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# WiFall
The description is generated by Grok3.
## Dataset Description
- **Repository:** [KNN-MMD/WiFall at main · RS2002/KNN-MMD](https://github.com/RS2002/KNN-MMD/tree/main/WiFall)
- **Paper:** [KNN-MMD: Cross Domain Wireless Sensing via Local Distribution Alignment](https://arxiv.org/abs/2412.04783)
- **Contact:** [[email protected]](mailto:[email protected])
- **Collectors:** Zijian Zhao, Tingwei Chen
- **Organization:** AI-RAN Lab (hosted by Prof. Guangxu Zhu) in SRIBD, CUHK(SZ)
- **Dataset Summary:**
The WiFall dataset contains synchronized Channel State Information (CSI), Received Signal Strength Indicator (RSSI), and timestamp data collected using ESP32-S3 devices for WiFi-based fall detection, action recognition, and people identification in a meeting room scenario. The dataset includes actions (fall, jump, sit, stand, walk) performed by ten individuals.
- **Tasks:** Fall Detection, Action Recognition, People Identification, Cross-Domain Tasks.
## Dataset Structure
### Data Instances
Each instance is a `.csv` file representing a 60-second sample with the following columns:
- **seq**: Row number of the entry.
- **timestamp**: UTC+8 time of data collection.
- **local_timestamp**: ESP32 local time.
- **rssi**: Received Signal Strength Indicator.
- **data**: CSI data with 104 numbers representing 52 subcarriers, where each subcarrier's complex CSI value is computed as `a[2i] + a[2i+1]j`.
- **Other columns**: Additional ESP32 device information (e.g., MAC, MCS details).
### Data Fields
| Field Name | Description |
| --------------- | ------------------------------------------------------------ |
| seq | Row number of the entry |
| timestamp | UTC+8 time of data collection |
| local_timestamp | ESP32 local time |
| rssi | Received Signal Strength Indicator |
| data | CSI data (104 numbers, representing 52 subcarriers as complex values) |
| Other columns | Additional ESP32 metadata (e.g., MAC address, MCS details) |
### Data Splits
The dataset is organized by person ID (ID0–ID9), with `.csv` files named after the action performed:
- **Actions**: fall, jump, sit, stand, walk for 10 individuals (ID0–ID9).
Each directory is structured by person ID, with `.csv` files named after the action performed.
## Dataset Creation
### Curation Rationale
The dataset was created to facilitate research on WiFi-based fall detection, action recognition, and people identification using low-cost ESP32-S3 devices, enabling applications in healthcare, human-computer interaction, and smart environments.
### Source Data
- Initial Data Collection:
Data was collected in an indoor meeting room with a single transmitter and multiple receivers using ESP32-S3 devices. The setup included:
- **Frequency Band:** 2.4 GHz
- **Bandwidth:** 20 MHz (52 subcarriers)
- **Protocol:** 802.11n
- **Waveform:** OFDM
- **Sampling Rate:** ~100 Hz
- **Antenna Configuration:** 1 antenna per device
- **Environment:** Indoor with walls and a soft pad to prevent volunteer injuries.
- **Who are the source data producers?**
The data was collected by researchers, with volunteers performing actions in a controlled meeting room environment.
### Annotations
- **Annotation Process:**
Each `.csv` file is labeled with the action type (via filename) and person ID (via directory structure). No additional manual annotations were provided.
- **Who are the annotators?**
The dataset creators labeled the data based on the experimental setup.
### Personal and Sensitive Information
The dataset includes person IDs (ID0–ID9) but does not contain personally identifiable information such as names or biometric data beyond action and CSI patterns.
## Citation
```bibtex
@misc{zhao2025knnmmdcrossdomainwireless,
title={KNN-MMD: Cross Domain Wireless Sensing via Local Distribution Alignment},
author={Zijian Zhao and Zhijie Cai and Tingwei Chen and Xiaoyang Li and Hang Li and Qimei Chen and Guangxu Zhu},
year={2025},
eprint={2412.04783},
archivePrefix={arXiv},
primaryClass={cs.CV},
url={https://arxiv.org/abs/2412.04783},
}
```