Bridging Supervision Gaps: A Unified Framework for Remote Sensing Change Detection
About
Change detection (CD) aims to identify surface changes from multi-temporal remote sensing imagery. In real-world scenarios, Pixel-level change labels are expensive to acquire, and existing models struggle to adapt to scenarios with diverse annotation availability. To tackle this challenge, we propose a unified change detection framework (UniCD), which collaboratively handles supervised, weakly-supervised, and unsupervised tasks through a coupled architecture. UniCD eliminates architectural barriers through a shared encoder and multi-branch collaborative learning mechanism, achieving deep coupling of heterogeneous supervision signals. Specifically, UniCD consists of three supervision-specific branches. In the supervision branch, UniCD introduces the spatial-temporal awareness module (STAM), achieving efficient synergistic fusion of bi-temporal features. In the weakly-supervised branch, we construct change representation regularization (CRR), which steers model convergence from coarse-grained activations toward coherent and separable change modeling. In the unsupervised branch, we propose semantic prior-driven change inference (SPCI), which transforms unsupervised tasks into controlled weakly-supervised path optimization. Experiments on mainstream datasets demonstrate that UniCD achieves optimal performance across three tasks. It exhibits significant accuracy improvements in weakly and unsupervised scenarios, surpassing current state-of-the-art by 12.72% and 12.37% on LEVIR-CD, respectively.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Change Detection | LEVIR-CD (test) | F1 Score77.8 | 357 | |
| Change Detection | WHU-CD (test) | IoU61.14 | 286 | |
| Change Detection | LEVIR-CD | F1 Score92.1 | 188 | |
| Change Detection | WHU-CD | IoU88.57 | 133 | |
| Remote Sensing Change Detection | CLCD (test) | F1 Score59.1 | 61 | |
| Remote Sensing Change Detection | CLCD | F1 Score75.94 | 32 |