Remote Sensing Imagery for Flood Detection: Exploration of Augmentation Strategies
By: Vladyslav Polushko , Damjan Hatic , Ronald Rösch and more
Potential Business Impact:
Finds floods faster using smart computer pictures.
Floods cause serious problems around the world. Responding quickly and effectively requires accurate and timely information about the affected areas. The effective use of Remote Sensing images for accurate flood detection requires specific detection methods. Typically, Deep Neural Networks are employed, which are trained on specific datasets. For the purpose of river flood detection in RGB imagery, we use the BlessemFlood21 dataset. We here explore the use of different augmentation strategies, ranging from basic approaches to more complex techniques, including optical distortion. By identifying effective strategies, we aim to refine the training process of state-of-the-art Deep Learning segmentation networks.
Similar Papers
AI Driven Water Segmentation with deep learning models for Enhanced Flood Monitoring
CV and Pattern Recognition
Spots floods faster using computer pictures.
AIFloodSense: A Global Aerial Imagery Dataset for Semantic Segmentation and Understanding of Flooded Environments
CV and Pattern Recognition
Helps computers spot floods from pictures worldwide.
A Comprehensive Survey on Deep Learning Solutions for 3D Flood Mapping
CV and Pattern Recognition
Shows where floods will be, how deep.