Classification of Motor Imagery EEG Signals by Using a Divergence Based
Convolutional Neural Network
- URL: http://arxiv.org/abs/2103.10977v1
- Date: Fri, 19 Mar 2021 18:27:28 GMT
- Title: Classification of Motor Imagery EEG Signals by Using a Divergence Based
Convolutional Neural Network
- Authors: Zumray Dokur, Tamer Olmez
- Abstract summary: It is observed that the augmentation process is not applied for increasing the classification performance of EEG signals.
In this study, we have investigated the effect of the augmentation process on the classification performance of MI EEG signals.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Deep neural networks (DNNs) are observed to be successful in pattern
classification. However, high classification performances of DNNs are related
to their large training sets. Unfortunately, in the literature, the datasets
used to classify motor imagery (MI) electroencephalogram (EEG) signals contain
a small number of samples. To achieve high performances with small-sized
datasets, most of the studies have employed a transformation such as common
spatial patterns (CSP) before the classification process. However, CSP is
dependent on subjects and introduces computational load in real-time
applications. It is observed in the literature that the augmentation process is
not applied for increasing the classification performance of EEG signals. In
this study, we have investigated the effect of the augmentation process on the
classification performance of MI EEG signals instead of using a preceding
transformation such as the CSP, and we have demonstrated that by resulting in
high success rates for the classification of MI EEGs, the augmentation process
is able to compete with the CSP. In addition to the augmentation process, we
modified the DNN structure to increase the classification performance, to
decrease the number of nodes in the structure, and to be used with less number
of hyper parameters. A minimum distance network (MDN) following the last layer
of the convolutional neural network (CNN) was used as the classifier instead of
a fully connected neural network (FCNN). By augmenting the EEG dataset and
focusing solely on CNN's training, the training algorithm of the proposed
structure is strengthened without applying any transformation. We tested these
improvements on brain-computer interface (BCI) competitions 2005 and 2008
databases with two and four classes, and the high impact of the augmentation on
the average performances are demonstrated.
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