Detecting Safe Routes During Floods Using Deep Learning

M. Mathur, Yashi Agarwal, Shubham Pavitra Shah, K. Lavanya
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Abstract

Floods are one of the most devastating and frequently occurring natural disasters throughout the world. Floods can cause blockage of roads and hence create trouble for civilians and authorities to navigate in the flooded area. This paper proposes an automated system that uses a road extraction algorithm to extract roads from satellite images to create a highlighted map of all the available roads during floods. The road extraction algorithm the authors developed uses U-net model architecture, a fully convolutional neural network, to extract roads from aerial images (satellite images and drone images). Convolutional Neural Network is robust to shadows and water streams, able to obtain the characteristics of roads adequately and most importantly, able to produce output quickly, which is necessary for flood evacuations and relief. The developed system can be deployed as an Application Programming Interface or stand-alone system, loaded on drones, which will provide the users with a map highlighting safe paths to traverse the flooded areas.
利用深度学习检测洪水期间的安全路线
洪水是世界上最具破坏性和频繁发生的自然灾害之一。洪水会造成道路堵塞,从而给平民和当局在洪水泛滥地区的航行带来麻烦。本文提出了一种自动化系统,该系统使用道路提取算法从卫星图像中提取道路,以创建洪水期间所有可用道路的高亮地图。作者开发的道路提取算法使用U-net模型架构,一种全卷积神经网络,从航空图像(卫星图像和无人机图像)中提取道路。卷积神经网络对阴影和水流具有鲁棒性,能够充分获取道路特征,最重要的是能够快速产生输出,这对于洪水疏散和救援是必要的。开发的系统可以作为应用程序编程接口或独立系统部署,装载在无人机上,这将为用户提供地图,突出显示穿越洪水地区的安全路径。
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