基于改进YOLOv5的森林火灾检测算法研究

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-06-28 DOI:10.3390/make5030039
Jianfeng Li, Xiao-Feng Lian
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引用次数: 0

摘要

森林火灾是世界上最致命的自然灾害之一。早期发现森林火灾有助于将对生态系统和森林生物的损害降到最低。本文针对YOLOv5提出了一种改进的火灾探测方法YOLOv5- iffdm。首先,通过在骨干网中加入关注机制,提高了对小目标的火灾、烟雾探测精度和网络感知精度;其次,对损失函数进行改进,利用SoftPool金字塔池结构提高模型的回归精度和检测性能,增强模型的鲁棒性;此外,采用随机拼接增强技术对数据进行增强以提高模型的泛化能力,并采用火焰和烟雾检测先验帧重新聚类以提高模型的精度和速度。最后,对训练模型的卷积层和归一化层参数进行均匀合并,进一步降低模型处理负荷,提高检测速度。在自建森林火灾和烟雾数据集上的实验结果表明,该算法检测精度高,检测速度快,对火灾的平均检测精度可达90.5%,对烟雾的平均检测精度可达84.3%,检测速度可达75 FPS(帧/秒传输),能够满足实时、高效的火灾检测要求。
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Research on Forest Fire Detection Algorithm Based on Improved YOLOv5
Forest fires are one of the world’s deadliest natural disasters. Early detection of forest fires can help minimize the damage to ecosystems and forest life. In this paper, we propose an improved fire detection method YOLOv5-IFFDM for YOLOv5. Firstly, the fire and smoke detection accuracy and the network perception accuracy of small targets are improved by adding an attention mechanism to the backbone network. Secondly, the loss function is improved and the SoftPool pyramid pooling structure is used to improve the regression accuracy and detection performance of the model and the robustness of the model. In addition, a random mosaic augmentation technique is used to enhance the data to increase the generalization ability of the model, and re-clustering of flame and smoke detection a priori frames are used to improve the accuracy and speed. Finally, the parameters of the convolutional and normalization layers of the trained model are homogeneously merged to further reduce the model processing load and to improve the detection speed. Experimental results on self-built forest-fire and smoke datasets show that this algorithm has high detection accuracy and fast detection speed, with average accuracy of fire up to 90.5% and smoke up to 84.3%, and detection speed up to 75 FPS (frames per second transmission), which can meet the requirements of real-time and efficient fire detection.
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CiteScore
6.30
自引率
0.00%
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0
审稿时长
7 weeks
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