Abstract:
The performance of human workers can be fluctuated due to changes in the cognitive state during sustained work. Though past researches have made human performance monitor...Show MoreMetadata
Abstract:
The performance of human workers can be fluctuated due to changes in the cognitive state during sustained work. Though past researches have made human performance monitoring possible by utilizing physiological signals, little attention has been paid to the context of office works. This research proposes a multimodal approach to estimate office task performance. A transcription typing experiment was conducted to simulate the real working environment while typing speed and error rate represented as performance metrics. Physiological data collected during the experiment, together with conventional machine learning algorithms showed feasibility to accurately predict two levels (good/bad) of task performance. More importantly, a comprehensive comparison between choices of modality suggests that using data from particular sources could gain predictive performance comparable to the complete set of modalities.
Date of Conference: 11-14 October 2020
Date Added to IEEE Xplore: 14 December 2020
ISBN Information: