Litcius/Paper detail

Robust cognitive load detection from wrist-band sensors

Vadim Borisov, Enkelejda Kasneci, Gjergji Kasneci

2021Computers in Human Behavior Reports27 citationsDOIOpen Access PDF

Abstract

In recent years, the detection of cognitive load has received a lot of attention. Understanding the circumstances in which cognitive load occurs and reliably predicting such occurrences, offers the potential for considerable advances in the field of Human-Computer Interaction (HCI). Numerous HCI applications, ranging from medical and health-related solutions to (smart) automotive environments, would directly benefit from the reliable detection of cognitive load. However, this task still remains highly challenging. We present a machine learning (ML) approach based on ensemble learning for robust cognitive load classification. The features used by the proposed solution are generated from the interpretation of physiological measurements (e.g., heart rate, r-r interval, skin temperature, and skin response) from a wearable device. Hence, our approach consists of two steps: (1) transforming the original data into discriminative features and (2) training an ensemble model to accurately and robustly predict cognitive load. The empirical results confirm that our method has a superior performance compared to various state-of-the-art baselines on the original and transformed data. Moreover, in the open-data [email protected] 2020 Competition, the proposed approach achieved the best results among 17 competing approaches and outperformed all participating competitors by a considerable margin.

Topics & Concepts

Cognitive loadComputer scienceWearable computerMargin (machine learning)Discriminative modelArtificial intelligenceMachine learningCognitionField (mathematics)Wearable technologyRangingSupport vector machinePsychologyEmbedded systemPure mathematicsNeuroscienceTelecommunicationsMathematicsEEG and Brain-Computer InterfacesNon-Invasive Vital Sign MonitoringECG Monitoring and Analysis