The empathetic car: Exploring emotion inference via driver behaviour and traffic context
An empathetic car that is capable of reading the driver’s emotions has been envisioned by many car manufacturers. Emotion inference enables in-vehicle applications to improve driver comfort, well-being, and safety. Available emotion inference approaches use physiological, facial, and speech-related...
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2021
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sg-smu-ink.sis_research-72412022-01-21T06:48:23Z The empathetic car: Exploring emotion inference via driver behaviour and traffic context LIU, Shu KOCH, Kevin ZHOU, Zimu FOLL, Simon HE, Xiaoxi MENKE, Tina FlEISCH, Elgar WORTMANN, Felix An empathetic car that is capable of reading the driver’s emotions has been envisioned by many car manufacturers. Emotion inference enables in-vehicle applications to improve driver comfort, well-being, and safety. Available emotion inference approaches use physiological, facial, and speech-related data to infer emotions during driving trips. However, existing solutions have two major limitations: Relying on sensors that are not built into the vehicle restricts emotion inference to those people leveraging corresponding devices (e.g., smartwatches). Relying on modalities such as facial expressions and speech raises privacy concerns. By contrast, researchers in mobile health have been able to infer affective states (e.g., emotions) based on behavioral and contextual patterns decoded in available sensor streams, e.g., obtained by smartphones. We transfer this rationale to an in-vehicle setting by analyzing the feasibility of inferring driver emotions by passively interpreting the data streams of the control area network (CAN-bus) and the traffic context (inferred from the front-view camera). Therefore, our approach does not rely on particularly privacy-sensitive data streams such as the driver facial video or driver speech, but is built based on existing CAN-bus data and traffic information, which is available in current high-end or future vehicles. To assess our approach, we conducted a four-month field study on public roads covering a variety of uncontrolled daily driving activities. Hence, our results were generated beyond the confines of a laboratory environment. Ultimately, our proposed approach can accurately recognise drivers’ emotions and achieve comparable performance as the medical-grade physiological sensor-based state-of-the-art baseline method. 2021-09-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/6238 info:doi/10.1145/3478078 https://ink.library.smu.edu.sg/context/sis_research/article/7241/viewcontent/ubicomp21_liu.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Emotion recognition Driving behaviours Traffic contexts Control area network (CAN) Intelligent vehicle Operations Research, Systems Engineering and Industrial Engineering Software Engineering |
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Emotion recognition Driving behaviours Traffic contexts Control area network (CAN) Intelligent vehicle Operations Research, Systems Engineering and Industrial Engineering Software Engineering LIU, Shu KOCH, Kevin ZHOU, Zimu FOLL, Simon HE, Xiaoxi MENKE, Tina FlEISCH, Elgar WORTMANN, Felix The empathetic car: Exploring emotion inference via driver behaviour and traffic context |
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An empathetic car that is capable of reading the driver’s emotions has been envisioned by many car manufacturers. Emotion inference enables in-vehicle applications to improve driver comfort, well-being, and safety. Available emotion inference approaches use physiological, facial, and speech-related data to infer emotions during driving trips. However, existing solutions have two major limitations: Relying on sensors that are not built into the vehicle restricts emotion inference to those people leveraging corresponding devices (e.g., smartwatches). Relying on modalities such as facial expressions and speech raises privacy concerns. By contrast, researchers in mobile health have been able to infer affective states (e.g., emotions) based on behavioral and contextual patterns decoded in available sensor streams, e.g., obtained by smartphones. We transfer this rationale to an in-vehicle setting by analyzing the feasibility of inferring driver emotions by passively interpreting the data streams of the control area network (CAN-bus) and the traffic context (inferred from the front-view camera). Therefore, our approach does not rely on particularly privacy-sensitive data streams such as the driver facial video or driver speech, but is built based on existing CAN-bus data and traffic information, which is available in current high-end or future vehicles. To assess our approach, we conducted a four-month field study on public roads covering a variety of uncontrolled daily driving activities. Hence, our results were generated beyond the confines of a laboratory environment. Ultimately, our proposed approach can accurately recognise drivers’ emotions and achieve comparable performance as the medical-grade physiological sensor-based state-of-the-art baseline method. |
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text |
author |
LIU, Shu KOCH, Kevin ZHOU, Zimu FOLL, Simon HE, Xiaoxi MENKE, Tina FlEISCH, Elgar WORTMANN, Felix |
author_facet |
LIU, Shu KOCH, Kevin ZHOU, Zimu FOLL, Simon HE, Xiaoxi MENKE, Tina FlEISCH, Elgar WORTMANN, Felix |
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LIU, Shu |
title |
The empathetic car: Exploring emotion inference via driver behaviour and traffic context |
title_short |
The empathetic car: Exploring emotion inference via driver behaviour and traffic context |
title_full |
The empathetic car: Exploring emotion inference via driver behaviour and traffic context |
title_fullStr |
The empathetic car: Exploring emotion inference via driver behaviour and traffic context |
title_full_unstemmed |
The empathetic car: Exploring emotion inference via driver behaviour and traffic context |
title_sort |
empathetic car: exploring emotion inference via driver behaviour and traffic context |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2021 |
url |
https://ink.library.smu.edu.sg/sis_research/6238 https://ink.library.smu.edu.sg/context/sis_research/article/7241/viewcontent/ubicomp21_liu.pdf |
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