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Real-time affect detection in virtual reality: a technique based on a three-dimensional model of affect and EEG signals

Version 2 2024-06-02, 23:36
Version 1 2023-08-24, 04:24
journal contribution
posted on 2024-06-02, 23:36 authored by A Pinilla, JN Voigt-Antons, J Garcia, William RaffeWilliam Raffe, S Moller
This manuscript explores the development of a technique for detecting the affective states of Virtual Reality (VR) users in real-time. The technique was tested with data from an experiment where 18 participants observed 16 videos with emotional content inside a VR home theater, while their electroencephalography (EEG) signals were recorded. Participants evaluated their affective response toward the videos in terms of a three-dimensional model of affect. Two variants of the technique were analyzed. The difference between both variants was the method used for feature selection. In the first variant, features extracted from the EEG signals were selected using Linear Mixed-Effects (LME) models. In the second variant, features were selected using Recursive Feature Elimination with Cross Validation (RFECV). Random forest was used in both variants to build the classification models. Accuracy, precision, recall and F1 scores were obtained by cross-validation. An ANOVA was conducted to compare the accuracy of the models built in each variant. The results indicate that the feature selection method does not have a significant effect on the accuracy of the classification models. Therefore, both variations (LME and RFECV) seem equally reliable for detecting affective states of VR users. The mean accuracy of the classification models was between 87% and 93%.

History

Journal

Frontiers in Virtual Reality

Volume

3

Pagination

1-12

Location

Lausanne, Switzerland

ISSN

2673-4192

eISSN

2673-4192

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Publisher

Frontiers Media S.A.

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