Using fNIRS to verify trust in highly automated driving

Date

2022-10-11

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IEEE

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Article

ISSN

1524-9050

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Citation

Perello-March JR, Burns CG, Woodman R, et al., (2023) Using fNIRS to verify trust in highly automated driving. IEEE Transactions on Intelligent Transportation Systems, Volume 24, Number 1, January 2023, pp. 739-751

Abstract

Trust in automation is crucial for the safe and appropriate adoption of automated driving technology. Current research methods to measure trust mainly rely on subjective scales, with several intrinsic limitations. This empirical experiment proposes a novel method to measure trust objectively, using functional near-infrared spectroscopy (fNIRS). Through manipulating participants’ expectations regarding driving automation credibility, we have induced and successfully measured opposing levels of trust in automation. Most notably, our results evidence two separate yet interrelated cortical mechanisms for trust and distrust. Trust is demonstrably linked to decreased monitoring and working memory, whereas distrust is event-related and strongly tied to affective (or emotional) mechanisms. This paper evidence that trust in automation and situation awareness are strongly interrelated during driving automation usage. Our findings are crucial for developing future driver state monitoring technology that mitigates the impact of inappropriate reliance, or over trust, in automated driving systems.

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Github

Keywords

fNIRS, highly automated driving, trust in automation

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Attribution 4.0 International

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