一种针对不同医学图像模态的高效分割技术

A. A. Mahmoud, W. El-shafai, T. Taha, El-Sayed M. El-Rabaie, O. Zahran, A. El-Fishawy, F. El-Samie
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引用次数: 3

摘要

本文对医学图像的分割进行了研究。图像分割是将图像分割成许多不重叠的部分(像素集,也称为图像对象)的过程。图像分析过程的成功与否取决于分割过程的准确性,而图像的成功分割通常是一个难题。在图像预处理操作期间,给定的输入是图像,其输出是根据所使用的技术增强的高质量图像。本文对图像增强和图像分割技术的基本原理进行了扎实的介绍。首先,通过引入形态学重构操作,将图像的局部空间信息与模糊c均值相结合,保证图像的抗噪和细节保护;形态学操作的目的是去除图像纹理中的缺陷。其次,隶属度划分的修改仅依赖于隶属度划分的空间邻居,而不依赖于局部空间邻居内像素点与聚类中心之间的距离。该算法不需要计算邻近像素点与聚类中心之间的距离,实现简单,速度快。由于它能够有效地提高隶属度划分矩阵,因此在处理噪声图像时也很有效。在不同医学图像多模态上的实验结果表明,该算法具有较好的分割效果,且分割时间短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Segmentation Technique for Different Medical Image Modalities
In this paper a study on the segmentation of the medical image is carried out. Image segmentation is the process of splitting an image into a number of non-overlapped segments (sets of pixels, also known as image objects). The success of image analysis process depends on accuracy of segmentation process, but a successful segmentation of an image is generally a difficult problem. During an image preprocessing operation, the input given is an image and its output is an enhanced high-quality image as per the techniques used. This paper provides a solid introduction to image enhancement along with image segmentation technique fundamentals. Firstly, the local spatial information of the image is combined with fuzzy c-mean by introducing morphological reconstruction operation to ensure noise-immunity and image detail-protection. The objective of using morphological operations is to remove the defects in the texture of the image. Secondly, the modification of membership partition depends only on the spatial neighbors of membership partition instead of the distance between pixels within local spatial neighbors and cluster centers. The proposed algorithm is very simple to implement and significantly fast, since it is not necessary to compute the distance between the neighboring pixels and the cluster centers. It is also efficient when dealing with noisy image because of its ability to improve membership partition matrix efficiently. Experimental results performed on different medical image multimodalities illustrate that the proposed algorithm can achieve better results, as well as it requires short time for the image segmentation process.
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