Title
End-to-end electroencephalogram (EEG) motor imagery classification with Long Short-Term
Date Issued
01 December 2020
Access level
metadata only access
Resource Type
conference paper
Author(s)
Publisher(s)
Institute of Electrical and Electronics Engineers Inc.
Abstract
In this paper we generate an end-to-end model for electroencephalogram (EEG) motor imagery brain waves classification. EEG waves are considered a time series, however most of the literature focus on changing the representation of the waves or working on the data set as a whole. One of the goals of the investigation is reaching a conceptually simplified model so it can be generalized for the new approaches at EEG data acquisition (such as the novel EEG buds). First we mention some of the experiments and approaches that didn't obtain good metrics and then we show the results for MLP and LSTM neural networks. LSTM networks are slower to reach a higher accuracy compared to the MLP networks with less seconds of training, however they are better at reaching stable levels of accuracy when given enough data. Normalization plays an important role on the process, showing that the best and most consistent results are obtained when it is done locally at a sequence level, from where we can infer that the patterns are arguably most affected by the values (originally measured in micro volts and then normalized) in the local context of the sequence.
Start page
2814
End page
2820
Language
English
OCDE Knowledge area
Otras ingenierías y tecnologías
Subjects
Scopus EID
2-s2.0-85099694923
ISBN
9781728125473
ISBN of the container
978-172812547-3
Conference
2020 IEEE Symposium Series on Computational Intelligence, SSCI 2020
Sources of information:
Directorio de Producción Científica
Scopus