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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Morphological granulometric estimation of random patterns in the context of parameterized random sets
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Morphological granulometric estimation of random patterns in the context of parameterized random sets

机译:参数化随机集背景下的随机模式的形态粒度估计

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摘要

Morphological features are used to estimate the state of a random pattern (set) governed by a multivariate probability distribution. The feature vector is composed of granulometric moments and pattern estimation involves feature-based estimation of the parameter vector governing the random set. Under such circumstances, the joint density of the features and parameters is a generalized function concentrated on a solution manifold and estimation is determined by the conditional density of the parameters given an observed feature vector. The paper explains the manner in which the joint probability mass of the parameters and features is distributed and the way the conditional densities give rise to optimal estimators according to the distribution of probability mass, whether constrained or not to the solution manifold. The estimation theory is applied using analytic representation of linear granulometric moments. The effects of random perturbations in the shape-parameter vector is discussed, and the theory is applied to random sets composed of disjoint random shapes. The generalized density framework provides a proper mathematical context for pattern estimation and gives insight via the distribution of mass on solution manifolds, to the manner in which morphological probes discriminate random sets relative to their distributions, and the manner in which the use of additional probes can be beneficial for better estimation (C) 2001 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 27]
机译:形态特征用于估计由多元概率分布控制的随机模式(集合)的状态。特征向量由粒度矩组成,模式估计涉及控制随机集的参数向量的基于特征的估计。在这种情况下,特征和参数的联合密度是集中在求解流形上的广义函数,估计是通过给定观察特征向量的参数的条件密度来确定的。论文解释了参数和特征的联合概率质量的分布方式,以及根据概率质量的分布(无论是否约束于解流形)来确定条件密度的方法。估计理论是通过线性粒度矩的解析表示来应用的。讨论了形状参数向量中随机扰动的影响,并将该理论应用于由不相交的随机形状组成的随机集。广义密度框架为模式估计提供了适当的数学环境,并通过溶液歧管上质量的分布,形态探针相对于其分布区分随机集的方式以及使用附加探针的方式提供了见解。有助于更好的估计(C)2001模式识别协会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:27]

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