• DocumentCode
    9259
  • Title

    Brain Machine Interface System Automation Considering User Preferences and Error Perception Feedback

  • Author

    Penaloza, Christian I. ; Mae, Yasushi ; Cuellar, Francisco F. ; Kojima, Masaru ; Arai, Tamio

  • Author_Institution
    Grad. Sch. of Eng. Sci., Osaka Univ., Toyonaka, Japan
  • Volume
    11
  • Issue
    4
  • fYear
    2014
  • fDate
    Oct. 2014
  • Firstpage
    1275
  • Lastpage
    1281
  • Abstract
    This paper addresses the problem of mental fatigue caused by prolonged use of Brain Machine Interface (BMI) Systems. We propose a system that gradually becomes autonomous by learning user preferences and by considering error perception feedback. As a particular application, we show that our system allows patients to control electronic appliances in a hospital room, and learns the correlation of room sensor data, brain states, and user control commands. Moreover, error perception feedback based on a brain potential called error related negativity (ERN) - that spontaneously occurs when the user perceives an error made by the system - was used to correct system´s mistakes and improve its learning performance. Experimental results with volunteers demonstrate that our system reduces the level of mental fatigue, and achieves over 90% overall learning performance when error perception feedback is considered. Note to Practitioners - This paper suggests a new approach for designing BMI systems that incorporate learning capabilities and error perception feedback in order to gradually become autonomous. This approach consists in learning the relationship between sensing data from the environment-brain and user actions when controlling robotic devices. After the system is trained, can predict control commands on behalf of the user under similar conditions. If the system makes a mistake, user´s error perception feedback is considered to improve the learning performance the system. In this paper, we describe the methodologies to design and build hardware and software interfaces, acquire and process brain signals, and train the system using machine learning techniques. We then provide experimental evidence that demonstrates the effectiveness of this approach to design BMI systems that gradually become autonomous.
  • Keywords
    brain-computer interfaces; electromyography; hospitals; human computer interaction; human factors; learning (artificial intelligence); medical signal detection; ERN; brain machine interface system automation; brain potential; brain state; electronic appliances control; error perception feedback; error related negativity; hospital room; learning performance; mental fatigue; room sensor data correlation; user control commands; user preference learning; Assistive technology; Brain-computer interfaces; Control systems; Electroencephalography; Electromyography; Home appliances; Intelligent systems; Temperature sensors; Brain-machine interface (BMI); human-centered automation; intelligent systems;
  • fLanguage
    English
  • Journal_Title
    Automation Science and Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1545-5955
  • Type

    jour

  • DOI
    10.1109/TASE.2014.2339354
  • Filename
    6870464