Multimodal Dataset for Wireless Channel ML
Multimodal Dataset for Wireless Channel Machine Learning
A richly annotated multimodal dataset combining RF channel measurements, environmental images, and location data — designed to enable machine learning research for channel estimation, LoS/NLoS classification, and environment-aware radio resource management.
Data Modalities
RF Channel Data
Raw channel transfer functions and derived channel parameters including path loss, delay spread, angular spread, and Rician K-factor measured with a MIMO channel sounder.
.mat .csvEnvironmental Images
360° panoramic images captured at each receiver location, providing visual context of the propagation environment for vision-aided channel prediction and scene classification.
.jpg .pngLocation & Map Data
GPS coordinates (latitude, longitude, altitude) for each measurement point along with building geometry data for spatial analysis and environment-aware modeling.
.csv .geojsonSupported ML Tasks
Measurement Scenarios
| Scenario | Environment | Frequency | Measurement Points | LoS / NLoS Label | Image Available |
|---|---|---|---|---|---|
| Scenario A | Urban Outdoor (Macro) | 4.85 GHz | — | Yes | Yes |
| Scenario B | Urban Outdoor (Micro) | 4.85 GHz | — | Yes | Yes |
| Scenario C | Indoor (Office) | — | — | TBD | TBD |
Available Files
| File Name | Contents | Format | Size | |
|---|---|---|---|---|
multimodal_full_v1.zip |
All modalities (RF + Images + GPS) | Mixed | — GB | Requires registration |
rf_channel_data.zip |
RF channel measurements only | .mat / .csv | — MB | Requires registration |
images_360.zip |
360° panoramic images at all RX points | .jpg | — GB | Requires registration |
location_data.zip |
GPS coordinates and building geometry | .csv / .geojson | — MB | Requires registration |
sample_code.zip |
Python & MATLAB data loading scripts | .py / .m | — KB | Requires registration |
README.txt |
Dataset structure, field descriptions, usage guide | .txt | — KB | Requires registration |
Download
This dataset is freely available for academic and research purposes. Please complete the registration form below. The download link will be provided immediately after submission.
Citation
If you use this dataset in your research, please cite the following:
@dataset{kim2024multimodal,
author = {Kim, Minseok and others},
title = {{Multimodal Dataset for Wireless
Channel Machine Learning}},
institution = {Niigata University},
year = {2024},
url = {https://radio.eng.niigata-u.ac.jp/}
}
Related Publications
-
IEEE Access 2021
M. Kim, S. Tang, K. Kumakura, “Fast Double-Directional Full Azimuth Sweep Channel Sounder,” IEEE Access, vol. 9, pp. 80288–80299, Jun. 2021.
DOI Link -
IEEE Access 2023
A. Ghosh, M. Kim, “THz Channel Sounding and Modeling Techniques: An Overview,” IEEE Access, vol. 11, pp. 17823–17856, Feb. 2023.
DOI Link
License & Terms of Use
This dataset is released under the Creative Commons Attribution 4.0 International (CC BY 4.0) license.
- Free to use for academic and non-commercial research
- Redistribution requires attribution to the original source
- Commercial use requires prior written permission
- The dataset is provided “as is” without warranty of any kind
- Do not attempt to re-identify individuals from image data
Contact
For questions regarding the dataset or collaboration inquiries, please contact:
Graduate School of Science and Technology
Niigata University, Japan
