Datasets
Standard Dataset
ImgFi:WiFi-based Activity Recognition Dateset
- Citation Author(s):
- Submitted by:
- Wanguo Jiao
- Last updated:
- Sat, 06/03/2023 - 01:02
- DOI:
- 10.21227/wfp1-s562
- Data Format:
- License:
- Categories:
- Keywords:
Abstract
ImgFi converts wifi channel state information into images, improving feature extraction and achieving 99.5% accuracy in human activity recognition using only three layers of convolution. In addition to the self-test dataset, three publicly available high-quality datasets, WiAR, SAR and Widar3.0, are used. WiAR collects 16 activity-reflected WiFi signals; SAR collects WiFi signals in response to 6 actions performed by 9 volunteers over 6 days, while Widar3.0 collects 6 action signals from 5 volunteers at different locations and antenna orientations. The transformation methods we provide are Gramian Angular Fields (GAFs), Short-Time Fourier Transform (STFT), Markov Transition Field Transformation (MTF), Recurrence Plot Transformation (RT). For questions, please contact sheng@njfu.edu.cn
Format description: CSI-original-dataset-name-converted-image-method.zip, e.g. CSI3-WIDAR3.0-RT.
For WIDAI3.0, the sample data format is: A-P-O-S-SC
For SAR, the sample data format is: A-V-S-SC
For WIAR, the sample data format is: A-V-S-SC
For the self-test dataset, the sample format is: A-V-S-SC A:Action
P:Position
O:Orientation
S: Original
SC:Sample Subcarrier Converted Image
V:volunteer
Dataset Files
- CSI3_WIDAR_RT003.zip (1.51 GB)
- CSI3_WIDAR_RT001.zip (1.95 GB)
- CSI_SAR_RT.zip (445.25 MB)
- CSI1-WIAR-RT.zip (2.38 GB)
- CSI_SAR_GADF.zip (248.28 MB)
- CSI3_WIDAR_RT002.zip (1.95 GB)
Comments
Referenced papers
C. Zhang and W. Jiao, "ImgFi: A High Accuracy and Lightweight Human Activity Recognition Framework Using CSI Image," in IEEE Sensors Journal, vol. 23, no. 18, pp. 21966-21977, 15 Sept.15, 2023, doi: 10.1109/JSEN.2023.3296445.
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