Lupa

Search the repository Help

A- | A+ | Print
Query: search in
search in
search in
search in
* old and bologna study programme

Options:
  Reset


1 - 10 / 13
First pagePrevious page12Next pageLast page
1.
Estimation of task-related dynamic brain connectivity via data inflation and classification model explainability
Peter Rogelj, 2025, original scientific article

Abstract: Study of brain function often involves analyzing task-related switching between intrinsic brain networks, which connect various brain regions. Functional brain connectivity analysis methods aim to estimate these networks but are limited by the statistical constraints of windowing functions, which reduce temporal resolution and hinder explainability of highly dynamic processes. In this work, we propose a novel approach to functional connectivity analysis through the explainability of EEG classification. Unlike conventional methods that condense raw data into extracted features, our approach inflates raw EEG data by decomposition into meaningful components that explain processes in the application domain. To uncover the brain connectivity that affects classification decisions, we introduce a new method of dynamic influence data inflation (DIDI), which extracts signals representing interactions between electrode regions. These inflated data are then classified using an end-to-end neural network classifier architecture designed for raw EEG signals. Saliency map estimation from trained classifiers reveals the connectivity dynamics affecting classification decisions, which can be visualized as dynamic connectivity support maps for improved interpretability. The methodology is demonstrated on two publicly available datasets: one for imagined motor movement classification and the other for emotion classification. The results highlight the dual benefits of our approach: in addition to providing interpretable insights into connectivity dynamics it increases classification accuracy.
Keywords: EEG, functional connectivity, data inflation, classification, explainability, saliency maps
Published in RUP: 04.06.2025; Views: 113; Downloads: 9
.pdf Full text (1,74 MB)
This document has more files! More...

2.
3.
4.
5.
6.
Vmesnik za uporabo EEG naprave Cognionics Quick-20 v okolju Matlab : zaključna naloga
Konstantinos Fasouras, 2024, undergraduate thesis

Keywords: Cognionics, MATLAB, electroencephalography (EEG)
Published in RUP: 11.06.2024; Views: 1266; Downloads: 7
.pdf Full text (2,49 MB)

7.
8.
9.
10.
Search done in 0 sec.
Back to top
Logos of partners University of Maribor University of Ljubljana University of Primorska University of Nova Gorica