Future Internet (May 2024)

Optimization of Wheelchair Control via Multi-Modal Integration: Combining Webcam and EEG

  • Lassaad Zaway,
  • Nader Ben Amor,
  • Jalel Ktari,
  • Mohamed Jallouli,
  • Larbi Chrifi Alaoui,
  • Laurent Delahoche

DOI
https://doi.org/10.3390/fi16050158
Journal volume & issue
Vol. 16, no. 5
p. 158

Abstract

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Even though Electric Powered Wheelchairs (EPWs) are a useful tool for meeting the needs of people with disabilities, some disabled people find it difficult to use regular EPWs that are joystick-controlled. Smart wheelchairs that use Brain–Computer Interface (BCI) technology present an efficient solution to this problem. This article presents a cutting-edge intelligent control wheelchair that is intended to improve user involvement and security. The suggested method combines facial expression analysis via a camera with EEG signal processing using the EMOTIV Insight EEG dataset. The system generates control commands by identifying specific EEG patterns linked to facial expressions such as eye blinking, winking left and right, and smiling. Simultaneously, the system uses computer vision algorithms and inertial measurements to analyze gaze direction in order to establish the user’s intended steering. The outcomes of the experiments prove that the proposed system is reliable and efficient in meeting the various requirements of people, presenting a positive development in the field of smart wheelchair technology.

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