How nervous am I?: How computer vision succeeds and humans fail in interpreting state anxiety from dynamic facial behaviour

Publication date

2023-07-03

Authors

Kuipers, Mithras
Kappen, Mitchel
Naber, MarnixORCID 0000-0003-4208-8437ISNI 0000000419502457

Editors

Advisors

Supervisors

Document Type

Article
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License

cc_by_nc_nd

Abstract

For human interaction, it is important to understand what emotional state others are in. Especially the observation of faces aids us in putting behaviours into context and gives insight into emotions and mental states of others. Detecting whether someone is nervous, a form of state anxiety, is such an example as it reveals a person’s familiarity and contentment with the circumstances. With recent developments in computer vision we developed behavioural nervousness models to show which time-varying facial cues reveal whether someone is nervous in an interview setting. The facial changes, reflecting a state of anxiety, led to more visual exposure and less chemosensory (taste and olfaction) exposure. However, experienced observers had difficulty picking up these changes and failed to detect nervousness levels accurately therewith. This study highlights humans’ limited capacity in determining complex emotional states but at the same time provides an automated model that can assist us in achieving fair assessments of so far unexplored emotional states.

Keywords

computer vision, emotion, facial behaviour, Nervousness, state anxiety, Experimental and Cognitive Psychology, Developmental and Educational Psychology, Arts and Humanities (miscellaneous), SDG 3 - Good Health and Well-being

Citation

Kuipers, M, Kappen, M & Naber, M 2023, 'How nervous am I? How computer vision succeeds and humans fail in interpreting state anxiety from dynamic facial behaviour', Cognition and Emotion, vol. 37, no. 6, pp. 1105-1115. https://doi.org/10.1080/02699931.2023.2229545