gazeMapper: A tool for automated world-based analysis of gaze data from one or multiple wearable eye trackers
Publication date
2025-07
Editors
Advisors
Supervisors
Document Type
Article
Metadata
Show full item recordCollections
License
cc_by
Abstract
The problem: wearable eye trackers deliver eye-tracking data on a scene video that is acquired by a camera affixed to the participant’s head. Analyzing and interpreting such head-centered data is difficult and laborious manual work. Automated methods to map eye-tracking data to a world-centered reference frame (e.g., screens and tabletops) are available. These methods usually make use of fiducial markers. However, such mapping methods may be difficult to implement, expensive, and eye tracker-specific. The solution: here we present gazeMapper, an open-source tool for automated mapping and processing of eye-tracking data. gazeMapper can: (1) Transform head-centered data to planes in the world, (2) synchronize recordings from multiple participants, (3) determine data quality measures, e.g., accuracy and precision. gazeMapper comes with a GUI application (Windows, macOS, and Linux) and supports 11 different wearable eye trackers from AdHawk, Meta, Pupil, SeeTrue, SMI, Tobii, and Viewpointsystem. It is also possible to sidestep the GUI and use gazeMapper as a Python library directly.
Keywords
Data quality, Eye movements, Eye tracking, Gaze, Head-fixed reference frame, Mobile eye tracking, Plane, Surface, Tool, Wearable eye tracking, World-fixed reference frame, Experimental and Cognitive Psychology, Developmental and Educational Psychology, Arts and Humanities (miscellaneous), Psychology (miscellaneous), General Psychology
Citation
Niehorster, D C, Hessels, R S, Nyström, M, Benjamins, J S & Hooge, I T C 2025, 'gazeMapper : A tool for automated world-based analysis of gaze data from one or multiple wearable eye trackers', Behavior Research Methods, vol. 57, no. 7, 188. https://doi.org/10.3758/s13428-025-02704-4