Downsampling and geometric feature methods for EEG classification tasks with CNNs
2020-10-10Unverified0· sign in to hype
Anonymous
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We experimentally investigate a collection of feature engineering pipelines for use with a CNN for classifying electroencephalogram (EEG) time series from the Bonn dataset. We compare -series of Betti-numbers and -series of graph spectra (a novel construction)---two topological invariants of a latent geometry of the timeseries---to raw time series of the EEG to fill in a gap in the literature for benchmarking. Additionally, we test these feature pipelines' robustness to downsampling and data reduction. This paper seeks to establish clearer expectations for both time-series classification via geometric features, and how CNNs for time-series respond to data of degraded resolution.