TL;DR
This paper introduces a novel saliency map-based feature extraction method for classifying eye-tracking data, improving accuracy across multiple real-world applications by leveraging computational models of visual attention.
Contribution
The paper presents a new approach that uses saliency maps for feature extraction, outperforming previous methods in diverse eye-tracking classification tasks.
Findings
Achieved superior classification performance over state-of-the-art methods.
Demonstrated effectiveness across three distinct real-world applications.
Provided a general paradigm for utilizing saliency maps in eye-tracking analysis.
Abstract
A plethora of research in the literature shows how human eye fixation pattern varies depending on different factors, including genetics, age, social functioning, cognitive functioning, and so on. Analysis of these variations in visual attention has already elicited two potential research avenues: 1) determining the physiological or psychological state of the subject and 2) predicting the tasks associated with the act of viewing from the recorded eye-fixation data. To this end, this paper proposes a visual saliency based novel feature extraction method for automatic and quantitative classification of eye-tracking data, which is applicable to both of the research directions. Instead of directly extracting features from the fixation data, this method employs several well-known computational models of visual attention to predict eye fixation locations as saliency maps. Comparing the…
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