CVPR2026-Papers-with-Code and top-cvpr-2025-papers

These are complementary resources that serve different temporal purposes—one aggregates papers across multiple recent conference years (2026) while the other focuses on curated highlights from a specific conference year (2025)—allowing researchers to either survey trends over time or dive deep into a particular year's most impactful work.

Maintenance 10/25
Adoption 10/25
Maturity 8/25
Community 21/25
Maintenance 2/25
Adoption 10/25
Maturity 15/25
Community 15/25
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Stars: 850
Forks: 51
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Language: Python
License: CC0-1.0
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About CVPR2026-Papers-with-Code

amusi/CVPR2026-Papers-with-Code

CVPR 2026 论文和开源项目合集

This resource compiles the latest research papers and associated open-source code from CVPR 2026, a leading conference in computer vision. It allows researchers and practitioners to quickly find cutting-edge methods for tasks like 3D vision, object detection, image generation, and medical image analysis. Anyone working in computer vision research, deep learning, or applied AI could use this to stay updated on the newest advancements.

computer-vision-research deep-learning AI-research image-processing 3D-vision

About top-cvpr-2025-papers

SkalskiP/top-cvpr-2025-papers

About This repository is a curated collection of the most exciting and influential CVPR 2025 papers. 🔥 [Paper + Code + Demo]

This collection helps researchers and practitioners in computer vision quickly find the most impactful papers from the CVPR 2025 conference. It takes the massive volume of accepted papers and filters them into a curated list, providing direct links to papers, code, videos, and demos. Anyone working in computer vision research or application development would benefit from this resource.

Computer Vision Research CVPR Conference Academic Paper Curation 3D Vision Depth Estimation

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