论文标题
洪水严重性从志愿地理信息中映射,通过从包含人的图像中解释水位:哈维飓风的案例研究
Flood severity mapping from Volunteered Geographic Information by interpreting water level from images containing people: a case study of Hurricane Harvey
论文作者
论文摘要
随着城市化的增加,近年来,监测和分析城市洪水事件的兴趣和需求越来越大。作为新的数据源,社交媒体可以提供实时信息进行洪水监测。带有位置的社交媒体帖子通常被称为志愿地理信息(VGI),可以揭示此类事件的空间模式。由于在社交媒体上比以往任何时候都共享更多的图像,因此最近的研究集中在与洪水相关的帖子中提取图像,除了文本外分析图像。除了仅将帖子分类为洪水是否相关,更详细的信息,例如洪水严重程度也可以根据图像解释提取。但是,它的解决方案较少,尚未应用于洪水严重性映射。 在本文中,我们提出了一个新颖的三步过程,以提取和绘制洪水严重性信息。首先,借助训练的卷积神经网络作为特征提取器,取回相关图像。其次,通过观察身体部位与部分淹没之间的关系,将包含人员的图像进一步分为四个严重程度,即,图像根据水位相对于不同的身体部位(即踝关节,膝盖,臀部和胸部)进行分类。最后,推文的位置用于生成估计洪水范围和严重程度的图。该过程应用于2017年哈维飓风期间收集的图像数据集,作为概念证明。结果表明,VGI可以用作对洪水范围映射的遥感观察的补充,并且是有益的,尤其是对基础设施通常会阻塞水的城市地区。根据提取的水位信息,可以为紧急响应的早期阶段提供综合洪水严重性的概述。
With increasing urbanization, in recent years there has been a growing interest and need in monitoring and analyzing urban flood events. Social media, as a new data source, can provide real-time information for flood monitoring. The social media posts with locations are often referred to as Volunteered Geographic Information (VGI), which can reveal the spatial pattern of such events. Since more images are shared on social media than ever before, recent research focused on the extraction of flood-related posts by analyzing images in addition to texts. Apart from merely classifying posts as flood relevant or not, more detailed information, e.g. the flood severity, can also be extracted based on image interpretation. However, it has been less tackled and has not yet been applied for flood severity mapping. In this paper, we propose a novel three-step process to extract and map flood severity information. First, flood relevant images are retrieved with the help of pre-trained convolutional neural networks as feature extractors. Second, the images containing people are further classified into four severity levels by observing the relationship between body parts and their partial inundation, i.e. images are classified according to the water level with respect to different body parts, namely ankle, knee, hip, and chest. Lastly, locations of the Tweets are used for generating a map of estimated flood extent and severity. This process was applied to an image dataset collected during Hurricane Harvey in 2017, as a proof of concept. The results show that VGI can be used as a supplement to remote sensing observations for flood extent mapping and is beneficial, especially for urban areas, where the infrastructure is often occluding water. Based on the extracted water level information, an integrated overview of flood severity can be provided for the early stages of emergency response.