Quantum-Enhanced Vision Transformer for Flood Detection using Remote Sensing Imagery
arXiv cs.LG / 3/17/2026
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Key Points
- The paper presents a Quantum-Enhanced Vision Transformer for flood detection using remote sensing imagery, merging transformer-based global context with quantum feature extraction.
- It uses a hybrid architecture with parallel pathways: a ViT backbone and a 4-qubit parameterized quantum circuit for localized feature mapping, whose representations are fused for binary classification.
- Experimental results show the quantum-hybrid model outperforms a classical ViT baseline, with accuracy rising from 84.48% to 94.47% and F1-score from 0.841 to 0.944.
- The work demonstrates the potential of quantum-classical hybrids to enhance precision in hydrological monitoring and earth observation applications.
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