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Ultra-high definition benchmark for zero-shot image reconstruction evaluation.

Dataset Description

  • Total images: 2 293 at 2K resolution
  • Source datasets: HRSOD, LIU4k, UAVid, UHDM, UHRSD
  • Resolution filter: Only images ≥ 2560 × 1440 included
  • Purpose: Zero-shot image reconstruction benchmarking.
  • license: cc-by-sa-4.0

Dataset Sources

Dataset Leaderboard

Call for Submissions! We're continuously expanding our public benchmark leaderboard and welcome contributions from the community.

Feel free to suggest other VQVAEs or VAEs. We're happy to assist with the evaluation. We also invite you to share your reconstruction results to be included in our leaderboard.

Method Type Ratio rFID↓ PSNR↑
SD-VAE Continuous 16 1.07 26.86
VQGAN Discrete 16 5.95 22.91
LlamaGen Discrete 16 5.59 23.90
OpenMagvit2 Discrete 16 4.18 23.91
VAR Discrete 16 9.85 21.79
MGVQ-f16c32-g4 Discrete 16 1.59 28.27

Dataset Structure

UHDBench/
├── HRSOD_release/
├── LIU4k/
├── uavid_test/
├── UHDM/
├── HRSD_TE/
└── UHDBench.json # json file for image sources and paths

Dataset Creation

Source data producers

  • HRSOD & UHRSD: By Xie et al. in “Pyramid Grafting Network for One-Stage High Resolution Saliency Detection”
  • LIU4K: By Liu et al. in “A Comprehensive Benchmark for Single Image Compression Artifact Reduction”
  • UAVid: By Lyuet al. in “UAVid: A semantic segmentation dataset for UAV imagery”
  • UHDM: By Yu et al. in “Towards efficient and scale-robust ultra-high-definition image demoireing”

Source Data Licenses

  • HRSOD & UHRSD: MIT
  • LIU4K: CC0
  • UAVid: CC-BY-SA-4.0
  • UHDM: Apache 2.0

Citation

Please consider staring UHDBench&MGVQ and citing the following paper if you feel this dataset useful.

@article{jia2025mgvq,
  title={MGVQ: Could VQ-VAE Beat VAE? A Generalizable Tokenizer with Multi-group Quantization},
  author={Jia, Mingkai and Yin, Wei and Hu, Xiaotao and Guo, Jiaxin and Guo, Xiaoyang and Zhang, Qian and Long, Xiao-Xiao and Tan, Ping},
  journal={arXiv preprint arXiv:2507.07997},
  year={2025}
}
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