Multiphase Image Segmentation Model Based on Clustering Algorithm

Rui Guo, Liang Zhang, Ze Yang
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引用次数: 0

Abstract

In the traditional Multiphase Image segmentation algorithm, there are some problems, such as long operation time, high calculation cost and high error rate. In order to improve the above problem, originally proposed a multiphase image segmentation enhancement algorithm and model based on the combination of clustering algorithm. In this paper, for the problem of large amount of initial calculation for the segmentation model of multiple targets, a clustering algorithm is proposed to segment the image, and finally the model is established, the function data set is initialized, and the method of multiphase image segmentation is easier to segment idealized goal. This method can reduce the sensitivity of the clustering algorithm in the initialization, making the multiphase image segmentation model under the clustering algorithm easier to segment the ideal image. At the same time, the image segmentation model can quickly get the minimum value, reduce the amount of calculation, fully and effectively improve the efficiency. The M-level set implicit surface of multi-level set function is used to divide the image into m regions. The maximum value of level setting function is calculated to realize fast segmentation and reconstruction of constant value of multiphase segmentation. Experimental results show that the algorithm can greatly improve the contrast and clarity of images, and bring the best visual experience to people. Compared with the traditional clustering model, it has less iteration steps and faster segmentation speed.
基于聚类算法的多相图像分割模型
传统的多相图像分割算法存在运算时间长、计算成本高、错误率高等问题。为了改进上述问题,最初提出了一种基于聚类算法的多相图像分割增强算法与模型相结合。本文针对多目标分割模型初始计算量大的问题,提出了一种聚类算法对图像进行分割,最后建立模型,初始化函数数据集,多相图像分割方法更容易分割理想目标。该方法可以降低聚类算法在初始化时的灵敏度,使聚类算法下的多相图像分割模型更容易分割出理想的图像。同时,该图像分割模型可以快速得到最小值,减少了计算量,充分有效地提高了效率。采用多级集函数的m级集隐式曲面将图像划分为m个区域。计算水平设定函数的最大值,实现多相分割的快速分割和恒值重建。实验结果表明,该算法可以大大提高图像的对比度和清晰度,给人们带来最佳的视觉体验。与传统聚类模型相比,该算法迭代步骤少,分割速度快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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