Skin color classification of Koreans using clustering.

Seula Kye, Onseok Lee
Author Information
  1. Seula Kye: Department of Software Convergence, Graduate School, Soonchunhyang University, Asan City, Republic of Korea.
  2. Onseok Lee: Department of Software Convergence, Graduate School, Soonchunhyang University, Asan City, Republic of Korea. ORCID

Abstract

BACKGROUND/PURPOSE: Skin color is used as an index for diagnosing and predicting skin irritation, dermatitis, and skin conditions because Skin color changes based on various factors. Therefore, a new method for consistently and accurately evaluating Skin color while overcoming the limitations of the existing Skin color evaluation method was proposed, and its usefulness was demonstrated.
METHODS: Skin color was quantified using the RGB (Red, Green, Blue), HSV (Hue Saturation Value), CIELab, and YCbCr color spaces in the acquired Korean skin images, which were classified through clustering. In addition, the classification performances of the existing visual scoring method and the proposed Skin color classification method were compared and analyzed using multinomial logistic regression, support vector machine, K-nearest neighbor, and random forest.
RESULTS: After quantifying the Skin color through the color space conversion of the skin image, the Skin color classification performance according to the number of quantified features and the classifier was verified. In addition, the usefulness of the proposed classification method was confirmed by comparing its classification performance with that of the existing Skin color classification method.
CONCLUSION: In this study, a method was proposed to objectively classify Skin color values quantified from skin images of Koreans acquired using a digital camera through clustering. To verify the proposed method, its classification performance was compared with that of the existing classification method, and an optimized classification method was presented for the classification of Korean Skin color. Thus, the proposed method can objectively classify Skin color and can be used as a cornerstone in research to quantify Skin color and establish objective classification criteria.

Keywords

References

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Grants

  1. /Soonchunhyang University Research Fund
  2. 2022R1A2C1010170/National Research Foundation of Korea (NRF)
  3. 5199990914048/BK21 Fostering Outstanding Universities for Research (FOUR)

MeSH Term

Humans
Skin Pigmentation
Algorithms
Color
Cluster Analysis
Republic of Korea
Image Processing, Computer-Assisted

Word Cloud

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