Back to Search Start Over

Performance of data-driven inner speech decoding with same-task EEG-fMRI data fusion and bimodal models

Authors :
Wilson, Holly
Wellington, Scott
Liwicki, Foteini Simistira
Gupta, Vibha
Saini, Rajkumar
De, Kanjar
Abid, Nosheen
Rakesh, Sumit
Eriksson, Johan
Watts, Oliver
Chen, Xi
Golbabaee, Mohammad
Proulx, Michael J.
Liwicki, Marcus
O'Neill, Eamonn
Metcalfe, Benjamin
Publication Year :
2023

Abstract

Decoding inner speech from the brain signal via hybridisation of fMRI and EEG data is explored to investigate the performance benefits over unimodal models. Two different bimodal fusion approaches are examined: concatenation of probability vectors output from unimodal fMRI and EEG machine learning models, and data fusion with feature engineering. Same task inner speech data are recorded from four participants, and different processing strategies are compared and contrasted to previously-employed hybridisation methods. Data across participants are discovered to encode different underlying structures, which results in varying decoding performances between subject-dependent fusion models. Decoding performance is demonstrated as improved when pursuing bimodal fMRI-EEG fusion strategies, if the data show underlying structure.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.10854
Document Type :
Working Paper