乳腺x线图像计算机辅助检测的二类模糊推理系统设计

Volkan Goreke, E. Uzunhisarcikli, B. Oztoprak
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引用次数: 0

摘要

目前,x线乳房x线照相术已被放射科医生广泛应用于乳腺癌肿块的检测。这种计算机辅助系统图像被医生用于解释,提高了医生识别肿块的成就。由基本图像处理和分类部分组成的计算机辅助检测系统的工作仍在进行中。在海量分类中,人工神经网络和支持向量机结构等方法得到了广泛的应用。我们在以往的工作中开放获取了MIAS包含大量来自数据库和免费乳房x光片图像的图像处理技术和三种纹理属性,通过对这些属性进行二次统计分析和导出值统计,并利用Matlab模糊工具箱对1型模糊属性与统计值进行推理系统的设计。在本研究中,使用统计方法对type-1系统的每个属性数据集计算数据集的标准差。这些值用作2型系统参数不确定度的足迹。这些数据集和与各块直方图相关的数据集与二类模糊推理系统作为单独的软件进行。经过测试,我们的系统2型模糊推理系统比1型模糊推理系统产生了更成功的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Type-2 fuzzy inference system design for computer aided detection in mammogram image
Nowadays the detection of cancer of the breast mass X-ray mammography is widely used by radiologists. This computer-aided system images used by physicians in the interpretation raises the accomplishments of physicians identified masses. Work on computer-aided detection systems consisting of basic image processing and classification section is still in progress. Different methods such as artificial neural networks and support vector machine structure is widely used in mass classification. Previous work in our open access has MIAS containing mass from the database and free mammogram images on image processing techniques and three texture attribute in the second degree by using statistical analysis and derived value statistics of these attributes, attributes, and type-1 fuzzy using Matlab fuzzy toolbox with statistical values inference system is designed. In this study, the standard deviation of the data set using a statistical method on each attribute data set used for type-1 system is calculated. These values are used as the footprint of the uncertainty of the type-2 system parameters. These data sets and data sets related to each piece of histogram chart with type-2 fuzzy inference system was conducted as separate software. We have tested our system type-2 fuzzy inference system has produced more successful than type-1 fuzzy inference system.
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