Fixation Region Overlap: A quantitative method for the analysis of fixational eye movement patterns
This article presents a new method for the quantitative analyses of fixation patterns in eye tracking data. The Fixation Region Overlap Analysis (FROA) uses thresholded spatial distributions of fixation frequency or duration to determine regions-of-interest (ROIs). The locations of these ROIs are co...
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doaj-ca66f24dcbf246788b96652be9a6aa472021-05-28T13:34:46ZengBern Open PublishingJournal of Eye Movement Research1995-86922009-02-011310.16910/jemr.1.3.5Fixation Region Overlap: A quantitative method for the analysis of fixational eye movement patternsStephen Johnston0Charles Leek1Wales Institute for Cognitive Neuroscience, School of Psychology, Bangor UniversityWales Institute for Cognitive Neuroscience, School of Psychology, Bangor UniversityThis article presents a new method for the quantitative analyses of fixation patterns in eye tracking data. The Fixation Region Overlap Analysis (FROA) uses thresholded spatial distributions of fixation frequency or duration to determine regions-of-interest (ROIs). The locations of these ROIs are contrasted with fixation regions of other empirically-derived, or modelled, data patterns by comparing region pixel overlap. A Monte Carlo procedure is used to assess the statistical significance of fixation region overlap based on 95% confi-dence intervals (C.I.) of the distribution of random overlap for each set of thresholded ROIs. The value of the FROA method is demonstrated by applying it to data acquired in an object recognition task to determine which of two potential models best account for the observed fixation patterns.https://bop.unibe.ch/JEMR/article/view/2245eye trackingstatisticsmethodologyanalysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Stephen Johnston Charles Leek |
spellingShingle |
Stephen Johnston Charles Leek Fixation Region Overlap: A quantitative method for the analysis of fixational eye movement patterns Journal of Eye Movement Research eye tracking statistics methodology analysis |
author_facet |
Stephen Johnston Charles Leek |
author_sort |
Stephen Johnston |
title |
Fixation Region Overlap: A quantitative method for the analysis of fixational eye movement patterns |
title_short |
Fixation Region Overlap: A quantitative method for the analysis of fixational eye movement patterns |
title_full |
Fixation Region Overlap: A quantitative method for the analysis of fixational eye movement patterns |
title_fullStr |
Fixation Region Overlap: A quantitative method for the analysis of fixational eye movement patterns |
title_full_unstemmed |
Fixation Region Overlap: A quantitative method for the analysis of fixational eye movement patterns |
title_sort |
fixation region overlap: a quantitative method for the analysis of fixational eye movement patterns |
publisher |
Bern Open Publishing |
series |
Journal of Eye Movement Research |
issn |
1995-8692 |
publishDate |
2009-02-01 |
description |
This article presents a new method for the quantitative analyses of fixation patterns in eye tracking data. The Fixation Region Overlap Analysis (FROA) uses thresholded spatial distributions of fixation frequency or duration to determine regions-of-interest (ROIs). The locations of these ROIs are contrasted with fixation regions of other empirically-derived, or modelled, data patterns by comparing region pixel overlap. A Monte Carlo procedure is used to assess the statistical significance of fixation region overlap based on 95% confi-dence intervals (C.I.) of the distribution of random overlap for each set of thresholded ROIs. The value of the FROA method is demonstrated by applying it to data acquired in an object recognition task to determine which of two potential models best account for the observed fixation patterns. |
topic |
eye tracking statistics methodology analysis |
url |
https://bop.unibe.ch/JEMR/article/view/2245 |
work_keys_str_mv |
AT stephenjohnston fixationregionoverlapaquantitativemethodfortheanalysisoffixationaleyemovementpatterns AT charlesleek fixationregionoverlapaquantitativemethodfortheanalysisoffixationaleyemovementpatterns |
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1721423725692190720 |