Facial Spot Contour Extraction based on Color Image Processing

Xiaojin Liu, Jiuai Sun, Xiong Wang
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引用次数: 1

Abstract

In this paper we discuss the problem of automatic contour extraction of facial spot based on RGB images. Prior similar work has been frequently used for processing those hyperpigmentation skin conditions such as melasma and melanoma, where the separation between pigmented area and normal skin is easy to define. However the melanin under facial spots is normally deposited in a scatter way and distributed superficially, this makes the contrast between the area of spots and that of normal skin become small. As such it is difficult to directly extract the contour of the spots. After analyzing the individual three color channels of facial spot RGB skin image, we found that the blue channel provides the clearest edge of the spots, while the edge presents a certain amount of blur in the red channel. Therefore, this study proposed a new image processing strategy for facial spots analysis, i.e. to firstly separate the RGB channels to obtain the blue channel, then, the maximum entropy threshold segmentation and the Snake method are used to extract the contour of color spots. The experiments verified that the separated color channel and Snake-based method can help to reliably extract edge contours and preserve the color information of the spot.
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基于彩色图像处理的人脸斑点轮廓提取
本文讨论了基于RGB图像的人脸斑点轮廓自动提取问题。先前类似的工作经常用于处理那些色素沉着的皮肤状况,如黄褐斑和黑色素瘤,其中色素沉着区域与正常皮肤之间的分离很容易定义。然而,面部斑点下的黑色素通常呈散点沉积,分布在表面,这使得斑点面积与正常皮肤面积的反差变小。因此,很难直接提取斑点的轮廓。通过对面部斑点RGB皮肤图像单独的三个颜色通道进行分析,我们发现蓝色通道提供了斑点最清晰的边缘,而红色通道的边缘呈现出一定程度的模糊。因此,本研究提出了一种新的面部斑点分析的图像处理策略,即首先分离RGB通道获得蓝色通道,然后利用最大熵阈值分割和Snake方法提取彩色斑点的轮廓。实验验证了分离的颜色通道和基于snake的方法可以可靠地提取边缘轮廓并保留斑点的颜色信息。
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