2017
DOI: 10.3390/app7121239
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Review and Classification of Emotion Recognition Based on EEG Brain-Computer Interface System Research: A Systematic Review

Abstract: Abstract:Recent developments and studies in brain-computer interface (BCI) technologies have facilitated emotion detection and classification. Many BCI studies have sought to investigate, detect, and recognize participants' emotional affective states. The applied domains for these studies are varied, and include such fields as communication, education, entertainment, and medicine. To understand trends in electroencephalography (EEG)-based emotion recognition system research and to provide practitioners and res… Show more

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Cited by 204 publications
(151 citation statements)
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“…There is still the need to analyze how time, familiarity, interaction, and so on affect individuals' emotion recognition processes, and how the EEG features are correlated with these variables to describe individuals' emotional behavior when interacting with stimuli material. Classification accuracies vary between the different EEG traits used in the classification process and the number of participants in the experiment [11,14]. How to obtain good classification accuracies in cross-participants experiments, which can allow researchers to have more freedom in using different stimuli methods and degrees of interaction with systems to identify emotional states from EEG signals, remains unknown.…”
Section: Discussionmentioning
confidence: 99%
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“…There is still the need to analyze how time, familiarity, interaction, and so on affect individuals' emotion recognition processes, and how the EEG features are correlated with these variables to describe individuals' emotional behavior when interacting with stimuli material. Classification accuracies vary between the different EEG traits used in the classification process and the number of participants in the experiment [11,14]. How to obtain good classification accuracies in cross-participants experiments, which can allow researchers to have more freedom in using different stimuli methods and degrees of interaction with systems to identify emotional states from EEG signals, remains unknown.…”
Section: Discussionmentioning
confidence: 99%
“…EEG signals have gained increasing attention owing to its promise of potential applications in brain-computer interface (BCIs) for assistive technological solutions to overcome physical and speech disabilities. Emotion recognition using EEG signals focuses its development on two main application fields: first, medical applications designed to provide assistance, enhancement, monitoring, assessment, and diagnosis of human psychiatric and neurological diseases; and, second, non-medical applications designed to entertain, educate, and monitor emotional states in a commercial or personal context [11,12].…”
Section: Eeg and Emotion Recognitionmentioning
confidence: 99%
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“…The type of the EEG output is in the way of electrical signals in the brain in the form of a graph with brainwave voltage on the time or frequency that can be seen using a computer [11]. Brainwave graphs on EEG vary depending on the condition of the human brain at the time of recording.…”
Section: Introductionmentioning
confidence: 99%