BRAIN2DEPTH: Lightweight CNN Model for Classification of Cognitive States from EEG Recordings
Several Convolutional Deep Learning models have been proposed to classify the cognitive states utilizing several neuro-imaging domains. These models have achieved significant results, but they are heavily designed with millions of parameters, which increases train and test time, making the model com...
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Zusammenfassung: | Several Convolutional Deep Learning models have been proposed to classify the
cognitive states utilizing several neuro-imaging domains. These models have
achieved significant results, but they are heavily designed with millions of
parameters, which increases train and test time, making the model complex and
less suitable for real-time analysis. This paper proposes a simple, lightweight
CNN model to classify cognitive states from Electroencephalograph (EEG)
recordings. We develop a novel pipeline to learn distinct cognitive
representation consisting of two stages. The first stage is to generate the 2D
spectral images from neural time series signals in a particular frequency band.
Images are generated to preserve the relationship between the neighboring
electrodes and the spectral property of the cognitive events. The second is to
develop a time-efficient, computationally less loaded, and high-performing
model. We design a network containing 4 blocks and major components include
standard and depth-wise convolution for increasing the performance and followed
by separable convolution to decrease the number of parameters which maintains
the tradeoff between time and performance. We experiment on open access EEG
meditation dataset comprising expert, nonexpert meditative, and control states.
We compare performance with six commonly used machine learning classifiers and
four state of the art deep learning models. We attain comparable performance
utilizing less than 4\% of the parameters of other models. This model can be
employed in a real-time computation environment such as neurofeedback. |
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DOI: | 10.48550/arxiv.2106.06688 |