Extended fuzzy rules for image segmentation

L. Dooley, G. Karmakar
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引用次数: 3

Abstract

The generic fuzzy rule-based image segmentation (GFRIS) technique does not produce good results for non-homogeneous regions that possess abrupt changes in pixel intensity, because it fails to consider two important properties of perceptual grouping, namely surroundedness and connectedness. A new technique called extended fuzzy rules for image segmentation (EFRIS) is proposed, which includes a second rule to that defined already in GFRIS, that incorporates both the surroundedness and connectedness properties of a region's pixels. This additional rule is based on a split-and-merge algorithm and refines the output from the GFRIS technique. Two different classes of image, namely light intensity and medical X-rays are empirically used to assess the performance of the new technique. Quantitative evaluation of the performance of EFRIS is discussed and contrasted with GFRIS using one of the standard segmentation evaluation methods. Overall, EFRIS exhibits significantly improved results compared with the GFRIS approach.
图像分割的扩展模糊规则
基于通用模糊规则的图像分割(GFRIS)技术对于像素强度突变的非均匀区域效果不佳,因为它没有考虑感知分组的两个重要特性,即包围性和连通性。提出了一种新的图像分割技术,称为扩展模糊规则(EFRIS),它包含了GFRIS中已经定义的第二条规则,该规则结合了区域像素的包围性和连通性属性。这一附加规则基于分割合并算法,并对GFRIS技术的输出进行了细化。两种不同类型的图像,即光强度和医用x射线被经验地用于评估新技术的性能。讨论了EFRIS性能的定量评价,并使用一种标准分割评价方法与GFRIS进行了对比。总体而言,与GFRIS方法相比,EFRIS显示出显着改善的结果。
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