EEG based Machine Control
نویسندگان
چکیده
In the field of bio-medical, the brain interface is to create and adapt methods of human-computer interaction. This is BCI. A variety of application domains to compare and validate BCI interaction, including communication, environmental control, neural prosthetics and creative expression. EEG signals acts as a communication between men and machines. The BCI-based control system for robots using the EEG has been suggested for mobile robots and humanoids, and some other machines to control. In this project we do, the control interface to translate human intentions into appropriate motion commands for robotic systems. The experimental procedures consist of extraction of EEG signals, optimizing the exact signal, wireless transmission and machine control.
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تاریخ انتشار 2013