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Two-Step Real-Time Night-Time Fire Detection in an Urban Environment Using Static ELASTIC-YOLOv3 and Temporal Fire-Tube

机译:使用静态ELASTIC-YOLOv3和临时火管在城市环境中进行两步实时夜间火灾探测

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摘要

While the number of casualties and amount of property damage caused by fires in urban areas are increasing each year, studies on their automatic detection have not maintained pace with the scale of such fire damage. Camera-based fire detection systems have numerous advantages over conventional sensor-based methods, but most research in this area has been limited to daytime use. However, night-time fire detection in urban areas is more difficult to achieve than daytime detection owing to the presence of ambient lighting such as headlights, neon signs, and streetlights. Therefore, in this study, we propose an algorithm that can quickly detect a fire at night in urban areas by reflecting its night-time characteristics. It is termed ELASTIC-YOLOv3 (which is an improvement over the existing YOLOv3) to detect fire candidate areas quickly and accurately, regardless of the size of the fire during the pre-processing stage. To reflect the dynamic characteristics of a night-time flame, N frames are accumulated to create a temporal fire-tube, and a histogram of the optical flow of the flame is extracted from the fire-tube and converted into a bag-of-features (BoF) histogram. The BoF is then applied to a random forest classifier, which achieves a fast classification and high classification performance of the tabular features to verify a fire candidate. Based on a performance comparison against a few other state-of-the-art fire detection methods, the proposed method can increase the fire detection at night compared to deep neural network (DNN)-based methods and achieves a reduced processing time without any loss in accuracy.
机译:尽管城市火灾每年造成的人员伤亡和财产损失的数量在增加,但对其自动检测的研究并没有跟上这种火灾破坏的规模。与传统的基于传感器的方法相比,基于摄像头的火灾探测系统具有许多优势,但是该领域的大多数研究仅限于白天使用。然而,由于存在诸如前灯,霓虹灯和路灯之类的环境照明,与白天的探测相比,城市地区的夜间火灾探测更难实现。因此,在这项研究中,我们提出了一种能够反映城市夜间火灾特征的算法,该算法可以快速检测夜间城市火灾。它被称为ELASTIC-YOLOv3(它是对现有YOLOv3的改进),可以快速而准确地检测候选火灾区域,而不管预处理阶段的火灾大小如何。为了反映夜间火焰的动态特性,累积了N帧以创建临时火管,并从火管中提取火焰光流的直方图并将其转换为特征包(BoF)直方图。然后将BoF应用于随机森林分类器,该分类器可实现表格特征的快速分类和高分类性能,以验证候选火灾。基于与其他几种最新火警检测方法的性能比较,与基于深度神经网络(DNN)的方法相比,该方法可以增加夜间火警检测,并减少处理时间,而不会造成任何损失准确性。

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