基于密度峰值和k均值聚类的图像分割

Yu Hui, Yanju Han
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引用次数: 1

摘要

K-means是一种经典且应用广泛的数据聚类算法。尽管它很有效,但缺点很明显,它需要事先知道k值,不适合复杂的情况。密度峰聚类可以在不规则数据集上进行练习,比K-means具有更高的精度和更好的性能,并且不需要获得先验知识。然而,很少有人关注它们在图像分割方面的性能。本文提出了基于k均值和密度峰聚类的图像分割方法,大大减少了运行时间。与现有方法相比,我们的方法有以下几个方面的改进:1)与现有的常规方法相比,该方法的运行时性能大大缩短。2)与现有的其他图像分割方法不同,我们的方法可以保存图像的原始颜色,并提供比较真实的图像片段。测试数据的实验将证明方法的有效性,并根据经验结果提供详细的描述作为结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced Density Peak and K-means Clustering on Image Segmentation
K-means is a classical and widely-used data clustering algorithm. Despite its effectiveness, the drawbacks are obvious that it needs to know k value previously and not suitable for complex situations. Density Peak clustering can practice on irregular data sets with a higher accuracy and better performance than K-means and doesn’t need to get prior knowledge. However, few concentrated on their performances on image segmentation. In this paper, we propose novel image segmentation approaches based on K-means and Density Peak clustering which greatly reduce running time. Compared with current methods, our methods have improved aspects as following: 1) The methods could have much shorter run time performance than other current normal methods. 2) Unlike other current image segmentation methods, our method could save the original colors of the pictures and provide a rather real image segments. Experiments on test data will testify the validity of the methods and a detailed description based on empirical results will be provided as conclusions.
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