Emotion Classification Using EEG Brain Signals and the Broad Learning System

Author(s):  
Sali Issa ◽  
Qinmu Peng ◽  
Xinge You
Author(s):  
Faris A.Abuhashish ◽  
Jamal Zraqou ◽  
Wesam Alkhodour ◽  
Mohd S.Sunar ◽  
Hoshang Kolivand

2021 ◽  
pp. 382-396
Author(s):  
Sancheng Peng ◽  
Rong Zeng ◽  
Hongzhan Liu ◽  
Guanghao Chen ◽  
Ruihuan Wu ◽  
...  

2017 ◽  
Vol 36 ◽  
pp. 102-112 ◽  
Author(s):  
Siao Zheng Bong ◽  
Khairunizam Wan ◽  
M. Murugappan ◽  
Norlinah Mohamed Ibrahim ◽  
Yuvaraj Rajamanickam ◽  
...  

Sensors ◽  
2021 ◽  
Vol 21 (5) ◽  
pp. 1589
Author(s):  
Arijit Nandi ◽  
Fatos Xhafa ◽  
Laia Subirats ◽  
Santi Fort

In face-to-face and online learning, emotions and emotional intelligence have an influence and play an essential role. Learners’ emotions are crucial for e-learning system because they promote or restrain the learning. Many researchers have investigated the impacts of emotions in enhancing and maximizing e-learning outcomes. Several machine learning and deep learning approaches have also been proposed to achieve this goal. All such approaches are suitable for an offline mode, where the data for emotion classification are stored and can be accessed infinitely. However, these offline mode approaches are inappropriate for real-time emotion classification when the data are coming in a continuous stream and data can be seen to the model at once only. We also need real-time responses according to the emotional state. For this, we propose a real-time emotion classification system (RECS)-based Logistic Regression (LR) trained in an online fashion using the Stochastic Gradient Descent (SGD) algorithm. The proposed RECS is capable of classifying emotions in real-time by training the model in an online fashion using an EEG signal stream. To validate the performance of RECS, we have used the DEAP data set, which is the most widely used benchmark data set for emotion classification. The results show that the proposed approach can effectively classify emotions in real-time from the EEG data stream, which achieved a better accuracy and F1-score than other offline and online approaches. The developed real-time emotion classification system is analyzed in an e-learning context scenario.


2015 ◽  
Vol 781 ◽  
pp. 551-554 ◽  
Author(s):  
Chaidiaw Thiangtham ◽  
Jakkree Srinonchat

Speech Emotion Recognition has widely researched and applied to some appllication such as for communication with robot, E-learning system and emergency call etc.Speech emotion feature extraction is an importance key to achieve the speech emotion recognition which can be classify for personal identity. Speech emotion features are extracted into several coefficients such as Linear Predictive Coefficients (LPCs), Linear Spectral Frequency (LSF), Zero-Crossing (ZC), Mel-Frequency Cepstrum Coefficients (MFCC) [1-6] etc. There are some of research works which have been done in the speech emotion recgnition. A study of zero-crossing with peak-amplitudes in speech emotion classification is introduced in [4]. The results shown that it provides the the technique to extract the emotion feature in time-domain, which still got the problem in amplitude shifting. The emotion recognition from speech is descrpited in [5]. It used the Gaussian Mixture Model (GMM) for extractor of feature speech. The GMM is provided the good results to reduce the back ground noise, howere it still have to focus on random noise in GMM for recognition model. The speech emotion recognition using hidden markov model and support vector machine is explained in [6]. The results shown the average performance of recognition system according to the features of speech emotion still has got the error information. Thus [1-6] provides the recognition performance which still requiers more focus on speech features.


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