任铄琦, 王婷, 杨孜豪, 李哲, 李必飞. 古建筑烟火检测智能识别系统设计与实现[J]. 实验科学与技术, 2023, 21(6): 36-40. DOI: 10.12179/1672-4550.20220667
引用本文: 任铄琦, 王婷, 杨孜豪, 李哲, 李必飞. 古建筑烟火检测智能识别系统设计与实现[J]. 实验科学与技术, 2023, 21(6): 36-40. DOI: 10.12179/1672-4550.20220667
REN Shuoqi, WANG Ting, YANG Zihao, LI Zhe, LI Bifei. Design and Implementation of an Intelligent Identification System for Ancient Building Fireworks Detection[J]. Experiment Science and Technology, 2023, 21(6): 36-40. DOI: 10.12179/1672-4550.20220667
Citation: REN Shuoqi, WANG Ting, YANG Zihao, LI Zhe, LI Bifei. Design and Implementation of an Intelligent Identification System for Ancient Building Fireworks Detection[J]. Experiment Science and Technology, 2023, 21(6): 36-40. DOI: 10.12179/1672-4550.20220667

古建筑烟火检测智能识别系统设计与实现

Design and Implementation of an Intelligent Identification System for Ancient Building Fireworks Detection

  • 摘要: 为检测古建筑火灾,设计了一款取代人和传统传感器的基于改进YOLO算法自动烟火检测和识别的设备,并进行全天候分析。利用FPN解决古建筑中存在不易检测的小火焰问题,在CNN模型基础上建立火焰检测系统;同时为了提高检测的精度,降低误报的概率,在该系统中插入电子传感器,以便进一步检测温度和烟雾等信号。实验结果表明改进后的算法模型提高了火灾检测的准确性和实时性,识别准确率可达96%以上。

     

    Abstract: In order to detect fires in ancient buildings, a device for automatic smoke and fire detection and recognition based on the improved YOLO algorithm instead of human and traditional sensors is designed and analyzed around the clock. FPN is utilized to solve the problem of the existence of small flames that are not easy to be detected in ancient buildings, and a flame detection system is established on the basis of the CNN model. In order to improve the accuracy of detection and reduce the probability of false alarms, electronic sensors are inserted into this system in order to further detect signals such as temperature and smoke. The experimental results show that the improved algorithm model improves the accuracy and real-time performance of fire detection, and the recognition accuracy can reach more than 96%.

     

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