Tracing Copied Pixels and Regularizing Patch Affinity in Copy Detection
About
Image Copy Detection (ICD) aims to identify manipulated content between image pairs through robust feature representation learning. While self-supervised learning (SSL) has advanced ICD systems, existing view-level contrastive methods struggle with sophisticated edits due to insufficient fine-grained correspondence learning. We address this limitation by exploiting the inherent geometric traceability in edited content through two key innovations. First, we propose PixTrace - a pixel coordinate tracking module that maintains explicit spatial mappings across editing transformations. Second, we introduce CopyNCE, a geometrically-guided contrastive loss that regularizes patch affinity using overlap ratios derived from PixTrace's verified mappings. Our method bridges pixel-level traceability with patch-level similarity learning, suppressing supervision noise in SSL training. Extensive experiments demonstrate not only state-of-the-art performance (88.7% uAP / 83.9% RP90 for matcher, 72.6% uAP / 68.4% RP90 for descriptor on DISC21 dataset) but also better interpretability over existing methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Copy Detection (Matcher) | DISC 2021 (test) | mAP88.7 | 17 | |
| Image Copy Detection (Descriptor) | DISC 2021 (test) | μAP72.6 | 14 | |
| Copy detection | AnyPattern (test) | µAP31.66 | 8 | |
| Image Copy Detection | NDEC | µAP0.725 | 3 | |
| Video Copy Detection | VSC 2022 (train) | Descriptor mAP71.57 | 3 |