Adaptive filter to detect rounded convex regions: iris filter

H. Kobatake, Masayuki Murakami
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引用次数: 44

Abstract

This paper proposes a unique filter, called "iris filter", which evaluates the degree of convergence of gradient vectors in the neighborhood of the pixel of interest. The generalized iris filter and its simplified one are given. The degree of convergence is related to the distribution of orientations of gradient vectors. The region of support of the iris filter is controlled so that the degree of convergence of gradient vectors in it becomes maximum. It means that the size and the shape of the region of support changes adaptively according to the distribution pattern of gradient vectors around the pixel of interest. Theoretical analysis using models of a rounded convex region and a semi-cylindrical region is given. It shows that rounded convex regions are mostly enhanced even if their original contrasts to their background are weak and elongated objects are suppressed. However, the filter output is 1//spl pi/ at the boundaries of rounded convex regions and semi-cylindrical ones in spite of their contrast. This absolute value can be used to detect boundaries of those objects. The proposed filter is effective to enhance and detect rounded convex regions with various sizes and contrasts.
用于检测圆形凸区域的自适应滤波器:虹膜滤波器
本文提出了一种独特的滤波器,称为“虹膜滤波器”,它评估梯度向量在感兴趣像素附近的收敛程度。给出了广义虹膜滤波器及其简化虹膜滤波器。收敛的程度与梯度向量的方向分布有关。对虹膜滤波器的支持区域进行控制,使梯度向量在其中的收敛程度达到最大。它是指支持区域的大小和形状根据感兴趣像素周围梯度向量的分布模式自适应变化。用圆角凸区和半圆柱形区模型进行了理论分析。结果表明,即使圆形凸区域与背景的原始对比度较弱,细长的物体被抑制,它们也大多得到增强。然而,在圆形凸区域和半圆柱形区域的边界处,滤波器输出为1//spl pi/,尽管它们的对比度很高。这个绝对值可以用来检测这些物体的边界。该滤波器可以有效地增强和检测各种大小和对比度的圆形凸区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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