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Clustering High-Dimensional Landmark-based Two-dimensional Shape Data‡

机译:聚类基于高维地标的二维形状数据‡

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摘要

An important goal in image analysis is to cluster and recognize objects of interest according to the shapes of their boundaries. Clustering such objects faces at least four major challenges including a curved shape space, a high-dimensional feature space, a complex spatial correlation structure, and shape variation associated with some covariates (e.g., age or gender). The aim of this paper is to develop a penalized model-based clustering framework to cluster landmark-based planar shape data, while explicitly addressing these challenges. Specifically, a mixture of offset-normal shape factor analyzers (MOSFA) is proposed with mixing proportions defined through a regression model (e.g., logistic) and an offset-normal shape distribution in each component for data in the curved shape space. A latent factor analysis model is introduced to explicitly model the complex spatial correlation. A penalized likelihood approach with both adaptive pairwise fusion Lasso penalty function and L2 penalty function is used to automatically realize variable selection via thresholding and deliver a sparse solution. Our real data analysis has confirmed the excellent finite-sample performance of MOSFA in revealing meaningful clusters in the corpus callosum shape data obtained from the Attention Deficit Hyperactivity Disorder-200 (ADHD-200) study.
机译:图像分析的一个重要目标是根据对象边界的形状对它们进行聚类和识别。将这些对象聚类面临至少四个主要挑战,包括弯曲形状空间,高维特征空间,复杂的空间相关结构以及与某些协变量(例如年龄或性别)相关的形状变化。本文的目的是开发一种基于惩罚模型的聚类框架,以聚类基于地标的平面形状数据,同时明确解决这些挑战。具体地,提出了偏移法线形状因子分析器(MOSFA)的混合,其具有通过回归模型(例如,逻辑模型)和每个分量中的偏移法线形状分布在曲线形状空间中的数据定义的混合比例。引入了潜在因素分析模型来对复杂的空间相关性进行显式建模。具有自适应成对融合套索惩罚函数和L2惩罚函数的惩罚似然方法用于通过阈值自动实现变量选择并提供稀疏解。我们的实际数据分析已证实MOSFA的出色有限样本性能,可揭示出从注意力缺陷多动障碍200(ADHD-200)研究获得的call体形状数据中的有意义簇。

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