FFYOLO:基于 YOLOv8 的轻量级森林火灾探测模型

Fire Pub Date : 2024-03-16 DOI:10.3390/fire7030093
Bensheng Yun, Yanan Zheng, Zhenyu Lin, Tao Li
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引用次数: 0

摘要

森林是人类赖以生存的重要资源,而森林火灾是对森林保护的严重威胁。因此,火灾和烟雾的早期检测尤为重要。基于人工设置的特征提取方法,机器学习森林火灾检测方法的检测精度有限,无法处理复杂场景。同时,由于计算成本较高,大多数深度学习方法难以部署。针对这些问题,本文提出了一种基于 YOLOv8(FFYOLO)的轻量级森林火灾检测模型。首先,为了更好地提取火和烟的特征,提出了通道先验扩张注意模块(CPDA)。其次,设计了一种新的检测头--混合分类检测头(MCDH)。此外,还引入了 MPDIoU,以提高模型的回归和分类精度。然后,在颈部部分,应用轻量级 GSConv 模块来减少参数,同时保持模型的准确性。最后,在训练阶段使用知识蒸馏策略来增强模型的泛化能力,减少误检。实验结果表明,与原始模型相比,FFYOLO 在自定义森林火灾数据集上实现了 88.8% 的 mAP0.5,比原始模型提高了 3.4%,参数降低了 25.3%,每秒帧数(FPS)提高了 9.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FFYOLO: A Lightweight Forest Fire Detection Model Based on YOLOv8
Forest is an important resource for human survival, and forest fires are a serious threat to forest protection. Therefore, the early detection of fire and smoke is particularly important. Based on the manually set feature extraction method, the detection accuracy of the machine learning forest fire detection method is limited, and it is unable to deal with complex scenes. Meanwhile, most deep learning methods are difficult to deploy due to high computational costs. To address these issues, this paper proposes a lightweight forest fire detection model based on YOLOv8 (FFYOLO). Firstly, in order to better extract the features of fire and smoke, a channel prior dilatation attention module (CPDA) is proposed. Secondly, the mixed-classification detection head (MCDH), a new detection head, is designed. Furthermore, MPDIoU is introduced to enhance the regression and classification accuracy of the model. Then, in the Neck section, a lightweight GSConv module is applied to reduce parameters while maintaining model accuracy. Finally, the knowledge distillation strategy is used during training stage to enhance the generalization ability of the model and reduce the false detection. Experimental outcomes demonstrate that, in comparison to the original model, FFYOLO realizes an mAP0.5 of 88.8% on a custom forest fire dataset, which is 3.4% better than the original model, with 25.3% lower parameters and 9.3% higher frames per second (FPS).
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