UAV-based Multi-scale Features Fusion Attention for Fire Detection in Smart City Ecosystems

Tanveer Hussain, Hang Dai, W. Gueaieb, Marco Sicklinger, Giulia De Masi
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引用次数: 2

Abstract

Effective fire detection using vision sensors is a widely accepted challenge in smart cities and rural areas, where forest and building fires significantly contribute to the loss of human lives and properties. Early fire detection using deep learning techniques is emerged to be an effective solution using close-circuit television (CCTV) in smart cities, but it has limited coverage in huge building infrastructures and urban forests. Unmanned Aerial Vehicles (UAV) cover wide areas, but fire detection in visual data captured from UAVs is a challenging task. Therefore, we employ deep multi-scale features from a backbone model and apply attention mechanism for accurate fire detection. The deep features from intermediate layers capture fire regions using spatial object edges information and final layers extract image global representations. The features fusion ensures to represent the image effectively, where the fused features are enhanced using multi-headed self-attention to highlight the most important fire regions. Preliminary experimental results (https://github.com/tanveer-hussain/DMFA-Fire) using UAV fire detection dataset demonstrate effective performance of the proposed model against rivals and consequently present a new deep model's perspective to consider multi layer features for accurate detection performance, thereby providing effective applicability in smart cities environments.
基于无人机多尺度特征融合关注的智慧城市生态系统火灾探测
在智慧城市和农村地区,使用视觉传感器进行有效的火灾探测是一项被广泛接受的挑战,在这些地区,森林和建筑火灾对人类生命和财产损失造成了重大影响。利用深度学习技术进行早期火灾探测是在智慧城市中使用闭路电视(CCTV)的有效解决方案,但在大型建筑基础设施和城市森林中的覆盖范围有限。无人机的覆盖范围很广,但从无人机捕获的视觉数据中进行火灾探测是一项具有挑战性的任务。因此,我们利用骨干模型的深度多尺度特征,并应用注意机制进行准确的火灾探测。中间层的深层特征利用空间物体边缘信息捕获五个区域,最后一层提取图像的全局表示。特征融合保证了图像的有效表示,融合后的特征利用多头自关注增强,突出最重要的火灾区域。使用无人机火灾探测数据集的初步实验结果(https://github.com/tanveer-hussain/DMFA-Fire)证明了所提出的模型对竞争对手的有效性能,从而提供了一个新的深度模型视角,考虑多层特征以获得准确的探测性能,从而在智慧城市环境中提供有效的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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