Lack of global data inventories obstructs scientific modeling of and response to landslide hazards which are oftentimes deadly and costly. To remedy this limitation, new approaches suggest solutions based on citizen science that requires active participation. However, as a non-traditional data source, social media has been increasingly used in many disaster response and management studies in recent years. Inspired by this trend, we propose to capitalize on social media data to mine landslide-related information automatically with the help of artificial intelligence (AI) techniques. Specifically, we develop a state-of-the-art computer vision model to detect landslides in social media image streams in real time. To that end, we create a large landslide image dataset labeled by experts and conduct extensive model training experiments. The experimental results indicate that the proposed model can be deployed in an online fashion to support global landslide susceptibility maps and emergency response.
翻译:由于缺乏全球数据清查,难以对往往致命和代价高昂的滑坡灾害进行科学建模和应对。为纠正这一限制,新办法提出了基于公民科学的解决办法,但作为一种非传统的数据来源,近年来许多灾害应对和管理研究越来越多地使用社交媒体。受这一趋势的启发,我们提议利用社交媒体数据,在人工智能技术的帮助下,自动利用与滑坡有关的信息来挖掘与滑坡有关的信息。具体地说,我们开发了最先进的计算机愿景模型,实时探测社会媒体图像流中的滑坡。为此,我们创建了由专家标注的大型滑坡图像数据集,并进行了广泛的示范培训实验。实验结果表明,拟议的模型可以在线应用,以支持全球滑坡易感地图和应急反应。