
Eye Movement Feature Set and Predictive Model for Dyslexia
Publication year - 2021
Publication title -
international journal of cognitive informatics and natural intelligence
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.164
H-Index - 24
eISSN - 1557-3966
pISSN - 1557-3958
DOI - 10.4018/ijcini.20211001oa15
Subject(s) - computer science , dyslexia , saccade , artificial intelligence , eye movement , fixation (population genetics) , support vector machine , eye tracking , pattern recognition (psychology) , computer vision , reading (process) , population , demography , sociology , political science , law
Dyslexia is a learning disorder that can cause difficulties in reading or writing. Dyslexia is not a visual problem but many dyslexics have impaired magnocellular system which causes poor eye control. Eye-trackers are used to track eye movements. This research work proposes a set of significant eye movement features that are used to build a predictive model for dyslexia. Fixation and saccade eye events are detected using the dispersion-threshold and velocity-threshold algorithms. Various machine learning models are experimented. Validation is done on 185 subjects using 10-fold cross-validation. Velocity based features gave high accuracy compared to statistical and dispersion features. Highest accuracy of 96% was achieved using the Hybrid Kernel Support Vector Machine- Particle Swarm Optimization model followed by the Xtreme Gradient Boosting model with an accuracy of 95%. The best set of features are the first fixation start time, average fixation saccade duration, the total number of fixations, total number of saccades and ratio between saccades and fixations.