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Main Authors: Alyoubi, Rama, Alharbi, Taif, Alghamdi, Albatul, Alshehri, Yara, Alghamdi, Elham
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.14931
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author Alyoubi, Rama
Alharbi, Taif
Alghamdi, Albatul
Alshehri, Yara
Alghamdi, Elham
author_facet Alyoubi, Rama
Alharbi, Taif
Alghamdi, Albatul
Alshehri, Yara
Alghamdi, Elham
contents This study presents a robust framework that leverages advanced imaging techniques and machine learning for feature extraction and classification of key human attributes-namely skin tone, hair color, iris color, and vein-based undertones. The system employs a multi-stage pipeline involving face detection, region segmentation, and dominant color extraction to isolate and analyze these features. Techniques such as X-means clustering, alongside perceptually uniform distance metrics like Delta E (CIEDE2000), are applied within both LAB and HSV color spaces to enhance the accuracy of color differentiation. For classification, the dominant tones of the skin, hair, and iris are extracted and matched to a custom tone scale, while vein analysis from wrist images enables undertone classification into "Warm" or "Cool" based on LAB differences. Each module uses targeted segmentation and color space transformations to ensure perceptual precision. The system achieves up to 80% accuracy in tone classification using the Delta E-HSV method with Gaussian blur, demonstrating reliable performance across varied lighting and image conditions. This work highlights the potential of AI-powered color analysis and feature extraction for delivering inclusive, precise, and nuanced classification, supporting applications in beauty technology, digital personalization, and visual analytics.
format Preprint
id arxiv_https___arxiv_org_abs_2505_14931
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Colors Matter: AI-Driven Exploration of Human Feature Colors
Alyoubi, Rama
Alharbi, Taif
Alghamdi, Albatul
Alshehri, Yara
Alghamdi, Elham
Computer Vision and Pattern Recognition
Artificial Intelligence
This study presents a robust framework that leverages advanced imaging techniques and machine learning for feature extraction and classification of key human attributes-namely skin tone, hair color, iris color, and vein-based undertones. The system employs a multi-stage pipeline involving face detection, region segmentation, and dominant color extraction to isolate and analyze these features. Techniques such as X-means clustering, alongside perceptually uniform distance metrics like Delta E (CIEDE2000), are applied within both LAB and HSV color spaces to enhance the accuracy of color differentiation. For classification, the dominant tones of the skin, hair, and iris are extracted and matched to a custom tone scale, while vein analysis from wrist images enables undertone classification into "Warm" or "Cool" based on LAB differences. Each module uses targeted segmentation and color space transformations to ensure perceptual precision. The system achieves up to 80% accuracy in tone classification using the Delta E-HSV method with Gaussian blur, demonstrating reliable performance across varied lighting and image conditions. This work highlights the potential of AI-powered color analysis and feature extraction for delivering inclusive, precise, and nuanced classification, supporting applications in beauty technology, digital personalization, and visual analytics.
title Colors Matter: AI-Driven Exploration of Human Feature Colors
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2505.14931