A Hybrid Deep Learning Based Visual System for In-Vehicle Safety

  • Joghee Bhojan R
  • Ramyachitra D
  • Ganesan S
  • et al.
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Abstract

In the automotive industry, researchers, AI experts, and developers are actively pushing deep learning based approaches for In-vehicle safety.    In this research paper, we propose a hybrid deep learning based visual system for providing feedback to the driver in a non-intrusive manner. We describe a hybrid SSD-RBM (Single Shot MultiBox Detector - Restricted Boltzmann Machine)  model for face feature identification. In this system, object detection, object tracking, and observations are processed through a full pipeline of image processing and detect the driver's movements and generate a safe and efficient action plan in real time. This in-vehicle interactive system assists drivers in regulating driving performance and avoiding hazards.

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APA

Joghee Bhojan, R., Ramyachitra, D., Ganesan, S., & Rajkumar, R. (2019). A Hybrid Deep Learning Based Visual System for In-Vehicle Safety. European Journal of Engineering Research and Science, 4(4), 43–47. https://doi.org/10.24018/ejers.2019.4.4.1185

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