Symmetric region growing

Shu-Yen Wan, W. Higgins
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引用次数: 214

Abstract

The goal of image segmentation is to partition a digital image into disjoint regions of interest. Of the many proposed image segmentation methods, region growing has been one of the most popular. Research on region growing, however, has focused primarily on the design of feature measures and on growing and merging criteria. Most of these methods have an inherent dependence on the order in which the points and regions are examined. This weakness implies that a desired segmented result is sensitive to the selection of the initial growing points. We define a set of theoretical criteria for a subclass of region-growing algorithms that are insensitive to the selection of the initial growing points. This class of algorithms, referred to as symmetric region growing (SymRG), leads to a single-pass region-growing approach applicable to any dimensionality of images. Furthermore, they lead to region-growing algorithms that are both memory- and computation-efficient. Finally, by-products of this general paradigm are algorithms for fast connected-component labeling and cavity deletion. The paper gives theoretical results and 3-D image examples.
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对称区域生长
图像分割的目标是将数字图像分割成不相交的感兴趣区域。在许多提出的图像分割方法中,区域增长是最受欢迎的方法之一。然而,关于区域生长的研究主要集中在特征度量的设计以及生长和合并准则上。这些方法中的大多数都固有地依赖于检查点和区域的顺序。这一弱点意味着期望的分割结果对初始生长点的选择很敏感。我们定义了一组对初始生长点的选择不敏感的区域生长算法子类的理论准则。这类算法被称为对称区域增长(SymRG),它导致了适用于任何维度图像的单次区域增长方法。此外,它们还导致了内存和计算效率都很高的区域增长算法。最后,这种一般范例的副产品是快速连接组件标记和空腔删除的算法。本文给出了理论结果和三维图像实例。
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