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Brain Computer Interface: A New Pathway to Human Brain

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Cognitive Computing in Human Cognition

Part of the book series: Learning and Analytics in Intelligent Systems ((LAIS,volume 17))

Abstract

The evolution of brain computer interface started with the need of subject’s disability of verbal or written communication or to control immediate environment. Now days this field has been expanded other than neuroprosthetics applications and includes eminent areas of research like education, communication, entertainment, marketing and monitoring. This chapter focus on past 15 years, this assistive technology has attracted potentials numbers of users as well as researchers from multidiscipline.

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Chaudhary, P., Agrawal, R. (2020). Brain Computer Interface: A New Pathway to Human Brain. In: Mallick, P., Pattnaik, P., Panda, A., Balas, V. (eds) Cognitive Computing in Human Cognition. Learning and Analytics in Intelligent Systems, vol 17. Springer, Cham. https://doi.org/10.1007/978-3-030-48118-6_10

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