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A Study on the Development of Industrial Robot Workplace Safety System

산업용 로봇 작업장 안전시스템 개발에 대한 연구

  • Jin-Bae Kim (Department of Nanofusion Technology at Hoseo University Graduate School) ;
  • Sun-Hyun Kwon (Department of Nanofusion Technology at Hoseo University Graduate School) ;
  • Man-Soo Lee (Department of Nanofusion Technology at Hoseo University Graduate School)
  • 김진배 (호서대학교대학원 나노융합기술학과) ;
  • 권순현 (호서대학교대학원 나노융합기술학과) ;
  • 이만수 (호서대학교대학원 나노융합기술학과)
  • Received : 2023.08.25
  • Accepted : 2023.09.25
  • Published : 2023.09.30

Abstract

As the importance of artificial intelligence grows rapidly and emerges as a leader in technology, it is becoming an important variable in the next-generation industrial system along with the robot industry. In this study, a safety system was developed using deep learning technology to provide worker safety in a robot workplace environment. The implemented safety system has multiple cameras installed with various viewing directions to avoid blind spots caused by interference. Workers in various scenario situations were detected, and appropriate robot response scenarios were implemented according to the worker's risk level through IO communication. For human detection, the YOLO algorithm, which is widely used in object detection, was used, and a separate robot class was added and learned to compensate for the problem of misrecognizing the robot as a human. The performance of the implemented system was evaluated by operator detection performance by applying various operator scenarios, and it was confirmed that the safety system operated stably.

Keywords

References

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