You need to agree to share your contact information to access this dataset

This repository is publicly accessible, but you have to accept the conditions to access its files and content.

Log in or Sign Up to review the conditions and access this dataset content.

Multi-config Radiomap Dataset and Pretrained Models for U6G XL-MIMO

This repository provides the public release of the Multi-config Radiomap Dataset and pretrained models for U6G / XL-MIMO radiomap prediction.

It includes:

  • a large-scale radiomap dataset across 800 urban scenes
  • multiple frequency bands and array configurations
  • beam-map-related benchmark resources
  • pretrained models for benchmark tasks

Links

Contents

Files in this repository

  • Dataset_*.zip
    Main dataset package, including radiomap-related data and associated resources.

  • Pretrained_Model_*.zip
    Pretrained models for benchmark tasks.

  • metadata.csv
    Lightweight metadata index for preview and quick inspection.

Dataset Summary

This project is designed for studying:

  • multi-configuration radiomap prediction
  • cross-configuration generalization
  • cross-environment generalization
  • beam-aware radiomap modeling
  • sparse radiomap reconstruction

Quick facts

  • Scenes: 800
  • Frequency bands: 1.8 / 2.6 / 3.5 / 4.9 / 6.7 GHz
  • TX antenna scale: up to 32x32 UPA
  • Beam settings: 1 / 8 / 16 / 64 beams

Intended Usage

This dataset is intended for:

  • benchmark evaluation of radiomap prediction methods
  • studying generalization across unseen array configurations
  • studying generalization across unseen environments
  • evaluating physics-informed features such as beam maps
  • reproducing the results of the associated benchmark project

Download and Usage

Download the released zip packages from the Files and versions tab.

For code, preprocessing, training, evaluation, and benchmark usage, please refer to:

Repository Structure

The released resources are organized around:

  • dataset files
  • pretrained model files
  • project documentation
  • benchmark code in the GitHub repository

Citation

If you use this dataset or the pretrained models, please cite the associated project and paper.

@misc{To be added,
  title        = {U6G XL-MIMO Radiomap Prediction: Multi-config Dataset and Beam Map Approach},
  author       = {Xiaojie Li and collaborators},
  year         = {2026},
  howpublished = {\url{https://lxj321.github.io/MulticonfigRadiomapDataset/}}
}

Formal citation information will be updated after the paper metadata is finalized.

License

  • Dataset: CC BY 4.0
  • Code: see the GitHub repository license
  • Pretrained models: released together with this dataset repository unless otherwise specified

Contact

Xiaojie Li xiaojieli@seu.edu.cn xiaojieli@nuaa.edu.cn

Downloads last month
12