基于改进YOLO的工矿火灾检测算法

IF 2.3 3区 工程技术 Q2 ENGINEERING, MULTIDISCIPLINARY
Xianguo Li, Yafei Fan, Yi Liu, Xueyan Li, Zhichao Liu
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引用次数: 0

摘要

火灾是威胁工矿企业安全的主要灾害之一。针对现有火焰和烟雾检测算法的局限性,不能满足高检测率、低虚警率、实时性强的实际应用要求,本文提出了一种基于改进YOLO的工矿火灾检测算法。首先,构建CFM_N模块是为了更有效地捕获特征映射中的本地和全局数据。然后,提出改进的空间金字塔池化模块SPPFCSPC,更好地提取和融合多尺度目标特征;最后,提出了改进的下采样模块,以优化多尺度融合模块,降低计算复杂度。在自制数据集上的对比实验表明,本文算法的mAP值为91.7%,F1值为87.7%,优于YOLOv5-YOLOv8算法。该算法实现了对小目标火焰和烟雾的准确检测,以及近距离和中距离的大中型火焰和烟雾目标的准确检测。能够满足大型复杂工矿场景中火灾的实时检测任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Industrial and Mining Fire Detection Algorithm Based on Improved YOLO

Fire is one of the major disasters that threaten the safety of industrial and mining enterprises. In response to the limitations of existing flame and smoke detection algorithms, which fail to meet the practical application requirements of high detection rates, low false alarm rates, and strong real-time performance, this paper proposes an industrial and mining fire detection algorithm based on the improved YOLO. First, the CFM_N module is built to more effectively capture both local and global data in the feature map. Then, the improved spatial pyramid pooling module SPPFCSPC is proposed to better extract and fuse multi-scale target features. Finally, the improved downsampling module is put forward to optimize the multi-scale fusion module and to reduce the computational complexity. Comparison experiments on self-made datasets show that the proposed algorithm obtains 91.7% mAP and 87.7% F1, which are superior to the results of YOLOv5-YOLOv8 algorithms. And this algorithm achieves accurate detection of small target flames and smoke, as well as medium and large flame and smoke targets in close and medium distances. So it can meet the real-time detection task of fire in large-scale complex industrial and mining scenes.

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来源期刊
Fire Technology
Fire Technology 工程技术-材料科学:综合
CiteScore
6.60
自引率
14.70%
发文量
137
审稿时长
7.5 months
期刊介绍: Fire Technology publishes original contributions, both theoretical and empirical, that contribute to the solution of problems in fire safety science and engineering. It is the leading journal in the field, publishing applied research dealing with the full range of actual and potential fire hazards facing humans and the environment. It covers the entire domain of fire safety science and engineering problems relevant in industrial, operational, cultural, and environmental applications, including modeling, testing, detection, suppression, human behavior, wildfires, structures, and risk analysis. The aim of Fire Technology is to push forward the frontiers of knowledge and technology by encouraging interdisciplinary communication of significant technical developments in fire protection and subjects of scientific interest to the fire protection community at large. It is published in conjunction with the National Fire Protection Association (NFPA) and the Society of Fire Protection Engineers (SFPE). The mission of NFPA is to help save lives and reduce loss with information, knowledge, and passion. The mission of SFPE is advancing the science and practice of fire protection engineering internationally.
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