Literature DB >> 35297014

A new robust multivariate mode estimator for eye-tracking calibration.

Adrien Brilhault1, Sergio Neuenschwander2, Ricardo Araujo Rios3.   

Abstract

We propose in this work a new method for estimating the main mode of multivariate distributions, with application to eye-tracking calibration. When performing eye-tracking experiments with poorly cooperative subjects, such as infants or monkeys, the calibration data generally suffer from high contamination. Outliers are typically organized in clusters, corresponding to fixations in the time intervals when subjects were not looking at the calibration points. In this type of multimodal distributions, most central tendency measures fail at estimating the principal fixation coordinates (the first mode), resulting in errors and inaccuracies when mapping the gaze to the screen coordinates. Here, we developed a new algorithm to identify the first mode of multivariate distributions, named BRIL, which relies on recursive depth-based filtering. This novel approach was tested on artificial mixtures of Gaussian and Uniform distributions, and compared to existing methods (conventional depth medians, robust estimators of location and scatter, and clustering-based approaches). We obtained outstanding performances, even for distributions containing very high proportions of outliers, both grouped in clusters and randomly distributed. Finally, we demonstrate the strength of our method in a real-world scenario using experimental data from eye-tracking calibrations with Capuchin monkeys, especially for highly contaminated distributions where other algorithms typically lack accuracy.
© 2022. The Psychonomic Society, Inc.

Entities:  

Keywords:  Calibration; Data depth; Eye-tracking; Multivariate mode

Year:  2022        PMID: 35297014     DOI: 10.3758/s13428-022-01809-4

Source DB:  PubMed          Journal:  Behav Res Methods        ISSN: 1554-351X


  9 in total

1.  A Powerful Test for Multivariate Normality.

Authors:  Ming Zhou; Yongzhao Shao
Journal:  J Appl Stat       Date:  2014-01-01       Impact factor: 1.404

2.  Using machine learning to detect events in eye-tracking data.

Authors:  Raimondas Zemblys; Diederick C Niehorster; Oleg Komogortsev; Kenneth Holmqvist
Journal:  Behav Res Methods       Date:  2018-02

3.  Univariate and multivariate skewness and kurtosis for measuring nonnormality: Prevalence, influence and estimation.

Authors:  Meghan K Cain; Zhiyong Zhang; Ke-Hai Yuan
Journal:  Behav Res Methods       Date:  2017-10

4.  Automated classification and scoring of smooth pursuit eye movements in the presence of fixations and saccades.

Authors:  Oleg V Komogortsev; Alex Karpov
Journal:  Behav Res Methods       Date:  2013-03

5.  A nonparametric method for detecting fixations and saccades using cluster analysis: removing the need for arbitrary thresholds.

Authors:  Seth D König; Elizabeth A Buffalo
Journal:  J Neurosci Methods       Date:  2014-02-06       Impact factor: 2.390

6.  One algorithm to rule them all? An evaluation and discussion of ten eye movement event-detection algorithms.

Authors:  Richard Andersson; Linnea Larsson; Kenneth Holmqvist; Martin Stridh; Marcus Nyström
Journal:  Behav Res Methods       Date:  2017-04

7.  mclust 5: Clustering, Classification and Density Estimation Using Gaussian Finite Mixture Models.

Authors:  Luca Scrucca; Michael Fop; T Brendan Murphy; Adrian E Raftery
Journal:  R J       Date:  2016-08       Impact factor: 3.984

8.  Comparing eye movements recorded by search coil and infrared eye tracking.

Authors:  Kai-Uwe Schmitt; Markus H Muser; Christian Lanz; Felix Walz; Urs Schwarz
Journal:  J Clin Monit Comput       Date:  2006-11-22       Impact factor: 1.977

9.  Improving eye-tracking calibration accuracy using symbolic regression.

Authors:  Almoctar Hassoumi; Vsevolod Peysakhovich; Christophe Hurter
Journal:  PLoS One       Date:  2019-03-15       Impact factor: 3.240

  9 in total

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