Learning Subglacial Bed Topography from Sparse Radar with Physics-Guided Residuals
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UMBC Cybersecurity Institute
UMBC Big Data Analytics Lab
UMBC iHARP NSF HDR Institute for Harnessing Data and Model Revolution in the Polar Regions
UMBC Cybersecurity Institute
UMBC Multi-Data (MData) Lab
UMBC Multi-Data (MData) Lab
UMBC Big Data Analytics Lab
Computer Science - Computer Vision and Pattern Recognition
UMBC iHARP NSF HDR Institute for Harnessing Data and Model Revolution in the Polar Regions
UMBC Big Data Analytics Lab
UMBC iHARP NSF HDR Institute for Harnessing Data and Model Revolution in the Polar Regions
UMBC Cybersecurity Institute
UMBC Multi-Data (MData) Lab
UMBC Multi-Data (MData) Lab
UMBC Big Data Analytics Lab
Computer Science - Computer Vision and Pattern Recognition
UMBC iHARP NSF HDR Institute for Harnessing Data and Model Revolution in the Polar Regions
Abstract
Accurate subglacial bed topography is essential for ice sheet modeling, yet radar observations are sparse and uneven. We propose a physics-guided residual learning framework that predicts bed thickness residuals over a BedMachine prior and reconstructs bed from the observed surface. A DeepLabV3+ decoder over a standard encoder (e.g.,ResNet-50) is trained with lightweight physics and data terms: multi-scale mass conservation, flow-aligned total variation, Laplacian damping, non-negativity of thickness, a ramped prior-consistency term, and a masked Huber fit to radar picks modulated by a confidence map. To measure real-world generalization, we adopt leakage-safe blockwise hold-outs (vertical/horizontal) with safety buffers and report metrics only on held-out cores. Across two Greenland sub-regions, our approach achieves strong test-core accuracy and high structural fidelity, outperforming U-Net, Attention U-Net, FPN, and a plain CNN. The residual-over-prior design, combined with physics, yields spatially coherent, physically plausible beds suitable for operational mapping under domain shift.
