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Skin segmentation using color pixel classification: analysis and comparison

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posted on 2024-11-15, 10:23 authored by Son Lam PhungSon Lam Phung, Abdesselam BouzerdoumAbdesselam Bouzerdoum, D Chai
This work presents a study of three important issues of the color pixel classification approach to skin segmentation: color representation, color quantization, and classification algorithm. Our analysis of several representative color spaces using the Bayesian classifier with the histogram technique shows that skin segmentation based on color pixel classification is largely unaffected by the choice of the color space. However, segmentation performance degrades when only chrominance channels are used in classification. Furthermore, we find that color quantization can be as low as 64 bins per channel, although higher histogram sizes give better segmentation performance. The Bayesian classifier with the histogram technique and the multilayer perceptron classifier are found to perform better compared to other tested classifiers, including three piecewise linear classifiers, three unimodal Gaussian classifiers, and a Gaussian mixture classifier.

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Citation

This article was originally published as: Phung, SL, Bouzerdoum, A & Chai, D, Skin segmentation using color pixel classification: analysis and comparison, IEEE Transactions on Pattern Analysis and Machine Intelligence, January 2005, 27(1), 148-154. Copyright IEEE 2005.

Journal title

IEEE Transactions on Pattern Analysis and Machine Intelligence

Volume

27

Issue

1

Pagination

148-154

Language

English

RIS ID

11932

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