[CI4R-TOBB4]
4 GHz CW Human Activity Dataset
Details about radar utilized:
- Radar measurements were made in an indoor laboratory environment spanning a range of 1–5 m using an NI-USRP2922 model software-defined radio platform programmed to transmit a continuous wave signal at 4 GHz.
- Two SAS-571 antennas having a 48 deg. azimuthal beam width were mounted along with the USRP 1 m above the ground.
- Measurements were taken such that the direction of motion were directly aligned with the center of the antenna beam pattern.
- # Classes: 12
- # Samples/class: A total of1007 samples were acquired distributed for each class as
- Walking [71]
- Jogging [72]
- Crawling [74]
- Limping [104]
- Cane [123]
- Falling [53]
- Wheelchair [149]
- Crutches [74]
- Sitting [50]
- Walker [121]
- Falling from Chair [60]
- Creeping [56]
- GitHub Link: https://github.com/ci4r/4-GHz-Human-Activity-Dataset-
- Publications to be cited:
- M.S. Seyfioglu, A.M. Ozbayoglu, S.Z. Gurbuz, “Deep convolutional autoencoder for radar-based classification of similar aided and unaided human activities,” IEEE Transactions on Aerospace and Electronic Systems, vol. 54, iss. 4, August 2018.
- M.S. Seyfioglu and S.Z. Gurbuz, “Deep neural network initialization methods for micro-Doppler classification with low training sample support,” IEEE Geoscience and Remote Sensing Letters, vol. 14, iss. 12, December 2017.