PhyUnfold-Net: Advancing Remote Sensing Change Detection with Physics-Guided Deep Unfolding
About
Bi-temporal change detection is highly sensitive to acquisition discrepancies, including illumination, season, and atmosphere, which often cause false alarms. We observe that genuine changes exhibit higher patch-wise singular-value entropy (SVE) than pseudo changes in the feature-difference space. Motivated by this physical prior, we propose PhyUnfold-Net, a physics-guided deep unfolding framework that formulates change detection as an explicit decomposition problem. The proposed Iterative Change Decomposition Module (ICDM) unrolls a multi-step solver to progressively separate mixed discrepancy features into a change component and a nuisance component. To stabilize this process, we introduce a staged Exploration-and-Constraint loss (S-SEC), which encourages component separation in early steps while constraining nuisance magnitude in later steps to avoid degenerate solutions. We further design a Wavelet Spectral Suppression Module (WSSM) to suppress acquisition-induced spectral mismatch before decomposition. Experiments on four benchmarks show improvements over state-of-the-art methods, with gains under challenging conditions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Change Detection | LEVIR-CD | F1 Score93.05 | 232 | |
| Change Detection | WHU-CD | IoU87.5 | 202 | |
| Change Detection | LEVIR+-CD (test) | F1 Score85.82 | 62 | |
| Change Detection | S2Looking | Precision71.85 | 23 |