3 research outputs found
A Strong and Simple Deep Learning Baseline for BCI MI Decoding
We propose EEG-SimpleConv, a straightforward 1D convolutional neural network
for Motor Imagery decoding in BCI. Our main motivation is to propose a very
simple baseline to compare to, using only very standard ingredients from the
literature. We evaluate its performance on four EEG Motor Imagery datasets,
including simulated online setups, and compare it to recent Deep Learning and
Machine Learning approaches. EEG-SimpleConv is at least as good or far more
efficient than other approaches, showing strong knowledge-transfer capabilities
across subjects, at the cost of a low inference time. We advocate that using
off-the-shelf ingredients rather than coming with ad-hoc solutions can
significantly help the adoption of Deep Learning approaches for BCI. We make
the code of the models and the experiments accessible
braindecode/braindecode: v0.8
<p>See changes at https://braindecode.org/stable/whats_new.html</p>
<h2>New Contributors</h2>
<ul>
<li>@Sara04</li>
<li>@ZamboniMarco99</li>
<li>@PierreGtch</li>
<li>@tgy</li>
<li>@matthieutrs</li>
<li>@remidbs</li>
<li>@brunaafl</li>
<li>@eeyhsong</li>
<li>@ostormer</li>
</ul>