Enhanced Food Category Recognition under Illumination-Induced Domain Shift
Keonvin Park
Aditya Pal
Jin Hong Mok
Main:14 Pages
Bibliography:3 Pages
4 Tables
Abstract
Visual food recognition systems deployed in real-world environments, such as automated conveyor-belt inspection, are highly sensitive to domain shifts caused by illumination changes. While recent studies have shown that lighting variations can significantly distort food perception by both humans and AI, existing works are often limited to single food categories or controlled settings, and most public food datasets lack explicit illumination annotations.
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