NCAIHCMay 5, 2022

Measuring Cognitive Workload Using Multimodal Sensors

arXiv:2205.04235v122 citationsh-index: 12
Originality Synthesis-oriented
AI Analysis

This work addresses cognitive workload measurement for human-computer interaction or health monitoring, but it is incremental as it builds on existing methods with preliminary results.

The study tackled the problem of estimating cognitive workload by using multimodal sensors and machine learning, achieving a classification accuracy of 0.74 with a fusion of ECG and EDA data.

This study aims to identify a set of indicators to estimate cognitive workload using a multimodal sensing approach and machine learning. A set of three cognitive tests were conducted to induce cognitive workload in twelve participants at two levels of task difficulty (Easy and Hard). Four sensors were used to measure the participants' physiological change, including, Electrocardiogram (ECG), electrodermal activity (EDA), respiration (RESP), and blood oxygen saturation (SpO2). To understand the perceived cognitive workload, NASA-TLX was used after each test and analysed using Chi-Square test. Three well-know classifiers (LDA, SVM, and DT) were trained and tested independently using the physiological data. The statistical analysis showed that participants' perceived cognitive workload was significantly different (p<0.001) between the tests, which demonstrated the validity of the experimental conditions to induce different cognitive levels. Classification results showed that a fusion of ECG and EDA presented good discriminating power (acc=0.74) for cognitive workload detection. This study provides preliminary results in the identification of a possible set of indicators of cognitive workload. Future work needs to be carried out to validate the indicators using more realistic scenarios and with a larger population.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes