A Comprehensive Study on Artificial Intelligence Algorithms to Implement Safety Using Communication Technologies

  title={A Comprehensive Study on Artificial Intelligence Algorithms to Implement Safety Using Communication Technologies},
  author={Rafia Inam and Alberto Yukinobu Hata and Vlasjov Prifti and Sara Abbaspour Asadollah},
The recent development of artificial intelligence has increased the interest of researchers and practitioners towards applying its techniques into multiple domains like automotive, health care and air space to achieve automation. Combined to these applications, the attempt to use artificial intelligence techniques into carrying out safety issues is momentarily at a progressive state. As the artificial intelligence problems are getting even more complex, large processing power is demanded for… 



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