Ann Hojune, Koo Ki Young
Vibration Engineering Section, Faculty of Environment, Science, and Economics, University of Exeter, Exeter EX4 4QF, UK.
Sensors (Basel). 2023 Nov 10;23(22):9095. doi: 10.3390/s23229095.
The recent large-scale fire incidents on construction sites in South Korea have highlighted the need for computer vision technology to detect fire risks before an actual occurrence of fire. This study developed a proactive fire risk detection system by detecting the coexistence of an ignition source (sparks) and a combustible material (urethane foam or Styrofoam) using object detection on images from a surveillance camera. Statistical analysis was carried out on fire incidences on construction sites in South Korea to provide insight into the cause of the large-scale fire incidents. Labeling approaches were discussed to improve the performance of the object detectors for sparks and urethane foams. Detecting ignition sources and combustible materials at a distance was discussed in order to improve the performance for long-distance objects. Two candidate deep learning models, Yolov5 and EfficientDet, were compared in their performance. It was found that Yolov5 showed slightly higher mAP performances: Yolov5 models showed mAPs from 87% to 90% and EfficientDet models showed mAPs from 82% to 87%, depending on the complexity of the model. However, Yolov5 showed distinctive advantages over EfficientDet in terms of easiness and speed of learning.
韩国近期建筑工地发生的大规模火灾事件凸显了利用计算机视觉技术在火灾实际发生前检测火灾风险的必要性。本研究通过对监控摄像机图像进行目标检测,检测点火源(火花)和可燃材料(聚氨酯泡沫或聚苯乙烯泡沫塑料)的共存情况,开发了一种主动火灾风险检测系统。对韩国建筑工地的火灾发生率进行了统计分析,以深入了解大规模火灾事件的原因。讨论了标记方法,以提高火花和聚氨酯泡沫目标检测器的性能。为了提高对远距离物体的检测性能,讨论了远距离检测点火源和可燃材料的方法。比较了两种候选深度学习模型Yolov5和EfficientDet的性能。结果发现,Yolov5的平均精度均值(mAP)性能略高:根据模型的复杂度,Yolov5模型的mAP为87%至90%,EfficientDet模型的mAP为82%至87%。然而,在学习的简易性和速度方面,Yolov5比EfficientDet具有明显优势。