Section 01
[Introduction] Multimodal Disaster Detection System: An Innovative Solution for Intelligent Building Damage Assessment
After a natural disaster, quickly and accurately assessing building damage is crucial for rescue decision-making and post-disaster reconstruction. The disaster-detection project proposes an innovative multimodal AI solution that combines Sentinel satellite optical and SAR imagery, using the Segment Anything Model (SAM) segmentation model and dual-encoder ResNet network to achieve automated intelligent assessment of building damage before and after disasters, addressing issues such as low efficiency and limitations of single data sources in traditional assessment methods.