Siamese Neural Networks for EEG-based Brain-computer Interfaces
- URL: http://arxiv.org/abs/2002.00904v1
- Date: Mon, 3 Feb 2020 17:31:39 GMT
- Title: Siamese Neural Networks for EEG-based Brain-computer Interfaces
- Authors: Soroosh Shahtalebi, Amir Asif, Arash Mohammadi
- Abstract summary: We propose a new EEG processing and feature extraction paradigm based on Siamese neural networks.
Siamese architecture is developed based on Convolutional Neural Networks (CNN) and provides a binary output on the similarity of two inputs.
The efficacy of this architecture is evaluated on a 4-class Motor Imagery dataset from Brain-computer Interfaces (BCI) Competition IV-2a.
- Score: 18.472950822801362
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Motivated by the inconceivable capability of the human brain in
simultaneously processing multi-modal signals and its real-time feedback to the
outer world events, there has been a surge of interest in establishing a
communication bridge between the human brain and a computer, which are referred
to as Brain-computer Interfaces (BCI). To this aim, monitoring the electrical
activity of brain through Electroencephalogram (EEG) has emerged as the prime
choice for BCI systems. To discover the underlying and specific features of
brain signals for different mental tasks, a considerable number of research
works are developed based on statistical and data-driven techniques. However, a
major bottleneck in the development of practical and commercial BCI systems is
their limited performance when the number of mental tasks for classification is
increased. In this work, we propose a new EEG processing and feature extraction
paradigm based on Siamese neural networks, which can be conveniently merged and
scaled up for multi-class problems. The idea of Siamese networks is to train a
double-input neural network based on a contrastive loss-function, which
provides the capability of verifying if two input EEG trials are from the same
class or not. In this work, a Siamese architecture, which is developed based on
Convolutional Neural Networks (CNN) and provides a binary output on the
similarity of two inputs, is combined with OVR and OVO techniques to scale up
for multi-class problems. The efficacy of this architecture is evaluated on a
4-class Motor Imagery (MI) dataset from BCI Competition IV-2a and the results
suggest a promising performance compared to its counterparts.
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