Sensors (Mar 2023)

A CNN-Based Wearable System for Driver Drowsiness Detection

  • Yongkai Li,
  • Shuai Zhang,
  • Gancheng Zhu,
  • Zehao Huang,
  • Rong Wang,
  • Xiaoting Duan,
  • Zhiguo Wang

DOI
https://doi.org/10.3390/s23073475
Journal volume & issue
Vol. 23, no. 7
p. 3475

Abstract

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Drowsiness poses a serious challenge to road safety and various in-cabin sensing technologies have been experimented with to monitor driver alertness. Cameras offer a convenient means for contactless sensing, but they may violate user privacy and require complex algorithms to accommodate user (e.g., sunglasses) and environmental (e.g., lighting conditions) constraints. This paper presents a lightweight convolution neural network that measures eye closure based on eye images captured by a wearable glass prototype, which features a hot mirror-based design that allows the camera to be installed on the glass temples. The experimental results showed that the wearable glass prototype, with the neural network in its core, was highly effective in detecting eye blinks. The blink rate derived from the glass output was highly consistent with an industrial gold standard EyeLink eye-tracker. As eye blink characteristics are sensitive measures of driver drowsiness, the glass prototype and the lightweight neural network presented in this paper would provide a computationally efficient yet viable solution for real-world applications.

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