Fire-PPYOLOE: An Efficient Forest Fire Detector for Real-Time Wild Forest Fire Monitoring

Author:

Yu Pei1ORCID,Wei Wei2ORCID,Li Jing2ORCID,Du Qiuyang13ORCID,Wang Fang2ORCID,Zhang Lili2ORCID,Li Huitao2ORCID,Yang Kang2ORCID,Yang Xudong2ORCID,Zhang Ning2ORCID,Han Yucheng2ORCID,Yu Huapeng4ORCID

Affiliation:

1. China Fire and Rescue Institute, Beijing 102202, China

2. Beijing Institute of Petrochemical Technology, Beijing 102617, China

3. Key Laboratory of Forest and Grassland Fire Risk Prevention, Ministry of Emergency Management, Beijing 102202, China

4. Institute of National Defense Science and Technology Innovation, Academy of Military Sciences, Beijing 100036, China

Abstract

Forest fire has the characteristics of sudden and destructive, which threatens safety of people’s life and property. Automatic detection and early warning of forest fire in the early stage is very important for protecting forest resources and reducing disaster losses. Unmanned forest fire monitoring is one popular way of forest fire automatic detection. However, the actual forest environment is complex and diverse, and the vision image is affected by various factors easily such as geographical location, seasons, cloudy weather, day and night, etc. In this paper, we propose a novel fire detection method called Fire-PPYOLOE. We design a new backbone and neck structure leveraging large kernel convolution to capture a large arrange area of reception field based on the existing fast and accurate object detection model PP-YOLOE. In addition, our model maintains the high-speed performance of the single-stage detection model and reduces model parameters by using CSPNet significantly. Extensive experiments are conducted to show the effectiveness of Fire-PPYOLOE from the views of detection accuracy and speed. The results show that our Fire-PPYOLOE is able to detect the smoke- and flame-like objects because it can learn features around the object to be detected. It can provide real-time forest fire prevention and early detection.

Funder

Beijing Municipal Education Commission

Publisher

Hindawi Limited

Subject

Electrical and Electronic Engineering,Instrumentation,Control and Systems Engineering

Reference34 articles.

1. Study on forest fire danger prediction in plateau mountainous forest area

2. A review of global forest fires in 2021;Y. Bal;Fire Science and Technology,2022

3. Design and implementation of fire detection system based on uav;L. Ning;Fire Safety Science,2022

4. Wildland Forest Fire Smoke Detection Based on Faster R-CNN using Synthetic Smoke Images

5. Design and application of forest fire detection system based on image recognition technology;X. Wang;Fresenius Environmental Bulletin,2021

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