Prithvi-Complimentary Adaptive Fusion Encoder (CAFE): unlocking full-potential for flood inundation mapping
Saurabh Kaushik, Lalit Maurya, Beth Tellman

TL;DR
The paper introduces Prithvi-CAFE, a novel fusion encoder that combines GFMs with CNNs to significantly improve flood inundation mapping accuracy, especially in capturing local details.
Contribution
Prithvi-CAFE is a new model that integrates pretrained GFMs with CNN residual branches using attention modules for enhanced flood mapping.
Findings
Achieves state-of-the-art IoU scores on Sen1Flood11 and FloodPlanet datasets.
Outperforms baseline U-Net and other GFMs in flood inundation segmentation.
Effectively captures local details while maintaining long-range dependencies.
Abstract
Geo-Foundation Models (GFMs), have proven effective in diverse downstream applications, including semantic segmentation, classification, and regression tasks. However, in case of flood mapping using Sen1Flood11 dataset as a downstream task, GFMs struggles to outperform the baseline U-Net, highlighting model's limitation in capturing critical local nuances. To address this, we present the Prithvi-Complementary Adaptive Fusion Encoder (CAFE), which integrate Prithvi GFM pretrained encoder with a parallel CNN residual branch enhanced by Convolutional Attention Modules (CAM). Prithvi-CAFE enables fast and efficient fine-tuning through adapters in Prithvi and performs multi-scale, multi-level fusion with CNN features, capturing critical local details while preserving long-range dependencies. We achieve state-of-the-art results on two comprehensive flood mapping datasets: Sen1Flood11 and…
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Taxonomy
TopicsFlood Risk Assessment and Management · Multimodal Machine Learning Applications · Advanced Neural Network Applications
