Advanced Driver-Assistance Systems (ADASs) are used for increasing safety in the automotive domain, yet current ADASs notably operate without taking into account drivers’ states, e.g., whether she/he is emotionally apt to drive. In this paper, we first review the state-of-the-art of emotional and cognitive analysis for ADAS: we consider psychological models, the sensors needed for capturing physiological signals, and the typical algorithms used for human emotion classification. Our investigation highlights a lack of advanced Driver Monitoring Systems (DMSs) for ADASs, which could increase driving quality and security for both drivers and passengers. We then provide our view on a novel perception architecture for driver monitoring, built around the concept of Driver Complex State (DCS). DCS relies on multiple non-obtrusive sensors and Artificial Intelligence (AI) for uncovering the driver state and uses it to implement innovative Human–Machine Interface (HMI) functionalities. This concept will be implemented and validated in the recently EU-funded NextPerception project, which is briefly introduced.

On Driver Behavior Recognition for Increased Safety: A Roadmap / Davoli, Luca; Martalò, Marco; Cilfone, Antonio; Belli, Laura; Ferrari, Gianluigi; Presta, Roberta; Montanari, Roberto; Mengoni, Maura; Giraldi, Luca; Amparore, Elvio G.; Botta, Marco; Drago, Idilio; Carbonara, Giuseppe; Castellano, Andrea; Plomp, Johan. - In: SAFETY. - ISSN 2313-576X. - 6:4(2020). [10.3390/safety6040055]

On Driver Behavior Recognition for Increased Safety: A Roadmap

Davoli, Luca
;
Martalò, Marco;Cilfone, Antonio;Belli, Laura;Ferrari, Gianluigi;
2020-01-01

Abstract

Advanced Driver-Assistance Systems (ADASs) are used for increasing safety in the automotive domain, yet current ADASs notably operate without taking into account drivers’ states, e.g., whether she/he is emotionally apt to drive. In this paper, we first review the state-of-the-art of emotional and cognitive analysis for ADAS: we consider psychological models, the sensors needed for capturing physiological signals, and the typical algorithms used for human emotion classification. Our investigation highlights a lack of advanced Driver Monitoring Systems (DMSs) for ADASs, which could increase driving quality and security for both drivers and passengers. We then provide our view on a novel perception architecture for driver monitoring, built around the concept of Driver Complex State (DCS). DCS relies on multiple non-obtrusive sensors and Artificial Intelligence (AI) for uncovering the driver state and uses it to implement innovative Human–Machine Interface (HMI) functionalities. This concept will be implemented and validated in the recently EU-funded NextPerception project, which is briefly introduced.
2020
On Driver Behavior Recognition for Increased Safety: A Roadmap / Davoli, Luca; Martalò, Marco; Cilfone, Antonio; Belli, Laura; Ferrari, Gianluigi; Presta, Roberta; Montanari, Roberto; Mengoni, Maura; Giraldi, Luca; Amparore, Elvio G.; Botta, Marco; Drago, Idilio; Carbonara, Giuseppe; Castellano, Andrea; Plomp, Johan. - In: SAFETY. - ISSN 2313-576X. - 6:4(2020). [10.3390/safety6040055]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11381/2885031
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