Abstract
The development of a system that monitors social media continuously for general landslide-related content using a landslide classification model to identify and retain the most relevant information is described and validated. The system harvests photographs in real-time from these data and tags each image as landslide or not-landslide. A training model was developed with input from computer scientists, geologists (landslide specialists) and social media specialists to establish a large image dataset that has then been applied to the live Twitter data stream. The preliminary model was developed by training a convolutional neural network on the dataset. Quantitative verification of the system's performance during a real-world deployment shows that the system can detect landslide reports with Precision = 76%. The demonstrator model is currently running live https://landslide-aidr.qcri.org/service.php; the next stage of development will incorporate stakeholder and user feedback.
Original language | English |
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Article number | 103089 |
Number of pages | 14 |
Journal | International Journal of Disaster Risk Reduction |
Volume | 77 |
DOIs | |
Publication status | Published - Jul 2022 |
Keywords
- 6 max)
- Artificial intelligence
- Database
- Image-labelling
- Landslides
- Triggered-landslides