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Deep Learning for Bio-Engineering Applications in Automotive Field

This special issue belongs to the section “Computing and Artificial Intelligence“.

Special Issue Information

Keywords

  • Deep learning systems for automotive applications
  • Self-attention deep networks for signal and vision applications in automotives
  • Driving scene understanding with domain adaption-based algorithms
  • Embedded platforms for hosting deep learning algorithms for automotive applications
  • Car driver profiling with deep learning
  • Car driver drowsiness monitoring with deep learning in embedded systems
  • Deep learning software and embedded microcontrollers for autonomous driving and assisted driving applications
  • Deep Learning systems for real-time automotive applications
  • Deep learning for improving SiC- and GaN-based solutions in electric cars
  • Advanced deep learning systems for automotive sensing
  • Advanced embedded platforms for hosting deep learning applications for ADAS applications
  • Automotive-embedded deep learning
  • Bio-inspired deep architectures for automotive applications
  • Bio-inspired embedded systems for autonomous driving and assisted driving applications
  • Bionic eyes platform (hardware and software) for safe and assisted driving
  • Bio-inspired embedded infrastructure for secure communication between vehicles.

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Published Papers

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Appl. Sci. - ISSN 2076-3417