The cyborg of our time Hugo Ribeiro Baldioti. Cybernetic organism Biological and artificial parts.

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Presentation transcript:

The cyborg of our time Hugo Ribeiro Baldioti

Cybernetic organism Biological and artificial parts

Neil Harbisson Rob Spence Kevin Warwick

Professor of Cybernetics at the University of Reading, England Artificial intelligence, control, robotics and biomedical engineering

Project Cyborg 1.0 (1998) Project Cyborg 2.0 (2002)

Controlled by neurons from a rat’s brain A robot consisting of two wheels with a sonar sensor Has no microprocessor of it’s own

Embryonic neurons are separated out and allowed to grow on na electrode array A mesh of about neurons can grow within several days After about a week he starts to pulse the electrodes in search of a pathway

Once they have a pathway researchers use the connection to get the robot to roam around and learn to avoid crashing into walls Bluetooth communication With time and repetition the neural pathway become stronger The robot learn for itself how to not bash into obstacles

dded&v=1QPiF4-iu6g&gl=BR dded&v=1QPiF4-iu6g&gl=BR

Culture neurons in three dimensions A network of 30 million neurons After that, the next step will be to bring in human neurons

If we have 100 billion human neurons Should we give it rights? Does it get to vote? Is it conscious?