Improving the Accuracy of Beauty Product Recommendations by Assessing Face Illumination Quality
Parnian Afshar, Jenny Yeon, Andriy Levitskyy, Rahul Suresh, and Amin, Banitalebi-Dehkordi

TL;DR
This paper presents a machine learning framework to assess face illumination quality, improving beauty product recommendations by guiding users to take better-lit photos, especially considering skin tone diversity.
Contribution
The study introduces a novel CNN-based illumination assessment method and creates a diverse synthetic dataset to enhance recommendation accuracy across skin tones.
Findings
The CNN outperforms existing illumination assessment solutions.
Guiding users improves foundation shade matching accuracy.
Synthetic dataset enables better model training for diverse skin tones.
Abstract
We focus on addressing the challenges in responsible beauty product recommendation, particularly when it involves comparing the product's color with a person's skin tone, such as for foundation and concealer products. To make accurate recommendations, it is crucial to infer both the product attributes and the product specific facial features such as skin conditions or tone. However, while many product photos are taken under good light conditions, face photos are taken from a wide range of conditions. The features extracted using the photos from ill-illuminated environment can be highly misleading or even be incompatible to be compared with the product attributes. Hence bad illumination condition can severely degrade quality of the recommendation. We introduce a machine learning framework for illumination assessment which classifies images into having either good or bad illumination…
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Taxonomy
TopicsColor Science and Applications · Color perception and design · Textile materials and evaluations
MethodsFocus
