A study of recent classification algorithms and a novel approach for EEG data classification

Author(s):  
Eyup Cinar ◽  
Ferat Sahin
2021 ◽  
Vol 11 (2) ◽  
pp. 674
Author(s):  
Marianna Koctúrová ◽  
Jozef Juhár

With the ever-progressing development in the field of computational and analytical science the last decade has seen a big improvement in the accuracy of electroencephalography (EEG) technology. Studies try to examine possibilities to use high dimensional EEG data as a source for Brain to Computer Interface. Applications of EEG Brain to computer interface vary from emotion recognition, simple computer/device control, speech recognition up to Intelligent Prosthesis. Our research presented in this paper was focused on the study of the problematic speech activity detection using EEG data. The novel approach used in this research involved the use visual stimuli, such as reading and colour naming, and signals of speech activity detectable by EEG technology. Our proposed solution is based on a shallow Feed-Forward Artificial Neural Network with only 100 hidden neurons. Standard features such as signal energy, standard deviation, RMS, skewness, kurtosis were calculated from the original signal from 16 EEG electrodes. The novel approach in the field of Brain to computer interface applications was utilised to calculated additional set of features from the minimum phase signal. Our experimental results demonstrated F1 score of 86.80% and 83.69% speech detection accuracy based on the analysis of EEG signal from single subject and cross-subject models respectively. The importance of these results lies in the novel utilisation of the mobile device to record the nerve signals which can serve as the stepping stone for the transfer of Brain to computer interface technology from technology from a controlled environment to the real-life conditions.


2021 ◽  
pp. 1-7
Author(s):  
Suvendra Kumar Jayasingh ◽  
Debasis Gountia ◽  
Neelamani Samal ◽  
Prakash Kumar Chinara

2014 ◽  
Vol 125 (5) ◽  
pp. e32-e33 ◽  
Author(s):  
V. Gerla ◽  
M. Murgas ◽  
V.D. Radisavljevic ◽  
L. Lhotska ◽  
V. Krajca

Author(s):  
Thanh Nguyen ◽  
Imali Hettiarachchi ◽  
Abbas Khosravi ◽  
Syed Moshfeq Salaken ◽  
Asim Bhatti ◽  
...  

2018 ◽  
Vol 24 ◽  
pp. 66-73
Author(s):  
Khairunnisa Johar ◽  
Noor Ayuni Che Zakaria ◽  
Muhammad Azmi Ayub ◽  
Cheng Yee Low ◽  
Fazah Akthar Hanapiah

2018 ◽  
Vol 7 (3.1) ◽  
pp. 1 ◽  
Author(s):  
Gillala Rekha ◽  
V Krishna Reddy

Most of the traditional classification algorithms assume their training data to be well-balanced in terms of class distribution. Real-world datasets, however, are imbalanced in nature thus degrade the performance of the traditional classifiers. To solve this problem, many strategies are adopted to balance the class distribution at the data level. The data level methods balance the imbalance distribution between majority and minority classes using either oversampling or under sampling techniques. The main concern of this paper is to remove the outliers that may generate while using oversampling techniques. In this study, we proposed a novel approach for solving the class imbalance problem at data level by using modified SMOTE to remove the outliers that may exist after synthetic data generation using SMOTE oversampling technique. We extensively compare our approach with SMOTE, SMOTE+ENN, SMOTE+Tomek-Link using 9 datasets from keel repository using classification algorithms. The result reveals that our approach improves the prediction performance for most of the classification algorithms and achieves better performance compared to the existing approaches.   


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