Use this link to cite:
http://hdl.handle.net/2183/25954 EEG Signal Processing with Separable Convolutional Neural Network for Automatic Scoring of Sleeping Stage
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Fernandez-Blanco E, Rivero D, Pazos A. EEG signal processing with separable convolutional neural network for automatic scoring of sleeping stage. Neurocomputing. 2020; 410:220-228
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Abstract
[Abstract]
Nowadays, among the Deep Learning works, there is a tendency to develop networks with millions of
trainable parameters. However, this tendency has two main drawbacks: overfitting and resource consumption due to the low-quality features extracted by those networks. This paper presents a study
focused on the scoring of sleeping EEG signals to measure if the increase of the pressure on the features
due to a reduction of the number though different techniques results in a benefit. The work also studies
the convenience of increasing the number of input signals in order to allow the network to extract better
features. Additionally, it might be highlighted that the presented model achieves comparable results to
the state-of-the-art with 1000 times less trainable and the presented model uses the whole dataset
instead of the simplified versions in the published literature.
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