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Color image segmentation based on Decision-Theoretic Rough Set model and Fuzzy C-Means algorithm

机译:基于决策理论粗糙集模型和模糊C-均值算法的彩色图像分割

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This paper proposes an approach which combines the Decision Theoretic Rough Set model (DTRS) and Fuzzy C-Means(FCM) algorithm to perform color image segmentation. The FCM algorithm has the limitation that it requires the initialization of cluster centroids and the number of clusters. In this paper, the DTRS model is applied to color image segmentation for the purpose of clustering validity analysis which could overcome the defect of the FCM algorithm. Firstly, we adopt the Turbopixel algorithm to split the color image into many small regions called superpixels for presegmentation. Based on color image color histogram feature extraction we use Bhattacharyya coefficient to measure the similarity between superpixels, which is in preparation for clustering validity analysis. It is our focus that we will obtain cluster centroids and the number of clusters using FCM. Our approach is according to the hierarchical clustering validity analysis algorithm using DTRS model. Finally, the FCM algorithm is utilized to achieve the result of color image segmentation. Experimental results show that the DTRS-based preprocessing approach can obtain better segmentation results than other improved FCM approaches such as ant colony algorithm or histogram thresholding approach.
机译:提出了一种结合决策理论粗糙集模型(DTRS)和模糊C-均值(FCM)算法进行彩色图像分割的方法。 FCM算法的局限性在于,它需要初始化簇质心和簇数。本文将DTRS模型应用于彩色图像分割,以进行聚类有效性分析,克服了FCM算法的缺陷。首先,我们采用Turbopixel算法将彩色图像分成许多称为超像素的小区域进行预分割。基于彩色图像颜色直方图特征提取,我们使用Bhattacharyya系数来测量超像素之间的相似度,这为聚类有效性分析做准备。我们的重点是使用FCM获取聚类质心和聚类数。我们的方法是根据使用DTRS模型的层次聚类有效性分析算法。最后,利用FCM算法获得彩色图像分割的结果。实验结果表明,与其他改进的FCM方法(如蚁群算法或直方图阈值方法)相比,基于DTRS的预处理方法可以获得更好的分割结果。

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