GlassesValidator: A data quality tool for eye tracking glasses
Publication date
2024
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Document Type
Article
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cc_by
Abstract
According to the proposal for a minimum reporting guideline for an eye tracking study by Holmqvist et al. (2022), the accuracy (in degrees) of eye tracking data should be reported. Currently, there is no easy way to determine accuracy for wearable eye tracking recordings. To enable determining the accuracy quickly and easily, we have produced a simple validation procedure using a printable poster and accompanying Python software. We tested the poster and procedure with 61 participants using one wearable eye tracker. In addition, the software was tested with six different wearable eye trackers. We found that the validation procedure can be administered within a minute per participant and provides measures of accuracy and precision. Calculating the eye-tracking data quality measures can be done offline on a simple computer and requires no advanced computer skills.
Keywords
Accuracy, Calibration, Data quality, Eye tracking, Reporting practices, Validation, Experimental and Cognitive Psychology, Developmental and Educational Psychology, Arts and Humanities (miscellaneous), Psychology (miscellaneous), General Psychology
Citation
Niehorster, D C, Hessels, R S, Benjamins, J S, Nyström, M & Hooge, I T C 2024, 'GlassesValidator : A data quality tool for eye tracking glasses', Behavior Research Methods, vol. 56, no. 3, pp. 1476–1484. https://doi.org/10.3758/s13428-023-02105-5