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Localizing and Quantifying Damage in Social Media Images

机译:定位和量化社交媒体图像中的损害

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摘要

Traditional post-disaster assessment of damage heavily relies on expensive GIS data, especially remote sensing image data. In recent years, social media has become a rich source of disaster information that may be useful in assessing damage at a lower cost. Such information includes text (e.g., tweets) or images posted by eyewitnesses of a disaster. Most of the existing research explores the use of text in identifying situational awareness information useful for disaster response teams. The use of social media images to assess disaster damage is limited. In this paper, we propose a novel approach, based on convolutional neural networks and class activation maps, to locate damage in a disaster image and to quantify the degree of the damage. Our proposed approach enables the use of social network images for post-disaster damage assessment, and provides an inexpensive and feasible alternative to the more expensive GIS approach.
机译:传统的灾后评估严重依赖昂贵的GIS数据,尤其是遥感图像数据。近年来,社交媒体已成为灾难信息的丰富来源,可用于以较低的成本评估损害。这些信息包括灾难目击者张贴的文本(例如,推文)或图像。现有的大多数研究都探索了使用文本来识别对灾难响应团队有用的态势感知信息。社交媒体图像用于评估灾难破坏的用途是有限的。在本文中,我们提出了一种基于卷积神经网络和类激活图的新颖方法,可以在灾难图像中定位损坏并量化损坏的程度。我们提出的方法可以将社交网络图像用于灾后损失评估,并为更昂贵的GIS方法提供了一种廉价且可行的替代方法。

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