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Comparative Study of Clustering Based Colour Image Segmentation Techniques

机译:基于聚类的彩色图像分割技术的比较研究

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Image segmentation is very essential and critical to image processing and pattern recognition. Various clustering based segmentation methods have been proposed. However, it is very difficult to choose the method best suited to the type of data. Therefore, the objective of this research was to compare the effectiveness of three clustering methods involving RGB, HSV and CIE L*a*b* color spaces and a variety of real color images. The methods were: K-means clustering algorithm, Partitioning Around Medoids method (PAM) and Kohonen's Self-Organizing Maps method (SOM). To evaluate these three techniques, the connectivity(C), the Dunn index (D) and the silhouette width (S) cluster validation techniques were used. For C, a lower value indicates a better technique and for D and S, a higher value indicates a better technique. Clustering algorithms were evaluated on natural images and their performance is compared. Results demonstrate that K-means and SOM were considered to be the most suitable techniques for image segmentation among CIE L*a*b* and HSV colour spaces.
机译:图像分割对于图像处理和模式识别非常重要,并且是至关重要的。已经提出了各种基于聚类的分段方法。但是,很难选择最适合数据类型的方法。因此,本研究的目的是比较三种聚类方法的有效性,涉及RGB,HSV和CIE L * A * B *颜色空间和各种真实彩色图像。该方法是:K-means聚类算法,围绕麦细管(PAM)和Kohonen的自组织地图方法(SOM)分区。为了评估这三种技术,使用连接(C),DUNN指数(D)和轮廓宽度验证技术。对于C,较低的值表示更好的技术和D以及S,更高的值表示更好的技术。在自然图像上评估聚类算法,并比较它们的性能。结果表明,K-Means和SOM被认为是CIE L * A * B *和HSV颜色空间中的图像分割最合适的技术。

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