavy machine and vehicle, is one of the leading causes of occupational fatalities in an outdoor construction project. As demonstrated through previous sensor-based research efforts, the proximity detection of workers and active equipment is useful in identifying potential hazards at construction sites. However, attaching sensors to entities can be burdensome for both contractors and workers. Additionally, the measurable ranges of proximity sensors may not be consistent because of the vulnerability to ambient conditions. Against this backdrop, we propose the use of a drone with computer vision techniques for on-site proximity detection. Specifically, the potential for the visualization of a struck-by hazard on air-view image frames is investigated in this paper. The drone can fly over a construction site so that moving entities are persistently captured with a drone-mounted camera while being tracked by a computer vision-based tracking algorithm (i.e., mean shift embedded particle filter). In addition, single view geometry-based rectification is adopted with the known geometry information of a reference object, to reflect a real scene scale and dynamic distortions derived from the drone's altitude and location. Based on the rectified proximity within the image plane, a struck-by hazard zone is defined and visualized in the video, which provides intuitive feedback on whether a worker of interest is within the potentially hazardous area or not. To validate the presented method in terms of accuracy and applicability, a site video from a wastewater treatment plant renovation project was collected. The preliminary test results showed that the defined hazard zone on the drone's image plane can be rectified to reflect reality on the ground plane. The proposed drone-based on-site proximity detection potentially may be used to identify the risk of workers being struck by equipment in an effective way.
机译:在室外建筑项目中,被重型机械和车辆等设备撞击是导致职业死亡的主要原因之一。正如以前基于传感器的研究成果所证明的那样,对工人和活动设备的接近检测有助于识别建筑工地的潜在危险。但是,将传感器连接到实体上对于承包商和工人而言都是沉重的负担。另外,由于容易受到环境条件的影响,接近传感器的可测量范围可能不一致。在这种背景下,我们建议使用具有计算机视觉技术的无人驾驶飞机进行现场接近检测。具体来说,本文研究了可视化图像在空中图像帧上被击中危险的潜力。无人机可以飞过一个建筑工地,以便在使用基于计算机视觉的跟踪算法(即均值漂移嵌入式粒子滤波器)进行跟踪的同时,使用安装在无人机上的摄像机持续捕获移动的实体。此外,对参考对象的已知几何信息采用基于单视图几何的校正,以反映真实场景比例和从无人机的高度和位置得出的动态变形。基于在图像平面内校正的接近度,在视频中定义并可视化了被触击的危险区域,该区域可提供有关感兴趣的工人是否在潜在危险区域内的直观反馈。为了在准确性和适用性方面验证所提出的方法,收集了废水处理厂改造项目的现场视频。初步测试结果表明,可以对无人机图像平面上定义的危险区域进行校正,以反映出地面上的真实情况。拟议中的基于无人机的现场接近检测可能会被用于有效地识别工人被设备击中的风险。

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