A Review on Natural Disaster Detection in Social Media and Satellite Imagery Using Machine Learning and Deep Learning

Swapandeep Kaur, Sheifali Gupta, Swati Singh, Tanvi Arora
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引用次数: 2

Abstract

A disaster is a devastating incident that causes a serious disruption of the functions of a community. It leads to loss of human life and environmental and financial losses. Natural disasters cause damage and privation that could last for months and even years. Immediate steps need to be taken and social media platforms like Twitter help to provide relief to the affected public. However, it is difficult to analyze high-volume data obtained from social media posts. Therefore, the efficiency and accuracy of useful data extracted from the enormous posts related to disaster are low. Satellite imagery is gaining popularity because of its ability to cover large temporal and spatial areas. But, both the social media and satellite imagery require the use of automated methods to avoid the errors caused by humans. Deep learning and machine learning have become extremely popular for text and image classification tasks. In this paper, a review has been done on natural disaster detection through information obtained from social media and satellite images using deep learning and machine learning.
基于机器学习和深度学习的社交媒体和卫星图像自然灾害检测综述
灾难是造成社区功能严重中断的破坏性事件。它导致人命损失、环境和经济损失。自然灾害造成的破坏和贫困可能持续数月甚至数年。需要立即采取措施,像推特这样的社交媒体平台帮助向受影响的公众提供救济。然而,很难分析从社交媒体帖子中获得的大量数据。因此,从大量与灾害相关的帖子中提取有用数据的效率和准确性都很低。卫星图像由于能够覆盖大的时间和空间区域而越来越受欢迎。但是,社交媒体和卫星图像都需要使用自动化方法来避免人为造成的错误。深度学习和机器学习在文本和图像分类任务中已经变得非常流行。本文回顾了利用深度学习和机器学习从社交媒体和卫星图像中获取信息进行自然灾害检测的方法。
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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