Pupillometry and Brain Dynamics for Cognitive Load in Working Memory
Nusaibah Farrukh, Malavika Pradeep, Akshay Sasi, Rahul Venugopal, Elizabeth Sherly

TL;DR
This study compares pupillometry and EEG for cognitive load detection, demonstrating that pupillometry alone can effectively serve as a portable, practical biomarker, challenging the reliance on EEG in real-world applications.
Contribution
It introduces a feature-based approach that outperforms deep learning models and shows pupillometry's viability as a lightweight alternative to EEG for cognitive load monitoring.
Findings
Pupillometry alone can match EEG in load classification accuracy.
Feature-based models outperform deep learning in this context.
Pupillometry provides a portable, scalable solution for real-world cognitive monitoring.
Abstract
Cognitive load, the mental effort required during working memory, is central to neuroscience, psychology, and human-computer interaction. Accurate assessment is vital for adaptive learning, clinical monitoring, and brain-computer interfaces. Physiological signals such as pupillometry and electroencephalography are established biomarkers of cognitive load, but their comparative utility and practical integration as lightweight, wearable monitoring solutions remain underexplored. EEG provides high temporal resolution of neural activity. Although non-invasive, it is technologically demanding and limited in wearability and cost due to its resource-intensive nature, whereas pupillometry is non-invasive, portable, and scalable. Existing studies often rely on deep learning models with limited interpretability and substantial computational expense. This study integrates feature-based and…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Personal Information Management and User Behavior · Gaze Tracking and Assistive Technology
