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Medical Image Segmentation via Optimized K-Means

机译:通过优化的K-Meance进行医学图像分割

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摘要

The main purpose of this paper is to identify the suitable algorithm for image segmentation. Medical images have made a great impact on medicine, diagnosis, and treatment. The most important part of image processing is image segmentation. Many image segmentation methods by various researches for medical image segmentation have been presented in this paper. In the course of the comparative analysis, it is evidently demonstrated that the traditional k-means is not appropriate for segmenting the medical images. But K-means gives the best results for image segmentation with smaller number of K – values. Accordingly K-means can be mixtured with snake optimization method and Normalized Cut algorithm and the proposed algorithm is labeled as optimized K-means.
机译:本文的主要目的是识别图像分割的合适算法。医学图像对医学,诊断和治疗产生了很大影响。图像处理中最重要的部分是图像分割。本文介绍了许多通过各种研究医学图像分割研究的图像分割方法。在比较分析过程中,显然证明传统的K-Means不适合分割医学图像。但K-means为具有较少数量的K值提供了最佳结果。因此,K-Means可以用蛇优化方法混合,并标准化切割算法,所提出的算法标记为优化的k均值。

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