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Geometry and Gesture-Based Features from Saccadic Eye-Movement as a Biometric in Radiology...

by Folami T Alamudun, Tracy Hammond, Hong Jun Yoon, Georgia Tourassi
Publication Type
Conference Paper
Journal Name
Augmented Cognition. Neurocognition and Machine Learning.
Publication Date
Page Numbers
123 to 138
Volume
10284
Conference Name
International conference for human computer interaction
Conference Location
Vancouver, Canada
Conference Date

In this study, we present a novel application of sketch gesture recognition on eye-movement for biometric identification and estimating task expertise.
The study was performed for the task of mammographic screening with simultaneous viewing of four coordinated breast views as typically done in clinical practice.
Eye-tracking data and diagnostic decisions collected for 100 mammographic cases (25 normal, 25 benign, 50 malignant) and 10 readers (three board certified radiologists and seven radiology residents), formed the corpus for this study.
Sketch gesture recognition techniques were employed to extract geometric and gesture-based features from saccadic eye-movements.
Our results show that saccadic eye-movement, characterized using sketch-based features, result in more accurate models for predicting individual identity and level of expertise than more traditional eye-tracking features.