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Eye movement analysis with hidden Markov models (EMHMM) with co-clustering

Janet H. Hsiao, Hui Lan, Yueyuan Zheng, Antoni B. Chan

2021Behavior Research Methods53 citationsDOIOpen Access PDF

Abstract

The eye movement analysis with hidden Markov models (EMHMM) method provides quantitative measures of individual differences in eye-movement pattern. However, it is limited to tasks where stimuli have the same feature layout (e.g., faces). Here we proposed to combine EMHMM with the data mining technique co-clustering to discover participant groups with consistent eye-movement patterns across stimuli for tasks involving stimuli with different feature layouts. Through applying this method to eye movements in scene perception, we discovered explorative (switching between the foreground and background information or different regions of interest) and focused (mainly looking at the foreground with less switching) eye-movement patterns among Asian participants. Higher similarity to the explorative pattern predicted better foreground object recognition performance, whereas higher similarity to the focused pattern was associated with better feature integration in the flanker task. These results have important implications for using eye tracking as a window into individual differences in cognitive abilities and styles. Thus, EMHMM with co-clustering provides quantitative assessments on eye-movement patterns across stimuli and tasks. It can be applied to many other real-life visual tasks, making a significant impact on the use of eye tracking to study cognitive behavior across disciplines.

Topics & Concepts

Eye movementEye trackingCluster analysisComputer scienceSimilarity (geometry)PerceptionArtificial intelligenceFeature (linguistics)Hidden Markov modelCognitionPattern recognition (psychology)Movement (music)PsychologyAestheticsLinguisticsNeurosciencePhilosophyImage (mathematics)Gaze Tracking and Assistive TechnologyVisual Attention and Saliency DetectionFace Recognition and Perception