Survey and synthesis of state of the art in driver monitoring
Ana\"is Halin, Jacques G. Verly, Marc Van Droogenbroeck

TL;DR
This paper surveys and synthesizes current driver monitoring techniques, characterizing driver states across multiple dimensions and relating them to indicators and sensors, to guide future research and development in automotive safety.
Contribution
It provides a structured, comprehensive view of driver monitoring methods, linking driver states to indicators and sensors, and highlighting research opportunities across SAE levels of driving automation.
Findings
Structured tables relate driver states to indicators and sensors.
Most options for implementing advanced driver monitoring are identified.
Research gaps and future directions are highlighted.
Abstract
Road-vehicle accidents are mostly due to human errors, and many such accidents could be avoided by continuously monitoring the driver. Driver monitoring (DM) is a topic of growing interest in the automotive industry, and it will remain relevant for all vehicles that are not fully autonomous, and thus for decades for the average vehicle owner. The present paper focuses on the first step of DM, which consists in characterizing the state of the driver. Since DM will be increasingly linked to driving automation (DA), this paper presents a clear view of the role of DM at each of the six SAE levels of DA. This paper surveys the state of the art of DM, and then synthesizes it, providing a unique, structured, polychotomous view of the many characterization techniques of DM. Informed by the survey, the paper characterizes the driver state along the five main dimensions--called here…
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