Color image segmentation using density-based clustering

Qixiang Ye, Wen Gao, Wei Zeng
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引用次数: 30

Abstract

Color image segmentation is an important but still open problem in image processing. We propose a method for this problem by integrating the spatial connectivity and color features of the pixels. Considering that an image can be regarded as a dataset in which each pixel has a spatial location and a color value, color image segmentation can be obtained by clustering these pixels into different groups of coherent spatial connectivity and color. To discover the spatial connectivity of the pixels, density-based clustering is employed, which is an effective clustering method used in data mining for discovering spatial databases. The color similarity of the pixels is measured in Munsell (HVC) color space whose perceptual uniformity ensures the color change in the segmented regions is smooth in terms of human perception. Experimental results using the proposed method demonstrate encouraging performance.
基于密度聚类的彩色图像分割
彩色图像分割是图像处理中一个重要但仍未解决的问题。我们提出了一种将像素的空间连通性和颜色特征相结合的方法。考虑到图像可以看作是一个数据集,其中每个像素都有一个空间位置和颜色值,可以通过将这些像素聚类到不同的空间连通性和颜色组中来获得彩色图像分割。为了发现像素的空间连通性,采用了基于密度的聚类方法,这是一种有效的聚类方法,用于数据挖掘中发现空间数据库。像素的颜色相似度在蒙塞尔(Munsell, HVC)色彩空间中测量,其感知均匀性保证了分割区域的颜色变化在人类感知上是平滑的。实验结果表明,该方法具有良好的性能。
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