HCAIApr 26, 2024

CLARE: Cognitive Load Assessment in REaltime with Multimodal Data

arXiv:2404.17098v214 citationsh-index: 19IEEE Trans Cogn Dev Syst
Originality Synthesis-oriented
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This work provides a new dataset for cognitive load assessment, which is incremental as it builds on existing methods by integrating multiple modalities for real-time applications.

The authors introduced a multimodal dataset for real-time cognitive load assessment, collecting physiological and gaze data from 24 participants during tasks of varying complexity, and benchmarked it with machine learning models, achieving best classification performance using CNN-based models with specific modalities in different cross-validation schemes.

We present a novel multimodal dataset for Cognitive Load Assessment in REal-time (CLARE). The dataset contains physiological and gaze data from 24 participants with self-reported cognitive load scores as ground-truth labels. The dataset consists of four modalities, namely, Electrocardiography (ECG), Electrodermal Activity (EDA), Electroencephalogram (EEG), and Gaze tracking. To map diverse levels of mental load on participants during experiments, each participant completed four nine-minutes sessions on a computer-based operator performance and mental workload task (the MATB-II software) with varying levels of complexity in one minute segments. During the experiment, participants reported their cognitive load every 10 seconds. For the dataset, we also provide benchmark binary classification results with machine learning and deep learning models on two different evaluation schemes, namely, 10-fold and leave-one-subject-out (LOSO) cross-validation. Benchmark results show that for 10-fold evaluation, the convolutional neural network (CNN) based deep learning model achieves the best classification performance with ECG, EDA, and Gaze. In contrast, for LOSO, the best performance is achieved by the deep learning model with ECG, EDA, and EEG.

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