CNN Based Approach for Post Disaster Damage Assessment

Srijan Nag, Tamal Pal, Souvik Basu, S. Bit
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引用次数: 3

Abstract

After any disaster, the Government rehabilitates the victims based on the severity of the damage caused to their properties. Since a huge number of rehabilitation claims flow in after the disaster, it takes up a lot of manual labor in inspecting and validating the claims along with deciding the amount of rehabilitation to be granted. Moreover, such manual inspection leads to a lack of transparency. In recent years, social media posts, text, and images have become a rich source of post-disaster situational information that may be useful in assessing damage at a low cost. Most of the existing research explores the use of social media text for extracting situational information useful for disaster response. The usage of social media images to assess disaster damage is limited. In this paper, we propose a convolutional neural network-based approach to locate damage in a disaster image and to quantify the degree of the damage. The proposed damage assessment system categorizes images of earthquake-affected buildings and decides the severity of the damage caused by the earthquake. Our proposed approach enables the use of social media images for post-disaster damage assessment and provides an inexpensive and feasible alternative to the more expensive GIS approach. Our approach exhibits high accuracy in classifying earthquake-affected buildings and determining the severity of damage at a negligible loss.
基于CNN的灾后损害评估方法
在任何灾难发生后,政府都会根据受害者财产受损的严重程度为他们提供康复服务。由于灾后大量的康复索赔涌入,在审查和核实索赔以及确定康复金额方面需要大量的人工劳动。此外,这种人工检查导致缺乏透明度。近年来,社交媒体帖子、文本和图像已成为灾后情景信息的丰富来源,可能有助于以低成本评估损失。现有的大多数研究都在探索使用社交媒体文本来提取对灾害响应有用的情景信息。利用社交媒体上的图片来评估灾害损失是有限的。在本文中,我们提出了一种基于卷积神经网络的方法来定位灾害图像中的损害并量化损害程度。提出的震害评估系统对受地震影响的建筑物图像进行分类,并确定地震造成的破坏程度。我们提出的方法能够使用社会媒体图像进行灾后损害评估,并为更昂贵的GIS方法提供了一种廉价且可行的替代方案。我们的方法在对受地震影响的建筑物进行分类和以可忽略不计的损失确定损坏的严重程度方面显示出很高的准确性。
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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