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Automatic Speech Recognition and Machine Learning for Robotic Arm in Surgery

Author

Listed:
  • J Ruby

    (Department of Medical Sciences, University of Oxford, United Kingdom
    Department of Computer Science, Stanford University, United States)

  • Susan Diana

    (Department of Medical Sciences, University of Oxford, United Kingdom)

  • Yanmin Yuan

    (Department of Bioengineering, Harvard University, United States)

  • William Harry

    (Center for Biomedical Imaging, Stanford University, United States)

  • J Tisa

    (Stanford Center for Biomedical Informatics Research, Stanford University, United States)

  • J Nedumaan

    (Department of Computer Science, Stanford University, United States)

  • Yang Yung

    (Biomedical Engineering Research Center, Nanyang Technological University, Singapore)

  • J Lepika

    (Department of Computer Science, Harvard University, United States)

  • Thomas Binford

    (Department of Computer Science, Stanford University, United States)

  • P S Jagadeesh Kumar

    (Department of Computer Science, Stanford University, United States)

  • Wenli Hu

    (Biomedical Engineering Research Center, Nanyang Technological University, Singapore)

Abstract

This article liberalizes the current machine learning rehearses as utilized in the emerging edge and as noteworthy to speech recognition approaches on present-day surgical robots...

Suggested Citation

  • J Ruby & Susan Diana & Yanmin Yuan & William Harry & J Tisa & J Nedumaan & Yang Yung & J Lepika & Thomas Binford & P S Jagadeesh Kumar & Wenli Hu, 2020. "Automatic Speech Recognition and Machine Learning for Robotic Arm in Surgery," Trends in Technical & Scientific Research, Juniper Publishers Inc., vol. 4(1), pages 5-9, March.
  • Handle: RePEc:adp:oattsr:v:4:y:2020:i:1:p:5-9
    DOI: 1019081/TTSR.2020.04.555627
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