一种基于模糊规则的医学图像增强方法

Young-Sik Choi, R. Krishnapuram
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引用次数: 15

摘要

利用模糊集理论,我们开发了一个基于模糊规则的系统来执行一些最常见的图像增强任务:去除脉冲噪声;平滑非脉冲噪声;增强边缘。为每个任务导出了三个不同的过滤器和基于本地信息的选择标准。选择准则构成模糊规则的前置子句,相应的过滤器构成模糊规则的后置子句。基于模糊规则的系统的总体结果被计算为单个过滤器结果的组合,其中每个结果都有助于相应先行句的满足程度。这种方法为我们提供了一个强大而灵活的图像增强范例。我们介绍了几种类型的图像,如视网膜和染色体图像的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fuzzy-rule-based image enhancement method for medical applications
Using fuzzy set theory, we develop a fuzzy rule-based system to perform some of the most common tasks of image enhancement: removing impulsive noise; smoothing nonimpulsive noise; and enhancing edges. Three different filters for each task and the selection criteria based on local information are derived. The selection criteria constitute the antecedent clauses of the fuzzy rules, and the corresponding filters constitute the consequent clauses of the fuzzy rules. The overall result of the fuzzy rule-based system is computed as the combination of the results of the individual filters, where each result contributes to the degree that the corresponding antecedent clause is satisfied. This approach gives us a powerful and flexible image enhancement paradigm. We present results on several types of images such as retinal and chromosome images.<>
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