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Classification of Cognitive Load based on Oculometric Features (CROSBI ID 710076)

Prilog sa skupa u zborniku | izvorni znanstveni rad | međunarodna recenzija

Gambiraža, Mate ; Kesedžić, Ivan ; Šarlija, Marko ; Popović, Siniša ; Ćosić, Krešimir Classification of Cognitive Load based on Oculometric Features. 2021. str. 406-4011

Podaci o odgovornosti

Gambiraža, Mate ; Kesedžić, Ivan ; Šarlija, Marko ; Popović, Siniša ; Ćosić, Krešimir

hrvatski

Classification of Cognitive Load based on Oculometric Features

Cognitive load is related to the amount of working memory resources used in the execution of various mental tasks. Different multimodal features extracted from peripheral physiology, brain activity, and oculometric reactions have been used as non-intrusive, reliable, and objective measures of cognitive load. In this paper, we use data from 38 participants performing a four-level difficulty n-back task (0-, 1-, 2-, and 3-back task), with their oculometric reactions simultaneously recorded. Based on the neuroanatomic structure and function of the visual system, 26 oculometric features are extracted and organized into 3 groups related to: pupil dilation (PD), blinking, and fixation. The discriminative power of each group of features was evaluated in four-level cognitive load classification using a support vector machine (SVM) model and feature selection, and the achieved classification accuracies were: 33.33% using only pupil dilation features, 30.90% using only blink-related features, 30.21% using only fixations-related features. Finally, a 36.11% classification accuracy was achieved using a combination of all extracted oculometric features. The presented results show that various groups of oculometric features provide complementary information about the subject's cognitive load. The comparison of the extracted groups of features is given, and the most important features in terms of classification performance are discussed.

Cognitive Load ; Classification ; Eye Tracking ; Pupillometry ; SVM

nije evidentirano

engleski

Classification of Cognitive Load based on Oculometric Features

nije evidentirano

Cognitive Load ; Classification ; Eye Tracking ; Pupillometry ; SVM

nije evidentirano

Podaci o prilogu

406-4011.

2021.

objavljeno

Podaci o matičnoj publikaciji

Podaci o skupu

MIPRO 2021

predavanje

27.09.2021-01.10.2021

Opatija, Hrvatska

Povezanost rada

Biotehnologija u biomedicini (prirodno područje, biomedicina i zdravstvo, biotehničko područje), Biotehnologija, Interdisciplinarne tehničke znanosti, Kognitivna znanost (prirodne, tehničke, biomedicina i zdravstvo, društvene i humanističke znanosti), Računarstvo