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