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Stochastic labelling of biological images

机译:生物图像的随机标记

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摘要

Many hypotheses made by experimental researchers can be formulated as a stochastic labelling of a given image. Some stochastic labelling methods for random closed sets are proposed in this paper. Molchanov (I. Molchanov, 1984, Theor. Probability and Math. Statist.29, 113–119) provided the probabilistic background for this problem. However, there is a lack of specific labelling models. Ayala and Simó (G. Ayala and A. Simó, 1995, Advances in Applied Probability27, 293–305) proposed a method in which, given the whole set of connected components, every component is classified in a certain phase or category in a completely random way. Alternative methods are necessary in case the random labelling hypothesis is not reliable. A different kind of labelling method is proposed that considers the environment: the type of every connected component is a function of its location.Two different biphase images are studied: a cross section of a nerve from a rat, and a cross section of an optic nerve from a lizard.
机译:实验研究人员提出的许多假设可以表述为给定图像的随机标记。提出了随机封闭集的一些随机标记方法。莫尔恰诺夫(I. Molchanov,1984,Theor。Probability and Math。Statist.29,113–119)提供了该问题的概率背景。但是,缺少特定的标签模型。 Ayala和Simó(G. Ayala和A.Simó,1995,应用概率进展27,293-305)提出了一种方法,在给定整个连接组件集合的情况下,每个组件都可以完全划分为某个阶段或类别。随机方式。万一随机标记假设不可靠,则需要其他方法。提出了一种考虑环境的不同标记方法:每个连接组件的类型取决于其位置。研究了两个不同的双相图像:大鼠神经的横截面和视神经的横截面蜥蜴的神经。

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