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SkalskiP/top-cvpr-2023-papers
This repository is a curated collection of the most exciting and influential CVPR 2023 papers. 🔥 [Paper + Code]
650 62 +0/wk
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computer-vision cvpr cvpr2023 image-segmentation object-detection paper transformers vision-and-language
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| Metric | top-cvpr-2023-papers | self-supervised-depth-completion | open-webui-tools | dress-code |
|---|---|---|---|---|
| Stars | 650 | 652 | 647 | 647 |
| Forks | 62 | 134 | 62 | 78 |
| Weekly Growth | +0 | +0 | +0 | +0 |
| Language | Python | Python | Python | Python |
| Sources | 1 | 1 | 1 | 1 |
| License | CC0-1.0 | MIT | MIT | NOASSERTION |
Capability Radar vs self-supervised-depth-completion
top-cvpr-2023-papers
self-supervised-depth-completion
Maintenance Activity 0
Last code push 311 days ago.
Community Engagement 48
Fork-to-star ratio: 9.5%. Lower fork ratio may indicate passive usage.
Issue Burden 70
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Growth Momentum 30
No measurable growth in the current period (first-day cold start expected).
License Clarity 95
Licensed under CC0-1.0. Permissive — safe for commercial use.
Risk scores are computed from real-time repository data. Higher scores indicate healthier metrics.