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Affinity functions in fuzzy connectedness based image segmentation II: Defining and recognizing truly novel affinities

机译:基于模糊连接度的图像分割中的亲和力功能II:定义和识别真正新颖的亲和力

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Affinity functions - the measure of how strongly pairs of adjacent spels in the image hang together -represent the core aspect (main variability parameter) of the fuzzy connectedness (FC) algorithms, an important class of image segmentation schemas. In this paper, we present the first ever theoretical analysis of the two standard affinities, homogeneity and object-feature, the way they can be combined, and which combined versions are truly distinct from each other. The analysis is based on the notion of equivalent affinities, the theory of which comes from a companion Part I of this paper (Ciesielski and Udupa, in this issue) [11]. We demonstrate that the homogeneity based and object feature based affinities are equivalent, respectively, to the difference quotient of the intensity function and Rosenfeld's degree of connectivity. We also show that many parameters used in the definitions of these two affinities are redundant in the sense that changing their values lead to equivalent affinities. We finish with an analysis of possible ways of combining different component affinities that result in non-equivalent affinities. In particular, we investigate which of these methods, when applied to homogeneity based and object-feature based components lead to truly novel (non-equivalent) affinities, and how this is affected by different choices of parameters. Since the main goal of the paper is to identify, by formal mathematical arguments, the affinity functions that are equivalent, extensive experimental confirmations are not needed - they show completely identical FC segmentations - and as such, only relevant examples of the theoretical results are provided. Instead, we focus mainly on theoretical results within a perspective of the fuzzy connectedness segmentation literature.
机译:相似性函数-衡量图像中相邻Spels对紧密结合的程度的指标-代表模糊连接(FC)算法的核心方面(主要可变性参数),这是图像分割方案的重要一类。在本文中,我们对这两个标准亲和力,同质性和对象特征进行了首次理论分析,它们的组合方式以及哪些组合版本确实彼此不同。该分析基于等效亲和力的概念,等效亲和力的理论来自本文的第一部分(Ciesielski和Udupa,本期)[11]。我们证明,基于均匀性和基于对象特征的亲和力分别等于强度函数和Rosenfeld连通度的差商。我们还表明,在这两个亲和力的定义中使用的许多参数在改变它们的值会导致等效亲和力的意义上是多余的。我们最后分析了组合不同成分亲和力导致非等效亲和力的可能方式。特别是,我们研究了这些方法中的哪一种在应用于基于均一性和基于对象特征的组件时会导致真正的新颖(非等效)亲和力,以及这如何受到不同参数选择的影响。由于本文的主要目的是通过形式化数学参数来识别等效的亲和力函数,因此不需要大量的实验确认-它们显示出完全相同的FC分段-因此,仅提供了理论结果的相关示例。取而代之的是,我们主要关注模糊连接度分割文献中的理论结果。

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