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A framework for comparing different image segmentation methods and its use in studying equivalences between level set and fuzzy connectedness frameworks

机译:比较不同图像分割方法的框架及其在研究水平集和模糊连接框架之间的等效性中的用途

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In the current vast image segmentation literature, there seems to be considerable redundancy among algorithms, while there is a serious lack of methods that would allow their theoretical comparison to establish their similarity, equivalence, or distinctness. In this paper, we make an attempt to fill this gap. To accomplish this goal, we argue that: (1) every digital segmentation algorithm A should have a well defined continuous counterpart M_A. referred to as its model, which constitutes an asymptotic of A when image resolution goes to infinity; (2) the equality of two such models M_A and M_A, establishes a theoretical (asymptotic) equivalence of their digital counterparts A and A'. Such a comparison is of full theoretical value only when, for each involved algorithm A, its model M_A is proved to be an asymptotic of A. So far, such proofs do not appear anywhere in the literature, even in the case of algorithms introduced as digitizations of continuous models, like level set segmentation algorithms. The main goal of this article is to explore a line of investigation for formally pairing the digital segmentation algorithms with their asymptotic models, justifying such relations with mathematical proofs, and using the results to compare the segmentation algorithms in this general theoretical framework. As a first step towards this general goal, we prove here that the gradient based thresholding model M_▽ is the asymptotic for the fuzzy connectedness Udupa and Samarasekera segmentation algorithm used with gradient based affinity A_▽. We also argue that, in a sense, M_▽ is the asymptotic for the original front propagation level set algorithm of Malladi, Sethian, and Vemuri, thus establishing a theoretical equivalence between these two specific algorithms. Experimental evidence of this last equivalence is also provided.
机译:在当前的大量图像分割文献中,算法之间似乎存在相当大的冗余,而严重缺乏方法来允许它们的理论比较来确定它们的相似性,等效性或独特性。在本文中,我们尝试填补这一空白。为了实现这个目标,我们认为:(1)每个数字分割算法A应该有一个定义明确的连续副本M_A。称为其模型,当图像分辨率达到无穷大时,它构成A的渐近性; (2)两个这样的模型M_A和M_A的相等性,建立了它们的数字对应物A和A'的理论(渐近)等价形式。仅当对于每个涉及的算法A,其模型M_A被证明是A的渐近性时,这样的比较才具有完整的理论价值。到目前为止,即使在算法引入的情况下,此类证明在文献中也没有出现。连续模型的数字化,例如水平集分割算法。本文的主要目的是探索一条研究路线,以将数字分割算法与其渐近模型正式配对,并用数学证明证明这种关系,并使用结果在此一般理论框架中比较分割算法。作为朝着这个总体目标迈出的第一步,我们在这里证明基于梯度的阈值模型M_▽是与基于梯度的亲和力A_▽一起使用的模糊连通性Udupa和Samarasekera分割算法的渐近性。我们还认为,从某种意义上说,M_▽是Malladi,Sethian和Vemuri的原始前端传播水平集算法的渐近线,从而在这两种特定算法之间建立了理论等价关系。最后的等效性的实验证据也被提供。

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