After significant earthquakes, we can see images posted on social media platforms by individuals and media agencies owing to the mass usage of smartphones these days. These images can be utilized to provide information about the shaking damage in the earthquake region both to the public and research community, and potentially to guide rescue work. This paper presents an automated way to extract the damaged building images after earthquakes from social media platforms such as Twitter and thus identify the particular user posts containing such images. Using transfer learning and ~6500 manually labelled images, we trained a deep learning model to recognize images with damaged buildings in the scene. The trained model achieved good performance when tested on newly acquired images of earthquakes at different locations and ran in near real-time on Twitter feed after the 2020 M7.0 earthquake in Turkey. Furthermore, to better understand how the model makes decisions, we also implemented the Grad-CAM method to visualize the important locations on the images that facilitate the decision.
翻译:在重大地震发生后,我们可以看到个人和媒体机构在社交媒体平台上张贴的图像,因为如今大量使用智能手机,这些图像可用于向公众和研究界提供关于地震地区震动破坏的信息,并有可能指导救援工作。本文展示了从Twitter等社交媒体平台提取地震后受损建筑图像的自动化方法,从而确定了含有此类图像的特定用户站点。我们通过传输学习和~6500手动贴标签图像,培训了一个深层次学习模型,以识别现场受损建筑物的图像。经过培训的模型在测试不同地点新获得的地震图像时取得了良好的绩效,并在2020 M7.0地震后,在推特上几乎实时播放。此外,为了更好地了解模型如何做出决策,我们还采用了Grad-CAM方法,以视觉显示为决策提供便利的图像的重要位置。