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Artifact Subspace Reconstruction (ASR) vs EEG

This repository at a glance

Scripts are provided to investigate or apply artifact removal to EEG signals with a focus on a few channels case (i.e., low-density EEG).

These scripts are related to:

  • finding optimal parameters for ASR,
  • using multivariate empirical mode decomposition (MEMD) with ASR to deal with few channels

Suggested data

You can use any data, but if you are willing to replicate the results of the references below, we suggest:

Requirements

  • EEGLAB version 2021.1

How to

You will find what we did in the following references!

Further details

  1. A. Cataldo, S. Criscuolo, E. De Benedetto, A. Masciullo, M. Pesola, R. Schiavoni, and S. Invitto "A Method for Optimizing the ASR Performance in low-density EEG", IEEE Sensors Journal, 22(21), pp.21257-21265.
  2. P. Arpaia, E. De Benedetto, A. Esposito, A. Natalizio, M. Parvis, and M. Pesola, "Low-density EEG correction with multivariate decomposition and artifact subspace reconstruction", IEEE Sensors Journal, 2023 (to be published)
  3. P. Arpaia, E. De Benedetto, A. Esposito, A. Natalizio, M. Parvis, and M. Pesola, "Comparing artifact removal techniques for daily-life electroencephalography with few channels", in IEEE International Symposium on Medical Measurements and Applications, (Taormina, Italy), 2022.