DocumentCode :
3398195
Title :
Electroencephelograph based brain machine interface for controlling a robotic arm
Author :
Wenjia Ouyang ; Cashion, Kelly ; Asari, Vijayan K.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Dayton, Dayton, OH, USA
fYear :
2013
fDate :
23-25 Oct. 2013
Firstpage :
1
Lastpage :
7
Abstract :
A brain machine interface (BMI) facilitates the control of machines through the analysis and classification of signals directly from the human brain. Using an electroencephalograph (EEG) to detect neurological activity permits the collection of data representing brain signals without the need for invasive technology or procedures. A 14-electrode EPOC headset produced by the Emotiv Company is used to capture live data, which can then be classified and encoded into control signals for a 7-degree-of-freedom robotic arm. The collected data is analyzed in using an independent component analysis (ICA) based feature extraction and a neural network classifier. The collected EEG data is classified into one of four control signals: lift, lower, rotate clockwise, and rotate counter-clockwise. Additionally, the system watches the collected data for electromyography (EMG) signals indicative of movement of the facial muscles. Detections are used to incorporate two additional control signals: open and close. A personal set of EEG data patterns is trained for each individual, with each control signal requiring only a few minutes to train initially. EMG signal detections are measured against a generic threshold for all users. Once a user has trained their personal data into the system any positive detections trigger a signal to the interfaced robotic arm to perform a corresponding, discrete action. Currently, subjects are able to repeatedly execute two EEG commands with accuracy within a short period of time. As the number of EEG based commands increases, the training time required for accurate control increases significantly. EMG based control is almost always immediately responsive. In order to extend the range of available controls beyond a few discrete actions, this research intends to incorporate and refine the algorithmic steps of classification and detection to shift an increased percentage of the burden of training onto the computer.
Keywords :
biomedical electrodes; brain-computer interfaces; control engineering computing; electroencephalography; electromyography; feature extraction; independent component analysis; learning (artificial intelligence); manipulators; neural nets; neurophysiology; signal classification; signal detection; 14-electrode EPOC headset; 7-degree-of-freedom robotic arm control signal; EEG based commands; EEG data collection classification; EEG data pattern training; EMG based control; EMG signal detection; Emotiv Company; ICA based feature extraction; brain signals; electroencephelograph based brain machine interface; electromyography signals; facial muscles; generic threshold; independent component analysis based feature extraction; lift control signal; lower control signal; neural network classifier; neurological activity detection; personal data; rotate clockwise control signal; rotate counter-clockwise control signal; training time; Computers; Electroencephalography; Electromyography; Feature extraction; Headphones; Robots; Software; BCI; EEG; Emotiv; ICA; MLP; Robotic Arm;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Applied Imagery Pattern Recognition Workshop (AIPR): Sensing for Control and Augmentation, 2013 IEEE
Conference_Location :
Washington, DC
Type :
conf
DOI :
10.1109/AIPR.2013.6749312
Filename :
6749312
Link To Document :
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