Author/Authors :
Seal, Ayan Faculty of Informatics and Management - Center for Basic and Applied Research - University of Hradec Kralove - Rokitanskeho - Hradec Kralove, Czech Republic , Nivesh Reddy, Puthi Prem Indian Institute of Information Technology - Design and Manufacturing - Jabalpur, India , Chaithanya, Pingali Indian Institute of Information Technology - Design and Manufacturing - Jabalpur, India , Meghana, Arramada Indian Institute of Information Technology - Design and Manufacturing - Jabalpur, India , Jahnavi, Kamireddy Indian Institute of Information Technology - Design and Manufacturing - Jabalpur, India , Krejcar, Ondrej Faculty of Informatics and Management - Center for Basic and Applied Research - University of Hradec Kralove - Rokitanskeho - Hradec Kralove, Czech Republic , Hudak, Radovan Department of Biomedical Engineering and Measurement - Faculty of Mechanical Engineering - Technical University of Kosice - Kosice, Slovakia
Abstract :
Human emotion recognition has been a major field of research in the last decades owing to its noteworthy academic and industrial
applications. However, most of the state-of-the-art methods identified emotions after analyzing facial images. Emotion recognition
using electroencephalogram (EEG) signals has got less attention. However, the advantage of using EEG signals is that it can capture
real emotion. However, very few EEG signals databases are publicly available for affective computing. In this work, we present a
database consisting of EEG signals of 44 volunteers. Twenty-three out of forty-four are females. A 32 channels CLARITY EEG
traveler sensor is used to record four emotional states namely, happy, fear, sad, and neutral of subjects by showing 12 videos. So,
3 video files are devoted to each emotion. Participants are mapped with the emotion that they had felt after watching each
video. The recorded EEG signals are considered further to classify four types of emotions based on discrete wavelet transform
and extreme learning machine (ELM) for reporting the initial benchmark classification performance. The ELM algorithm is
used for channel selection followed by subband selection. The proposed method performs the best when features are captured
from the gamma subband of the FP1-F7 channel with 94.72% accuracy. The presented database would be available to the
researchers for affective recognition applications.