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Autori principali: Meethal, Akhil, Paas, Anita, Anguiozar, Nerea Urrestilla, St-Onge, David
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2409.03888
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author Meethal, Akhil
Paas, Anita
Anguiozar, Nerea Urrestilla
St-Onge, David
author_facet Meethal, Akhil
Paas, Anita
Anguiozar, Nerea Urrestilla
St-Onge, David
contents The demand for cognitive load assessment with low-cost easy-to-use equipment is increasing, with applications ranging from safety-critical industries to entertainment. Though pupillometry is an attractive solution for cognitive load estimation in such applications, its sensitivity to light makes it less robust under varying lighting conditions. Multimodal data acquisition provides a viable alternative, where pupillometry is combined with electrocardiography (ECG) or electroencephalography (EEG). In this work, we study the sensitivity of pupillometry-based cognitive load estimation to light. By collecting heart rate variability (HRV) data during the same experimental sessions, we analyze how the multimodal data reduces this sensitivity and increases robustness to light conditions. In addition to this, we compared the performance in multimodal settings using the HRV data obtained from low-cost fitness-grade equipment to that from clinical-grade equipment by synchronously collecting data from both devices for all task conditions. Our results indicate that multimodal data improves the robustness of cognitive load estimation under changes in light conditions and improves the accuracy by more than 20% points over assessment based on pupillometry alone. In addition to that, the fitness grade device is observed to be a potential alternative to the clinical grade one, even in controlled laboratory settings.
format Preprint
id arxiv_https___arxiv_org_abs_2409_03888
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CALM: Cognitive Assessment using Light-insensitive Model
Meethal, Akhil
Paas, Anita
Anguiozar, Nerea Urrestilla
St-Onge, David
Human-Computer Interaction
The demand for cognitive load assessment with low-cost easy-to-use equipment is increasing, with applications ranging from safety-critical industries to entertainment. Though pupillometry is an attractive solution for cognitive load estimation in such applications, its sensitivity to light makes it less robust under varying lighting conditions. Multimodal data acquisition provides a viable alternative, where pupillometry is combined with electrocardiography (ECG) or electroencephalography (EEG). In this work, we study the sensitivity of pupillometry-based cognitive load estimation to light. By collecting heart rate variability (HRV) data during the same experimental sessions, we analyze how the multimodal data reduces this sensitivity and increases robustness to light conditions. In addition to this, we compared the performance in multimodal settings using the HRV data obtained from low-cost fitness-grade equipment to that from clinical-grade equipment by synchronously collecting data from both devices for all task conditions. Our results indicate that multimodal data improves the robustness of cognitive load estimation under changes in light conditions and improves the accuracy by more than 20% points over assessment based on pupillometry alone. In addition to that, the fitness grade device is observed to be a potential alternative to the clinical grade one, even in controlled laboratory settings.
title CALM: Cognitive Assessment using Light-insensitive Model
topic Human-Computer Interaction
url https://arxiv.org/abs/2409.03888