A maximum likelihood framework for iterative eigendecomposition

A. Robles-Kelly, E. Hancock
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引用次数: 10

Abstract

This paper presents an iterative maximum likelihood framework for perceptual grouping. We pose the problem of perceptual grouping as one of pairwise relational clustering. The method is quite generic and can be applied to a number of problems including region segmentation and line-linking. The task is to assign image tokens to clusters in which there is strong relational affinity between token pairs. The parameters of our model are the cluster memberships and the link weights between pairs of tokens. Commencing from a simple probability distribution for these parameters, we show how they may be estimated using an EM-like algorithm. The cluster memberships are estimated using an eigendecomposition method. Once the cluster memberships are to hand, then the updated link-weights are the expected values of their pairwise products. The new method is demonstrated on region segmentation and line-segment grouping problems where it is shown to outperform a noniterative eigenclustering method.
迭代特征分解的极大似然框架
提出了一种用于感知分组的迭代极大似然框架。我们将感知分组问题视为两两关系聚类问题之一。该方法具有较强的通用性,可用于区域分割和直线连接等问题。任务是将图像令牌分配给令牌对之间存在强关系亲和的集群。我们模型的参数是集群成员关系和令牌对之间的链接权重。从这些参数的简单概率分布开始,我们展示了如何使用类似em的算法来估计它们。利用特征分解方法估计聚类隶属度。一旦集群成员关系到手,那么更新的链接权重就是它们成对乘积的期望值。在区域分割和线段分组问题上证明了该方法优于非迭代特征聚类方法。
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