Assessing flood severity from georeferenced photos

Jorge Pereira, João Monteiro, J. Estima, Bruno Martins
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引用次数: 6

Abstract

The use of georeferenced social media data in disaster and crisis management is increasing rapidly. Particularly in connection to flooding events, georeferenced images shared by citizens can provide situational awareness to emergency responders, as well as assistance to financial loss assessment, giving information that would otherwise be very hard to collect through conventional sensors or remote sensing products. Moreover, recent advances in computer vision and deep learning can perhaps support the automated analysis of these data. In this paper, focusing on ground-level images taken by humans during flooding events, we evaluate the use of deep convolutional neural networks for (i) discriminating images showing direct evidence of a flood, and (ii) estimating the severity of the flooding event. Considering distinct datasets (i.e., the European Flood 2013 dataset, and data from different editions of the MediaEval Multimedia Satellite Task), we specifically evaluated models based on the DenseNet and EfficientNet neural network architectures, concluding that these models for image classification can achieve a very high accuracy on both tasks.
根据地理参考照片评估洪水严重程度
在灾害和危机管理中使用地理参考社交媒体数据的情况正在迅速增加。特别是在洪水事件方面,公民分享的地理参考图像可以为应急人员提供态势感知,并有助于经济损失评估,提供通过传统传感器或遥感产品很难收集的信息。此外,计算机视觉和深度学习的最新进展也许可以支持这些数据的自动分析。在本文中,重点关注洪水事件期间人类拍摄的地面图像,我们评估了深度卷积神经网络在以下方面的使用:(i)区分显示洪水直接证据的图像,以及(ii)估计洪水事件的严重程度。考虑到不同的数据集(例如,2013年欧洲洪水数据集,以及来自MediaEval多媒体卫星任务不同版本的数据),我们专门评估了基于DenseNet和EfficientNet神经网络架构的模型,得出结论,这些图像分类模型在这两个任务上都可以达到非常高的精度。
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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