Brain-computer interfaces have been explored for years with the intent of using human thoughts to control mechanical system. By capturing the transmission of signals directly from the human brain or electroencephalogram (EEG), human thoughts can be made as motion commands to the robot. This paper presents a prototype for an electroencephalogram (EEG) based brain-actuated robot control system using mental commands. In this study, Linear Discriminant Analysis (LDA) and Support Vector Machine (SVM) method were combined to establish the best model. Dataset containing features of EEG signals were obtained from the subject non-invasively using Emotiv EPOC headset. The best model was then used by Brain-Computer Interface (BCI) to classify the EEG ...
The study was using an EEG Emotiv Epoc+ sensor to recognize brain activity for controlling a mobile ...
Brain-computer interface (BCIs) provides the communication between the user and computer or external...
This paper presents a new approach to the issue of recognition and classification of electroencephal...
Brain-computer interfaces have been explored for years with the intent of using human thoughts to co...
The most popular noninvasive Brain Robot Interaction (BRI) technology uses the electroencephalogram-...
Brain-computer interface (BCI) based on electroencephalogram (EEG) signals can provide a way for hum...
This project takes Electroencephalography (EEG) data and correlates it with specific robotic actions...
The initial framework for an electroencephalography (EEG) thought recognition software suite is deve...
The study was using an EEG Emotiv Epoc+ sensor to recognize brain activity for controlling a mobile ...
The purpose of this project is to expand the capabilities of an existing interface of controlling a ...
This paper introduces proposed system which gives control of robot using brain signals (EEG) based o...
Abstract – Brain-Computer Interface (BCI) has added a new value to efforts being made under human ma...
A brain-computer interface (BCI) can provide a communication approach conveying brain information to...
The study describes approaches of direct and supervisor control of a mobile robot based on a non-inv...
Abstract—Brain activity recorded non-invasively is sufficient to control a mobile robot if advanced ...
The study was using an EEG Emotiv Epoc+ sensor to recognize brain activity for controlling a mobile ...
Brain-computer interface (BCIs) provides the communication between the user and computer or external...
This paper presents a new approach to the issue of recognition and classification of electroencephal...
Brain-computer interfaces have been explored for years with the intent of using human thoughts to co...
The most popular noninvasive Brain Robot Interaction (BRI) technology uses the electroencephalogram-...
Brain-computer interface (BCI) based on electroencephalogram (EEG) signals can provide a way for hum...
This project takes Electroencephalography (EEG) data and correlates it with specific robotic actions...
The initial framework for an electroencephalography (EEG) thought recognition software suite is deve...
The study was using an EEG Emotiv Epoc+ sensor to recognize brain activity for controlling a mobile ...
The purpose of this project is to expand the capabilities of an existing interface of controlling a ...
This paper introduces proposed system which gives control of robot using brain signals (EEG) based o...
Abstract – Brain-Computer Interface (BCI) has added a new value to efforts being made under human ma...
A brain-computer interface (BCI) can provide a communication approach conveying brain information to...
The study describes approaches of direct and supervisor control of a mobile robot based on a non-inv...
Abstract—Brain activity recorded non-invasively is sufficient to control a mobile robot if advanced ...
The study was using an EEG Emotiv Epoc+ sensor to recognize brain activity for controlling a mobile ...
Brain-computer interface (BCIs) provides the communication between the user and computer or external...
This paper presents a new approach to the issue of recognition and classification of electroencephal...