Forest Fire Detection and Recognition Using YOLOv8 Algorithms from UAVs Images

Xuanbo Jia, Yike Wang, Taiming Chen
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引用次数: 1

Abstract

In recent years, forest fires have been frequent in many places, but there is a lack of effective and systematic methods to detect forest fires. Therefore, this paper proposes a forest fire detection strategy: a system that can be built with a large number of pre-processed and pre-trained datasets, receive images captured by UAVs and calculate the fire occurrence rate through algorithms and quickly pass them to users, thus speeding up possible rescue operations. For the system equipped with algorithmic models, this paper conducts an in-depth study of the YOLO series technology in image recognition. Based on the dataset of high-definition forest fire images captured by drones, the YOLOv8, YOLOv7 and YOLOv5 models are analyzed and compared from two perspectives: the accuracy of fire detection and the speed of model training, and it is found that YOLOv8 has the best accuracy and achieves a good balance between accuracy and computational speed. Based on this result, the proposed model is dependent on the nano-sized YOLOv8 algorithm, which has a fairly high accuracy, closely matches the original fire-containing test image, and still has a stable performance in detecting small fires. This algorithmic model in combination with the above system can help to accurately identify the occurrence of fires and thus mitigate the damage to forest resources.
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基于YOLOv8算法的无人机图像森林火灾检测与识别
近年来,许多地方森林火灾频发,但缺乏有效、系统的森林火灾检测方法。因此,本文提出了一种森林火灾探测策略:利用大量经过预处理和预训练的数据集构建系统,接收无人机捕获的图像,通过算法计算火灾发生率,并快速传递给用户,从而加快可能的救援行动。对于配备算法模型的系统,本文对YOLO系列技术在图像识别中的应用进行了深入的研究。基于无人机捕获的高清森林火灾图像数据集,从火灾探测精度和模型训练速度两个角度对YOLOv8、YOLOv7和YOLOv5模型进行了分析和比较,发现YOLOv8模型的精度最好,在精度和计算速度之间取得了很好的平衡。基于这一结果,所提出的模型依赖于纳米级的YOLOv8算法,该算法具有相当高的精度,与原始含火测试图像匹配紧密,并且在检测小火灾时仍然具有稳定的性能。该算法模型与上述系统相结合,有助于准确识别火灾的发生,从而减轻对森林资源的破坏。
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