Enhanced skin colour classifier using RGB Ratio model
Ghazali Osman, Muhammad Suzuri Hitam, Mohd Nasir Ismail

TL;DR
This paper introduces a novel RGB ratio-based skin colour classifier that improves detection accuracy and reduces false positives, especially under challenging lighting and skin tone variations, outperforming existing models.
Contribution
The study proposes a new RGB ratio model for skin colour detection, demonstrating superior performance over existing models on multiple datasets.
Findings
Outperforms Kovac, Saleh, and Swift models in detection rate.
Reduces false positives caused by reddish objects and shadows.
Effective in detecting darkened and shadowed skin.
Abstract
Skin colour detection is frequently been used for searching people, face detection, pornographic filtering and hand tracking. The presence of skin or non-skin in digital image can be determined by manipulating pixels colour or pixels texture. The main problem in skin colour detection is to represent the skin colour distribution model that is invariant or least sensitive to changes in illumination condition. Another problem comes from the fact that many objects in the real world may possess almost similar skin-tone colour such as wood, leather, skin-coloured clothing, hair and sand. Moreover, skin colour is different between races and can be different from a person to another, even with people of the same ethnicity. Finally, skin colour will appear a little different when different types of camera are used to capture the object or scene. The objective in this study is to develop a skin…
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Taxonomy
Topicsmelanin and skin pigmentation
