Workload-Aware Systems and Interfaces for Cognitive Augmentation
Thomas Kosch

TL;DR
This paper explores physiological sensing methods like EEG and eye tracking to develop workload-aware interfaces that adapt to users' cognitive states, enhancing cognitive augmentation in various settings.
Contribution
It introduces real-time assessment techniques for cognitive workload using physiological signals and demonstrates their application in designing adaptive user interfaces.
Findings
EEG and eye tracking reliably assess mental workload.
Physiological responses correlate with cognitive resting states.
Workload-aware interfaces improve information intake and task performance.
Abstract
In today's society, our cognition is constantly influenced by information intake, attention switching, and task interruptions. This increases the difficulty of a given task, adding to the existing workload and leading to compromised cognitive performances. The human body expresses the use of cognitive resources through physiological responses when confronted with a plethora of cognitive workload. This temporarily mobilizes additional resources to deal with the workload at the cost of accelerated mental exhaustion. We predict that recent developments in physiological sensing will increasingly create user interfaces that are aware of the user's cognitive capacities, hence able to intervene when high or low states of cognitive workload are detected. Subsequently, we investigate suitable feedback modalities in a user-centric design process which are desirable for cognitive assistance. We…
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Taxonomy
TopicsGaze Tracking and Assistive Technology · Personal Information Management and User Behavior · EEG and Brain-Computer Interfaces
