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Learning to Detect Objects From Eye-Tracking Data
i-Perception
- United Kingdom
doi 10.1068/ii57
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Categories
Ophthalmology
Sensory Systems
Experimental
Artificial Intelligence
Cognitive Psychology
Date
August 1, 2014
Authors
D.P Papadopoulous
A.D.F Clarke
F Keller
V Ferrari
Publisher
Pion Ltd
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