一种基于无人机双峰图像的轻型森林火灾探测方法

Lingxia Mu;Yichi Yang;Youmin Zhang;Xianghong Xue;Nan Feng
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引用次数: 0

摘要

这封信介绍了一种轻量级的方法,用于探测森林火灾,该方法使用由无人驾驶飞行器(UAV)捕获的双模态遥感图像。目标是在计算资源受限的无人机平台上实现有效的火力监视。本文提出的检测网络基于改进的YOLOv8,同时使用RGB图像和热图像作为网络输入。设计了一种轻量级的双模态特征融合模块——双模态融合模块(dual-modal fusion module, DFM),将RGB特征和热特征有效地结合起来。YOLOv8中现有的C2f模块被轻量级模块C2f- f取代,同时增加了无参数注意力模块SimAM。这种改进在最小化模型参数的同时提高了模型的检测性能。在FLAME 2数据集上的评价实验结果表明,本文提出的双模态森林火灾探测方法准确率达到98.4%,模型大小仅为2.9 MB,与其他主流方法相比,在准确率和参数数量之间取得了较好的平衡。此外,在iCrest 2-s边缘计算设备上,检测速度达到了20.67帧/秒(FPS),进一步证实了这种轻量级方法满足了森林火灾的实时检测要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lightweight Forest Fire Detection Method Based on UAV Dual-Modal Images
This letter presents a lightweight method for detecting forest fires using dual-modal remote sensing images captured by an uncrewed aerial vehicle (UAV). The aim is to achieve efficient fire monitoring on a computationally resource-constrained UAV platform. The proposed detection network is based on the improved YOLOv8, which uses RGB image and thermal image as network input at the same time. A lightweight dual-modal feature fusion module named dual-modal fusion module (DFM) is designed to effectively combine RGB and thermal features. The existing C2f module in YOLOv8 was replaced by the lightweight module C2f-F, along with the addition of the parameter-free attention module SimAM. This improvement improves the detection performance of the model while minimizing the model parameters. The evaluation experimental results on the FLAME 2 dataset show that the accuracy of the proposed dual-modal forest fire detection method reaches 98.4%, and the model size is only 2.9 MB, which achieves a good balance between accuracy and number of parameters compared with other mainstream methods. In addition, on the iCrest 2-s edge computing device, the detection speed reaches 20.67 frames per second (FPS), further confirming that this lightweight approach satisfies the real-time detection requirements for forest fires.
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