主管:中华人民共和国应急管理部
主办:应急管理部天津消防研究所
ISSN 1009-0029  CN 12-1311/TU

消防科学与技术 ›› 2022, Vol. 41 ›› Issue (12): 1713-1715.

• • 上一篇    下一篇

基于卷积神经网络的视频烟雾探测追踪技术研究

陆 坚   

  1. (上海市徐汇区消防救援支队,上海 200232)
  • 出版日期:2022-12-15 发布日期:2022-12-16
  • 作者简介:作者简介:陆 坚(1982- ),上海金山人,上海市徐汇区消防救援支队防火监督一科助理工程师,主要从事消防监督管理方面的研究,上海市徐汇区武宣路150号,200232。

Research on video smoke detection and tracking technology based on convolutional neural network

Lu Jian   

  • Online:2022-12-15 Published:2022-12-16

摘要: 摘 要:火灾探测预警技术是有效降低火灾损失、辅助扑救火灾,保护人民生命财产安全的重要技术保障,是对烟雾进行探测较为有效的手段之一。目前,大部分烟雾探测报警装置主要设置于室内空间场所,仅具备探测和报警功能,同时误报率相对较高,也无法同步传递实时视频画面信息,对室外空间区域也无法进行探测。针对上述情况,基于视频监控系统对烟雾进行实时探测研究。通过对CNN架构进行改进,在EfficientNet中加入残差模块Res-EfficientNet,更精准的探测和识别烟雾。通过STRCF实现对烟雾的精度定位。为提高探测准确率,还考虑了烟雾偏振传输特性,如烟雾的扩散和半透明状态。为了能够更好地探测视频中的烟雾,将空间频率的能量作为滤波器的一维约束项,在基准数据集上进行了试验,试验结果表明,准确率提高了3%。

关键词: 关键词:火灾烟雾, 烟雾探测, CNN网络

Abstract: Fire detection and early warning technology is an important technical guarantee to effectively reduce fire loss, assist fire fighting and protect people's life and property safety, and smoke detection is one of the more effective means. At present, most smoke detection and alarm devices are mainly set in indoor space, and only have detection and alarm functions. At the same time, the false alarm rate is relatively high, and real-time video information cannot be transmitted synchronously, and detection cannot be carried out for outdoor space areas. Based on the above situation, this paper mainly studies the real-time detection of smoke based on video monitoring system. In the experiment, the network (CNN) architecture was improved, and the res-EfficientNet residual module was added in the EfficientNet, which was used for more accurate detection and recognition of smoke. The spatiotemporal regularized correlation filter (STRCF) was used to achieve the accurate location of smoke. In order to improve the detection accuracy, the polarization transmission characteristics of smoke, such as smoke diffusion and translucency, are also considered. In order to better detect the smoke in the video, the energy of spatial frequency is taken as the one-dimensional constraint term of the filter, and the experiment is carried out on the benchmark data set. The experimental results show that the accuracy is improved by 3%.

Key words: fire smoke, smoke detection, CNN network