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Performance of k-means based satellite image clustering in RGB and HSV color space

机译:在RGB和HSV颜色空间中基于k均值的卫星图像聚类的性能

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This paper throws a light on the available clustering techniques and algorithms, k-means is used to cluster standard and satellite image in RGB and HSV color space. Normally satellite images comes with data and noises, in order to extract meaningful information efficiently there is a need of image clustering and performance of clustering based on pixel classification is greatly affected by the color space we selected, because image analysis in terms of Red, Green and Blue components is more difficult as compared to in terms of hue, saturation and value in context of differentiation an object. Our analysis of image clustering in two different color spaces using the k-means technique shows that clustering performance decreases with RGB color space when compared to HSV color space. CHI, DBI and SE indexes are calculated and compared.
机译:本文重点介绍了可用的聚类技术和算法,使用k均值对RGB和HSV颜色空间中的标准图像和卫星图像进行聚类。通常,卫星图像带有数据和噪声,为了有效地提取有意义的信息,需要图像聚类,并且基于像素分类的聚类性能会受到我们选择的色彩空间的极大影响,因为图像分析采用红色,绿色表示与蓝色成分相比,在区分对象时,其色调,饱和度和价值方面要困难得多。我们使用k均值技术对两个不同颜色空间中的图像聚类分析表明,与HSV颜色空间相比,聚类性能随RGB颜色空间而降低。计算和比较CHI,DBI和SE索引。

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