形状聚类中的混合密度函数估计

Kazunori Iwata
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引用次数: 0

摘要

测量工具的最新发展使获取形状数据变得更容易,形状数据是向量空间中点坐标的集合,当其中一些坐标集合在一起时是有意义的。因此,形状数据的聚类变得越来越重要。然而,由于一些研究依赖于它们特定的形状表示,很少有研究能够在各种情况下进行适用的聚类。因此,我们采用一种简单且被广泛认可的表示和生成模型来塑造。用点坐标的位形矩阵表示,这是传统形状分析中最简单、最被接受的表示形式。作为生成模型,我们考虑混合密度函数,这是统计学中表达人口密度函数的一个众所周知的模型,它是亚人口密度函数的线性组合。本文的目的是提出一个基于混合密度的模型,该模型将有助于形状数据的聚类。形状的聚类涉及到模型参数的估计,该估计使用基于模型的EM算法推导。作为有前途的形状数据应用的例子,对猿猴头骨、美式橄榄球队形和棒球球场进行了计算分析。此外,我们通过将EM算法与其他典型聚类方法进行比较来评估其性能。理论结果不仅有助于形状数据的统计估计,而且扩展了非矢量形状数据的聚类。实验结果表明,该算法具有良好的形状聚类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixture Density Function Estimation in Shape Clustering
Recent developments in measurement tools have made it easier to obtain shape data, a collection of point coordinates in vector space that are meaningful when some of them are gathered together. As a result, clustering of shape data becomes increasingly important. However, few studies still perform applicable clustering in various cases because some studies rely on their specific shape representations. Thus, we apply a simple and widely recognized representation and generative model to shape. A configuration matrix of the point coordinates is used for the representation, and it is the simplest and most well-accepted representation in conventional shape analysis. As a generative model, we consider the mixture density function, a well-known model in statistics for expressing a population density function, which is a linear combination of subpopulation density functions. The aim of this article is to present a mixture density-based model that will be useful for clustering shape data. The clustering of shapes involves estimating the parameters of the model, and this estimation is derived using an EM algorithm based on the model. As examples of promising shape-data applications, the computational analyses of ape skulls, American football formations, and baseball pitches were performed. In addition, we evaluated the performance of the EM algorithm by comparing it with other typical clustering methods. The theoretical results not only contribute to statistical estimation for shape data but also extend the clustering of nonvector shape data. The experimental results show that the derived EM algorithm performs well in shape clustering.
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CiteScore
7.70
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