Small head movements increase and colour noise in data from five video-based P–CR eye trackers

被引:0
作者
Kenneth Holmqvist
Saga Lee Örbom
Raimondas Zemblys
机构
[1] Nicolaus Copernicus University in Torun,Institute of Psychology
[2] Regensburg University,Department of Psychology
[3] University of the Free State,Department of Computer Science and Informatics
来源
Behavior Research Methods | 2022年 / 54卷
关键词
Eye tracker; Data quality; Head movements; Precision; Oculomotor drift; Corneal reflection; Pupil size artefact;
D O I
暂无
中图分类号
学科分类号
摘要
We empirically investigate the role of small, almost imperceptible balance and breathing movements of the head on the level and colour of noise in data from five commercial video-based P-CR eye trackers. By comparing noise from recordings with completely static artificial eyes to noise from recordings where the artificial eyes are worn by humans, we show that very small head movements increase levels and colouring of the noise in data recorded from all five eye trackers in this study. This increase of noise levels is seen not only in the gaze signal, but also in the P and CR signals of the eye trackers that provide these camera image features. The P and CR signals of the SMI eye trackers correlate strongly during small head movements, but less so or not at all when the head is completely still, indicating that head movements are registered by the P and CR images in the eye camera. By recording with artificial eyes, we can also show that the pupil size artefact has no major role in increasing and colouring noise. Our findings add to and replicate the observation by Niehorster et al., (2021) that lowpass filters in video-based P–CR eye trackers colour the data. Irrespective of source, filters or head movements, coloured noise can be confused for oculomotor drift. We also find that usage of the default head restriction in the EyeLink 1000+, the EyeLink II and the HiSpeed240 result in noisier data compared to less head restriction. Researchers investigating data quality in eye trackers should consider not using the Gen 2 artificial eye from SR Research / EyeLink. Data recorded with this artificial eye are much noisier than data recorded with other artificial eyes, on average 2.2–14.5 times worse for the five eye trackers.
引用
收藏
页码:845 / 863
页数:18
相关论文
共 118 条
  • [1] Andersson R(2017)One algorithm to rule them all? An evaluation and discussion of ten eye movement event-detection algorithms Behavior Research Methods 49 616-637
  • [2] Larsson L(2012)The international vocabulary of metrology—basic and general concepts and associated terms (vim) JCGM 200 2012-25
  • [3] Holmqvist K(2012)Study of polynomial mapping functions in video-oculography eye trackers ACM Transactions on Computer-Human Interaction 19 1-10
  • [4] Stridh M(2012)On the structure of measurement noise in eye-tracking Journal of Eye Movement Research 5 1-20
  • [5] Nyström M(2008)The significance of microsaccades for vision and oculomotor control Journal of Vision 8 20-7197
  • [6] BiPM I(2014)Smaller is better: Drift in gaze measurements due to pupil dynamics PLOS ONE 9 e111197-500
  • [7] IFCC I(2019)A new comprehensive eye-tracking test battery concurrently evaluating the Pupil Labs glasses and the EyeLink 1000 PeerJ 7 e7086-11
  • [8] IUPAC I(2006)Microsaccades are triggered by low retinal image slip Proceedings of the National Academy of Sciences 103 7192-17
  • [9] ISO O(2010)In the eye of the beholder: A survey of models for eyes and gaze IEEE Transactions on Pattern Analysis and Machine Intelligence 32 478-633
  • [10] Cerrolaza JJ(2018)A nonvisual eye tracker calibration method for video-based tracking Journal of Vision 18 1-859