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Deep learning-based aerial image segmentation with open data for disaster impact assessment

机译:基于深度学习的空中图像分割,具有灾害影响评估的开放数据

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摘要

Satellite images are an extremely valuable resource in the aftermath of natural disasters such as hurricanes and tsunamis where they can be used for risk assessment and disaster management. In order to provide timely and actionable information for disaster response, a framework utilising segmentation neural networks is proposed to identify impacted areas and accessible roads in post-disaster scenarios. The effectiveness of pretraining with ImageNet-for the task of aerial image segmentation has been analysed and performances of popular segmentation models compared. Experimental results show that pre training on ImageNet usually improves the segmentation performance for a number of models. Open data available from OpenStreetMap (OSM) is used for training, forgoing the need for time-consuming manual annotation. The method also makes use of graph theory to update road network data available from OSM and to detect the changes caused by a natural disaster. Extensive experiments on data from the 2018 tsunami that struck Palu, Indonesia show the effectiveness of the proposed framework. ENetSeparable, with 30% fewer parameters compared to ENet, achieved comparable segmentation results to that of the stateof-the-art networks.(c) 2021 Elsevier B.V. All rights reserved.
机译:卫星图像是一种极为宝贵的资源,在飓风和海啸之后,他们可以用于风险评估和灾害管理。为了提供及时和可操作的灾害响应信息,提出了一种利用分割神经网络的框架,以识别灾后场景中受影响的区域和可访问道路。已经分析了与想象成的预先预测的有效性,并且已经分析了空中图像分割的任务,并进行了流行分割模型的性能。实验结果表明,预先培训ImageNet通常提高了许多模型的分割性能。可从OpenStreetMap(OSM)提供的打开数据用于培训,因此需要耗时的手动注释。该方法还利用图形理论来更新从OSM提供的道路网络数据,并检测自然灾害引起的变化。对2018年海啸的数据进行了大量实验,即袭击帕卢,印度尼西亚展示了拟议框架的有效性。 eNETSpable,与Enet相比的参数减少了30%,实现了与最新的网络的相当的分段结果。(c)2021 Elsevier B.v.保留所有权利。

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