基于 YOLO 的地面和航空图像烟雾和野火探测模型

Fire Pub Date : 2024-04-14 DOI:10.3390/fire7040140
Leon Augusto Okida Gonçalves, Rafik Ghali, Moulay A. Akhloufi
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引用次数: 0

摘要

野火对森林生物多样性和人类生活造成负面影响。它们的蔓延速度也非常快。烟雾和火灾的早期检测在提高灭火行动效率方面发挥着至关重要的作用。深度学习技术可用于检测火灾和烟雾。然而,由于烟和火的形状、大小和颜色各不相同,对它们的检测是一项具有挑战性的任务。本文采用并实现了最新的基于 YOLO 的算法,用于检测和定位地面和航空图像中的烟雾和野火。值得注意的是,YOLOv7x 模型的 mAP(平均精度)得分高达 80.40%,检测速度极快,在检测烟雾和野火方面的表现优于基线模型。YOLOv8s 在仅识别和定位野火烟雾方面的 mAP 高达 98.10%。这些模型证明了它们在处理各种挑战性场景方面的巨大潜力,这些场景包括:检测小范围的火灾和烟雾区域;不同的火灾和烟雾特征(如形状、大小和颜色);复杂的背景(可能包括不同的地形、天气条件和植被);处理烟雾、雾和云之间的视觉相似性以及火灾、照明和太阳眩光之间的视觉相似性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
YOLO-Based Models for Smoke and Wildfire Detection in Ground and Aerial Images
Wildland fires negatively impact forest biodiversity and human lives. They also spread very rapidly. Early detection of smoke and fires plays a crucial role in improving the efficiency of firefighting operations. Deep learning techniques are used to detect fires and smoke. However, the different shapes, sizes, and colors of smoke and fires make their detection a challenging task. In this paper, recent YOLO-based algorithms are adopted and implemented for detecting and localizing smoke and wildfires within ground and aerial images. Notably, the YOLOv7x model achieved the best performance with an mAP (mean Average Precision) score of 80.40% and fast detection speed, outperforming the baseline models in detecting both smoke and wildfires. YOLOv8s obtained a high mAP of 98.10% in identifying and localizing only wildfire smoke. These models demonstrated their significant potential in handling challenging scenarios, including detecting small fire and smoke areas; varying fire and smoke features such as shape, size, and colors; the complexity of background, which can include diverse terrain, weather conditions, and vegetation; and addressing visual similarities among smoke, fog, and clouds and the the visual resemblances among fire, lighting, and sun glare.
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