Sensors (Apr 2024)

Improving Eye-Tracking Data Quality: A Framework for Reproducible Evaluation of Detection Algorithms

  • Christopher Gundler,
  • Matthias Temmen,
  • Alessandro Gulberti,
  • Monika Pötter-Nerger,
  • Frank Ückert

DOI
https://doi.org/10.3390/s24092688
Journal volume & issue
Vol. 24, no. 9
p. 2688

Abstract

Read online

High-quality eye-tracking data are crucial in behavioral sciences and medicine. Even with a solid understanding of the literature, selecting the most suitable algorithm for a specific research project poses a challenge. Empowering applied researchers to choose the best-fitting detector for their research needs is the primary contribution of this paper. We developed a framework to systematically assess and compare the effectiveness of 13 state-of-the-art algorithms through a unified application interface. Hence, we more than double the number of algorithms that are currently usable within a single software package and allow researchers to identify the best-suited algorithm for a given scientific setup. Our framework validation on retrospective data underscores its suitability for algorithm selection. Through a detailed and reproducible step-by-step workflow, we hope to contribute towards significantly improved data quality in scientific experiments.

Keywords