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Highlighting the Challenges of Blinks in Eye Tracking for Interactive Systems

Jesse W. Grootjen, Henrike Weingärtner, Sven Mayer

202313 citationsDOI

Abstract

Eye tracking is the basis for many intelligent systems to predict user actions. A core challenge with eye-tracking data is that it inherently suffers from missing data due to blinks. Approaches such as intent prediction and user state recognition process gaze data using neural networks; however, they often have difficulty handling missing information. In an effort to understand how prior work dealt with missing data, we found that researchers often simply ignore missing data or adopt use-case-specific approaches, such as artificially filling in missing data. This inconsistency in handling missing data in eye tracking hinders the development of effective intelligent systems for predicting user actions and limits reproducibility. Furthermore, this can even lead to incorrect results. Thus, this lack of standardization calls for investigating possible solutions to improve the consistency and effectiveness of processing eye-tracking data for user action prediction.

Topics & Concepts

Computer scienceMissing dataEye trackingConsistency (knowledge bases)Artificial intelligenceStandardizationMachine learningProcess (computing)Data miningHuman–computer interactionOperating systemGaze Tracking and Assistive TechnologyCognitive Functions and MemoryEEG and Brain-Computer Interfaces
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