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--- |
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license: gpl-3.0 |
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tags: |
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- wifi |
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- mimo |
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- wireless-sensing |
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- CSI |
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- Beamforming-Feedback-Information |
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pretty_name: BeamSense |
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size_categories: |
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- 100B<n<1T |
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--- |
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# BeamSense: MU-MIMO Beamforming Feedback Dataset for Wi-Fi Sensing |
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## Dataset Summary |
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BeamSense is a large-scale MU-MIMO Wi-Fi sensing dataset built upon Beamforming Feedback Information (BFI) and Channel State Information (CSI) collected from commodity 802.11ac devices. |
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The dataset corresponds to the research presented in: |
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- **BeamSense: Rethinking Wireless Sensing with MU-MIMO Wi-Fi Beamforming Feedback (Computer Networks, 2025)** |
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- **BFA-Sense: Learning Beamforming Feedback Angles for Wi-Fi Sensing (PerCom Workshops, 2024)** |
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BeamSense contains synchronized BFI, BF angles, and CSI samples from multiple Wi-Fi stations (STAs) under different environments and orientations. It is designed for: |
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- Human activity recognition with Beamforming Feedback Information (BFI) and CSI |
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- Gesture recognition with Beamforming Feedback Information (BFI) and CSI |
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- Device-free sensing with BFI |
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- Cross-domain generalization |
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- Beamforming Feedback analysis |
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- Beamforming Feedback-based attacks |
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- Wi-Fi sensing algorithm development |
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## Dataset Contents |
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- Raw Beamforming Feedback Packet Captures: Contains BF report packets (BFI), and PHY metadata |
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- Synchronized CSI: Extracted from PCAPs using Nexmon-modified pipelines |
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- Synchronized BFI and CSI |
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## Multi-Environment, Multi-Day Collection: |
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- Includes data from: Office, Classroom, and Kitchen environments |
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- LOS and NLOS cases |
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- Multiple days of data collection |
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- 3 Different human subjects perform 20 different activities in multiple environments and orientations |
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- Spatially diverse data from multiple STAs |
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## How To Use |
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### Download the Dataset |
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Download the dataset with |
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``` |
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hf download foysalhaque/BeamSense \ |
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--repo-type dataset \ |
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--local-dir your_directory/BeamSense_HF |
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``` |
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You will have a directory structure like |
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``` |
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your_directory/BeamSense_HF/ |
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BeamSense_Dataset_aa |
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BeamSense_Dataset_ab |
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BeamSense_Dataset_ac |
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... |
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README.md |
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data.json |
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``` |
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**These BeamSense_Dataset_aa, BeamSense_Dataset_ab, … files are split parts of one large ZIP file.** |
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Move into the download directory with ```cd your_directory/BeamSense_HF/``` and Combine all pieces into one ZIP with |
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``` cat BeamSense_Dataset_* > BeamSense_Dataset.zip ```. This produces a large file which is around 180 GB. |
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Extract the combined ZIP with ``` unzip BeamSense_Dataset.zip -d BeamSense_Data``` |
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### MATLAB BFI Extraction |
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``` |
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./Feedback_split_STAs.sh |
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cd BFI_Extraction |
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matlab -nojvm -nosplash -r "pcap_to_bfa; exit" |
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matlab -nojvm -nosplash -r "bfa_to_batches; exit" |
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``` |
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### MATLAB CSI Extraction |
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``` |
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cd CSI_Extraction |
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matlab -nojvm -nosplash -r "Extract_CSI; exit" |
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matlab -nojvm -nosplash -r "CSI_to_batches; exit" |
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``` |
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## Citation |
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If you find our work and the dataset useful, please cite the following works: |
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``` |
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@article{haque2025beamsense, |
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title={BeamSense: Rethinking wireless sensing with MU-MIMO Wi-Fi beamforming feedback}, |
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author={Haque, Khandaker Foysal and Zhang, Milin and Meneghello, Francesca and Restuccia, Francesco}, |
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journal={Computer Networks}, |
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pages={111020}, |
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year={2025}, |
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publisher={Elsevier} |
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} |
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``` |
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``` |
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@inproceedings{haque2024bfa, |
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title={BFA-Sense: Learning Beamforming Feedback Angles for Wi-Fi Sensing}, |
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author={Haque, Khandaker Foysal and Meneghello, Francesca and Restuccia, Francesco}, |
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booktitle={2024 IEEE International Conference on Pervasive Computing and Communications Workshops}, |
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pages={575--580}, |
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year={2024}, |
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organization={IEEE} |
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} |
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``` |
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## Contact |
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For dataset questions or access issues: |
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K. Foysal Haque </br> |
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Northeastern University </br> |
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Email: haque.k@northeastern.edu |