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Automatic Seeded Region Growing Image Segmentation for Medical Image Segmentation: A Brief Review

机译:医学图像分割的自动播种区域生长图像分割:简要回顾

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摘要

In the domain of computer technology, image processing strategies have become a part of various applications. A few broadly used image segmentation methods have been characterized as seeded region growing (SRG), edge-based image segmentation, fuzzy k-means image segmentation, etc. SRG is a quick, strongly formed and impressive image segmentation algorithm. In this paper, we delve into different applications of SRG and their analysis. SRG delivers better results in analysis of magnetic resonance images, brain image, breast images, etc. On the other hand, it has some limitations as well. For example, the seed points have to be selected manually and this manual selection of seed points at the time of segmentation brings about wrong selection of regions. So, a review of some automatic seed selection methods with their advantages, disadvantages and applications in different fields has been presented.
机译:在计算机技术领域,图像处理策略已成为各种应用的一部分。 已经表征了一些宽泛使用的图像分割方法作为种子区域生长(SRG),基于边缘的图像分割,模糊K均值图像分割等。SRG是一种快速,强大地形成和令人印象深刻的图像分割算法。 在本文中,我们深入研究了SRG的不同应用及其分析。 另一方面,SRG在分析磁共振图像,脑图像,乳房图像等方面提供更好的结果。它也有一些限制。 例如,必须手动选择种子点,并且在分割时的种子点的这种手册选择带来错误的区域。 因此,已经介绍了对不同领域的优缺点和应用的一些自动种子选择方法的审查。

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