Abstract:
Growing concerns over privacy invasion due to video camera based monitoring systems have made way to non-invasive Wi-Fi signal sensing based alternatives. This paper introduces a novel end-to-end deep learning framework that utilizes the changes in orthogonal frequency division multiplexing (OFDM) sub-carrier amplitude information to simultaneously predict the identity, activity and the trajectory of a user and create a user profile that is of similar utility to a one made through a video camera based approach. The novelty of the proposed solution is that the system is fully autonomous and requires zero user intervention unlike systems that require user originated initialization, or a user held transmitting device to facilitate the prediction. Experimental results demonstrate over 95% accuracy for user identification and activity recognition, while the user localization results exhibit a ±12cm error, which is a significant improvement over the existing user tracking methods that utilize passive Wi-Fi signals.
Citation:
Jayasundara, V., Jayasekara, H., Samarasinghe, T., & Hemachandra, K. T. (2020). Device-Free User Authentication, Activity Classification and Tracking Using Passive Wi-Fi Sensing: A Deep Learning-Based Approach. IEEE Sensors Journal, 20(16), 9329–9338. https://doi.org/10.1109/JSEN.2020.2987386