K均值和模糊C均值对压缩输入图像分割结果的比较分析

I. A. W. Kusuma, Afriliana Kusumadewi
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引用次数: 0

摘要

在模式识别中,图像处理在自动将物体与背景分离方面发挥着作用。此外,该对象将由模式分类器进行处理。在医学界,图像处理起着非常重要的作用。CT扫描(计算机断层扫描)或CAT扫描(计算机轴向断层扫描)是可用于查看人体各部分的碎片或横截面的图像处理应用程序的示例。层析成像是通过多次一维扫描从三维胶片中产生二维图像的过程。磁共振成像(MRI)是放射学领域中最常用的图像。MRI图像可以在不改变患者位置的情况下,在多个切片(多平面)中清晰地显示对象的解剖细节。在本研究中,在分割过程中比较了两种方法,即K-均值和模糊C均值,目的是在正常区域或有扰动(病变)的区域之间进行分离。所使用的图像是大脑和胸部MRI图像,总共有10个MRI图像。将分割结果的图像质量与使用信息变化(VOI)参数、全局一致性误差(GCE)、MSE(均方误差)、PSNR(峰值信噪比)和分割时间的质量测试进行比较。在模式识别中,图像处理在自动将物体与背景分离方面发挥着作用。此外,该对象将由模式分类器进行处理。在医学界,图像处理起着非常重要的作用。CT扫描(计算机断层扫描)或CAT扫描(计算机轴向断层扫描)是可用于查看人体各部分的碎片或横截面的图像处理应用程序的示例。层析成像是通过多次一维扫描从三维胶片中产生二维图像的过程。磁共振成像(MRI)是放射学领域中最常用的图像。MRI图像可以在不改变患者位置的情况下,在多个切片(多平面)中清晰地显示对象的解剖细节。在本研究中,在分割过程中比较了两种方法,即K-均值和模糊C均值,目的是在正常区域或有扰动(病变)的区域之间进行分离。所使用的图像是大脑和胸部MRI图像,总共有10个MRI图像。将分割结果的图像质量与使用信息变化(VOI)参数、全局一致性误差(GCE)、MSE(均方误差)、PSNR(峰值信噪比)和分割时间的质量测试进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analisa Perbandingan Citra Hasil Segmentasi Menggunakan Metode K-Means dan Fuzzy C Means pada Citra Input Terkompresi

In pattern recognition, image processing plays a role in automatically separating objects from the background. In addition, the object will be processed by the pattern classifier. In the medical world, image processing plays a very important role. CT Scan (Computed Tomography) or CAT Scan (Computed Axial Tomography) is an example of an image processing application that can be used to view fragments or cross sections of parts of the human body. Tomography is the process of producing two-dimensional images from three-dimensional film through several one-dimensional scans. Magnetic resonance imaging (MRI) is the image most often used in the field of radiology. MRI images can display the anatomical details of objects clearly in multiple sections (multiplanar) without changing the patient's position. In this study, two methods were compared, namely K-Means and Fuzzy C Means, in a segmentation process with the aim of separating between normal areas or areas with disturbances (lesions). The images used are brain and chest MRI images with a total of 10 MRI images. The image quality of the segmentation results is compared with the quality test using the Variation of Information (VOI) parameters, Global Consistency Error (GCE), MSE (Mean Square Error), PSNR (Peak Signal to Noise Ratio) and segmentation time.

In pattern recognition, image processing plays a role in automatically separating objects from the background. In addition, the object will be processed by the pattern classifier. In the medical world, image processing plays a very important role. CT Scan (Computed Tomography) or CAT Scan (Computed Axial Tomography) is an example of an image processing application that can be used to view fragments or cross sections of parts of the human body. Tomography is the process of producing two-dimensional images from three-dimensional film through several one-dimensional scans. Magnetic resonance imaging (MRI) is the image most often used in the field of radiology. MRI images can display the anatomical details of objects clearly in multiple sections (multiplanar) without changing the patient's position. In this study, two methods were compared, namely K-Means and Fuzzy C Means, in a segmentation process with the aim of separating between normal areas or areas with disturbances (lesions). The images used are brain and chest MRI images with a total of 10 MRI images. The image quality of the segmentation results is compared with the quality test using the Variation of Information (VOI) parameters, Global Consistency Error (GCE), MSE (Mean Square Error), PSNR (Peak Signal to Noise Ratio) and segmentation time.
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