Targeted Adversarial Denoising Autoencoders (TADA) for Neural Time Series Filtration
Current machine learning (ML)-based algorithms for filtering electroencephalography (EEG) time series data face challenges related to cumbersome training times, regularization, and accurate reconstruction. To address these shortcomings, we present an ML filtration algorithm driven by a logistic cova...
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Zusammenfassung: | Current machine learning (ML)-based algorithms for filtering
electroencephalography (EEG) time series data face challenges related to
cumbersome training times, regularization, and accurate reconstruction. To
address these shortcomings, we present an ML filtration algorithm driven by a
logistic covariance-targeted adversarial denoising autoencoder (TADA). We
hypothesize that the expressivity of a targeted, correlation-driven
convolutional autoencoder will enable effective time series filtration while
minimizing compute requirements (e.g., runtime, model size). Furthermore, we
expect that adversarial training with covariance rescaling will minimize signal
degradation. To test this hypothesis, a TADA system prototype was trained and
evaluated on the task of removing electromyographic (EMG) noise from EEG data
in the EEGdenoiseNet dataset, which includes EMG and EEG data from 67 subjects.
The TADA filter surpasses conventional signal filtration algorithms across
quantitative metrics (Correlation Coefficient, Temporal RRMSE, Spectral RRMSE),
and performs competitively against other deep learning architectures at a
reduced model size of less than 400,000 trainable parameters. Further
experimentation will be necessary to assess the viability of TADA on a wider
range of deployment cases. |
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DOI: | 10.48550/arxiv.2501.04967 |