Color space selection for human skin detection using color-texture features and neural networks

Hani K. Al-Mohair, J. Mohamad-Saleh, S. A. Suandi
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引用次数: 20

Abstract

Skin color is a robust cue in human skin detection. It has been widely used in various human-related image processing applications. Although many researches have been carried out for skin color detection, there is no consensus on which color space is the most appropriate for skin color detection because many researchers do not provide strict justification of their color space choice. In this paper, a comprehensive comparative study using the Multilayer Perceptron artificial neural network (MLP), which is a universal classifier, is carried out to evaluate the overall performance of different color-spaces for skin detection. It aims at determining the most optimal color space using color and color-texture features separately. The study has been carried out using images of different databases. The experimental results showed that the YIQ color space gives the highest separability between skin and non-skin pixels among the different color spaces tested using color features. Combining color and texture eliminates the differences between color spaces but leads to much more accurate and efficient skin detection.
基于颜色纹理特征和神经网络的人体皮肤检测颜色空间选择
在人体皮肤检测中,肤色是一个可靠的线索。它已广泛应用于各种与人类相关的图像处理应用。尽管对肤色检测进行了许多研究,但由于许多研究者没有提供严格的颜色空间选择理由,因此对于哪种颜色空间最适合肤色检测并没有达成共识。本文利用通用分类器多层感知器人工神经网络(Multilayer Perceptron artificial neural network, MLP)进行了全面的对比研究,以评估不同颜色空间用于皮肤检测的整体性能。它的目的是分别使用颜色和颜色纹理特征来确定最优的颜色空间。这项研究使用了不同数据库的图像。实验结果表明,在使用颜色特征测试的不同颜色空间中,YIQ颜色空间给出了最高的皮肤和非皮肤像素之间的可分离性。结合颜色和纹理消除了颜色空间之间的差异,但导致更准确和有效的皮肤检测。
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