IEEE Access (Jan 2019)

Wiar: A Public Dataset for Wifi-Based Activity Recognition

  • Linlin Guo,
  • Lei Wang,
  • Chuang Lin,
  • Jialin Liu,
  • Bingxian Lu,
  • Jian Fang,
  • Zhonghao Liu,
  • Zeyang Shan,
  • Jingwen Yang,
  • Silu Guo

DOI
https://doi.org/10.1109/ACCESS.2019.2947024
Journal volume & issue
Vol. 7
pp. 154935 – 154945

Abstract

Read online

We construct a public dataset for WiFi-based Activity Recognition named WiAR with sixteen activities operated by ten volunteers in three indoor environments. It aims to provide public signal data for researchers to reduce the cost of collected signal data and conveniently evaluate the performance of WiFi-based human activity recognition in different domains. First, we introduce the basic knowledge of WiFi signals regarding RSSI, CSI, and wireless hardware. Second, we explain the characteristics of WiAR dataset in terms of activities types, data format, data acquisition ways, and influence factors. Third, the proposed framework can estimate the quality of the shared signal data provided by other peers. Finally, we select and use five classification algorithms and two deep learning algorithms to evaluate the performance of WiAR dataset on human activity recognition. The results show that the accuracy of WiAR dataset is higher than 80% using machine learning algorithms and 90% using deep learning algorithms in different indoor environments.

Keywords