Back to Search Start Over

Deep semantic gaze embedding and scanpath comparison for expertise classification during OPT viewing

Authors :
Castner, Nora
Kübler, Thomas
Scheiter, Katharina
Richter, Juilane
Eder, Thérése
Hüttig, Fabian
Keutel, Constanze
Kasneci, Enkelejda
Publication Year :
2020

Abstract

Modeling eye movement indicative of expertise behavior is decisive in user evaluation. However, it is indisputable that task semantics affect gaze behavior. We present a novel approach to gaze scanpath comparison that incorporates convolutional neural networks (CNN) to process scene information at the fixation level. Image patches linked to respective fixations are used as input for a CNN and the resulting feature vectors provide the temporal and spatial gaze information necessary for scanpath similarity comparison.We evaluated our proposed approach on gaze data from expert and novice dentists interpreting dental radiographs using a local alignment similarity score. Our approach was capable of distinguishing experts from novices with 93% accuracy while incorporating the image semantics. Moreover, our scanpath comparison using image patch features has the potential to incorporate task semantics from a variety of tasks

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2003.13987
Document Type :
Working Paper