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2018 | OriginalPaper | Buchkapitel

Estimating Driver Workload with Systematically Varying Traffic Complexity Using Machine Learning: Experimental Design

verfasst von : Udara E. Manawadu, Takahiro Kawano, Shingo Murata, Mitsuhiro Kamezaki, Shigeki Sugano

Erschienen in: Intelligent Human Systems Integration

Verlag: Springer International Publishing

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Abstract

Traffic complexity is one of the factors affecting driver workload. In order to study the relationship between traffic complexity levels and workload, a designed experiment is required, especially to vary traffic flow parameters systematically in a simulated environment. This paper describes the experimental design of a simulator study for developing a computational model to estimate the behavior of driver workload based on traffic complexity. Driving simulators allow creating and testing different traffic scenarios and manipulating independent variables to improve the quality of data, as compared to real world experiments. Physiological responses such as heart rate, skin conductance, and pupil size have been found to be related to workload. By adapting a data-driven method, we integrated electrocardiography sensors, electro-dermal activity sensors, and eye-tracker to acquire driver physiological signals and gaze information. Preliminary results show a positive correlation between traffic complexity levels and corresponding physiological responses, performance, and subjective measures.

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Metadaten
Titel
Estimating Driver Workload with Systematically Varying Traffic Complexity Using Machine Learning: Experimental Design
verfasst von
Udara E. Manawadu
Takahiro Kawano
Shingo Murata
Mitsuhiro Kamezaki
Shigeki Sugano
Copyright-Jahr
2018
DOI
https://doi.org/10.1007/978-3-319-73888-8_18