Over the past few decades, electroencephalography (EEG) monitoring has become
a pivotal tool for diagnosing neurological disorders, particularly for
detecting seizures. Epilepsy, one of the most prevalent neurological diseases
worldwide, affects approximately the 1 \% of the population. These patients
face significant risks, underscoring the need for reliable, continuous seizure
monitoring in daily life. Most of the techniques discussed in the literature
rely on supervised Machine Learning (ML) methods. However, the challenge of
accurately labeling variations in epileptic EEG waveforms complicates the use
of these approaches. Additionally, the rarity of ictal events introduces an
high imbalancing within the data, which could lead to poor prediction
performance in supervised learning approaches. Instead, a semi-supervised
approach allows to train the model only on data not containing seizures, thus
avoiding the issues related to the data imbalancing. This work proposes a
semi-supervised approach for detecting epileptic seizures from EEG data,
utilizing a novel Deep Learning-based method called SincVAE. This proposal
incorporates the learning of an ad-hoc array of bandpass filter as a first
layer of a Variational Autoencoder (VAE), potentially eliminating the
preprocessing stage where informative band frequencies are identified and
isolated. Results indicate that SincVAE improves seizure detection in EEG data
and is capable of identifying early seizures during the preictal stage as well
as monitoring patients throughout the postictal stage