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Abstract
<p class="first" id="d10643221e99">Motivated by the recent progress of Spiking Neural
Network (SNN) models in pattern
recognition, we report on the development and evaluation of brain signal classifiers
based on SNNs. The work shows the capabilities of this type of Spiking Neurons in
the recognition of motor imagery tasks from EEG signals and compares their performance
with other traditional classifiers commonly used in this application. This work includes
two stages: the first stage consists of comparing the performance of the SNN models
against some traditional neural network models. The second stage, compares the SNN
models performance in two input conditions: input features with constant values and
input features with temporal information. The EEG signals employed in this work represent
five motor imagery tasks: i.e. rest, left hand, right hand, foot and tongue movements.
These EEG signals were obtained from a public database provided by the Technological
University of Graz (Brunner et al., 2008). The feature extraction stage was performed
by applying two algorithms: power spectral density and wavelet decomposition. Likewise,
this work uses raw EEG signals for the second stage of the problem solution. All of
the models were evaluated in the classification between two motor imagery tasks. This
work demonstrates that with a smaller number of Spiking neurons, simple problems can
be solved. Better results are obtained by using patterns with temporal information,
thereby exploiting the capabilities of the SNNs.
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