Electronics (Sep 2023)

Human Activity Recognition Based on Continuous-Wave Radar and Bidirectional Gate Recurrent Unit

  • Junhao Zhou,
  • Chao Sun,
  • Kyongseok Jang,
  • Shangyi Yang,
  • Youngok Kim

DOI
https://doi.org/10.3390/electronics12194060
Journal volume & issue
Vol. 12, no. 19
p. 4060

Abstract

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The technology for human activity recognition has diverse applications within the Internet of Things spectrum, including medical sensing, security measures, smart home systems, and more. Predominantly, human activity recognition methods have relied on contact sensors, and some research uses inertial sensors embedded in smartphones or other devices, which present several limitations. Additionally, most research has concentrated on recognizing discrete activities, even though activities in real-life scenarios tend to be continuous. In this paper, we introduce a method to classify continuous human activities, such as walking, running, squatting, standing, and jumping. Our approach hinges on the micro-Doppler (MD) features derived from continuous-wave radar signals. We first process the radar echo signals generated from human activities to produce MD spectrograms. Subsequently, a bidirectional gate recurrent unit (Bi-GRU) network is employed to train and test these extracted features. Preliminary results highlight the efficacy of our approach, with an average recognition accuracy exceeding 90%.

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