Computer Science ›› 2018, Vol. 45 ›› Issue (11A): 43-47.

• Review • Previous Articles     Next Articles

Research on Deep Learning Used in Intelligent Robots

LONG Hui, ZHU Ding-ju, TIAN Juan   

  1. School of Computer,South China Normal University,Guangzhou 510631,China
  • Online:2019-02-26 Published:2019-02-26

Abstract: The trend of robot development is artificial intelligence.Deep learning is the frontier technology of intelligent robot,and it is also a new subject in machine learning field.Deep learning technology is widely used in agriculture,industry,military,aviation and other fields,and the combination of deep learning and robot can make it possible to design intelligent robots with high working efficiency,high real-time and high precision.In order to enhance the ability of intelligent robots in all aspects and make it more intelligent,this paper introduced relearch project recated to deep learning and robots and the application of deep learning in robots,including indoor and outdoor scene recognition,industrial servi-ces and family services,and multi robot collaboration,etc.Finally,the future development of deep learning in intelligent robots,the possible opportunities and challenges were discussed.

Key words: Artificial intelligence, Deep learning, Intelligent robots, Machine learning

CLC Number: 

  • TP242
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