ARCHIVES
Design and Implementation of a Real-Time Non-Intrusive Machine Learning System for Cognitive Workload Detection Using Mouse and Keyboard Dynamics
Published Online: January-April 2026
Pages: 524-530
Cite this article
No DOIAbstract
Cognitive workload monitoring is essential for improving human–computer interaction, productivity, and user well-being in modern digital environments. Traditional workload assessment techniques often rely on intrusive physiological sensors or self-report measures, which can disrupt natural user behaviour and limit real-time applicability. This study presents the design and implementation of a real-time, non-intrusive machine learning system for cognitive workload detection using mouse and keyboard dynamics. The proposed system continuously captures low-level interaction features such as keystroke timing, mouse movement patterns, click frequency, and cursor trajectories during normal computer usage. These features are processed and fed into supervised machine learning models to classify users' cognitive workload levels in real time. Experimental evaluations demonstrate that interaction-based behavioural features can effectively reflect variations in cognitive demand, achieving promising classification accuracy without requiring additional hardware or explicit user input. The system offers a scalable, cost-effective, and privacy-conscious solution for continuous cognitive workload assessment, with potential applications in adaptive user interfaces, workplace productivity monitoring, e-learning platforms, and human-centred computing systems.
Related Articles
2026
Artificial Intelligence in Learning and Teaching
2026
Admin Assist: An AI – Driven Configuration and Orchestration for Enterprise Application
2026
Enhancing Blood Group Identification using pigeon inspired optimization: An Innovative Approach
2026
Eco-Genius: Power Up Smart, Power Down Waste
2026
Crowd-Sourced Disaster Response and Rescue Assistant
2026
Unveiling Deepfake Detection Using Vision Transformers: A Survey and Experimental Study
Share Article
Or copy link
*Instagram doesn't support direct link sharing from web. Copy the link and share it in your Instagram story or post.