A Forest Fire Detection System Based on Ensemble Learning 论文

2021Forests引用 547
Fire Detection and Safety SystemsFire effects on ecosystemsVideo Surveillance and Tracking Methods

详细信息

发表期刊/会议
Forests
发表日期
2021-02-13
发表年份
2021

关键词

Fire Detection and Safety SystemsFire effects on ecosystemsVideo Surveillance and Tracking Methods

摘要

Due to the various shapes, textures, and colors of fires, forest fire detection is a challenging task. The traditional image processing method relies heavily on manmade features, which is not universally applicable to all forest scenarios. In order to solve this problem, the deep learning technology is applied to learn and extract features of forest fires adaptively. However, the limited learning and perception ability of individual learners is not sufficient to make them perform well in complex tasks. Furthermore, learners tend to focus too much on local information, namely ground truth, but ignore global information, which may lead to false positives. In this paper, a novel ensemble learning method is proposed to detect forest fires in different scenarios. Firstly, two individual learners Yolov5 and EfficientDet are integrated to accomplish fire detection process. Secondly, another individual learner EfficientNet is responsible for learning global information to avoid false positives. Finally, detection results are made based on the decisions of three learners. Experiments on our dataset show that the proposed method improves detection performance by 2.5% to 10.9%, and decreases false positives by 51.3%, without any extra latency.