2024
DOI: 10.1007/s43503-024-00034-6
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Evaluating fine tuned deep learning models for real-time earthquake damage assessment with drone-based images

Furkan Kizilay,
Mina R. Narman,
Hwapyeong Song
et al.

Abstract: Earthquakes pose a significant threat to life and property worldwide. Rapid and accurate assessment of earthquake damage is crucial for effective disaster response efforts. This study investigates the feasibility of employing deep learning models for damage detection using drone imagery. We explore the adaptation of models like VGG16 for object detection through transfer learning and compare their performance to established object detection architectures like YOLOv8 (You Only Look Once) and Detectron2. Our eva… Show more

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