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Dataset and benchmark for detecting moving objects in construction sites

机译:DataSet和基准测试施工站点中的移动物体

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摘要

Detecting workers and equipment through images/videos can assist in safety monitoring, quality control, and productivity management at construction sites. Currently, the dominant method for detecting is Deep Neural Networks (DNNs). To apply this method, the DNNs always need to be trained on image datasets that contain objects at the construction site. However, a large-scale and publicly available image dataset for detecting objects at construction sites is still absent, and this hinders research in this field. In this study, the Moving Objects in Construction Sites (MOCS) image dataset is presented. The dataset contains 41,668 images collected from 174 different construction sites. Thirteen categories of moving objects found in construction sites were annotated. Furthermore, the objects were precisely annotated using per-pixel segmentations to assist in precise object localization. A detailed statistical analysis was performed in this study. Finally, a benchmark containing 15 different DNN-based detectors was made using the MOCS dataset. The results show that all detectors trained on the dataset could detect objects at construction sites precisely and robustly.
机译:通过图像/视频检测工人和设备可以帮助建造地点的安全监控,质量控制和生产力管理。目前,检测的主要方法是深神经网络(DNN)。要应用此方法,DNN始终需要在包含施工站点的对象的图像数据集上培训。然而,仍然存在用于检测施工地点的对象的大规模和公开的图像数据集,并且这一领域的阻碍研究。在本研究中,介绍了施工网站(MOCS)图像数据集中的移动物体。数据集包含从174个不同的建筑工地收集的41,668个图像。建筑工地中发现的十三类移动物体被注释。此外,使用每个像素分割精确地注释对象以辅助精确的对象本地化。在本研究中进行了详细的统计分析。最后,使用MOCS数据集进行包含15个不同DNN的探测器的基准。结果表明,DataSet上培训的所有探测器都可以精确且强大地检测施工站点的对象。

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