基于PCA残差结构核密度建模的形状先验

J. P. Lewis, Iman Mostafavi, G. Sosinsky, M. Martone, Ruth West
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引用次数: 0

摘要

现代图像处理技术越来越多地使用对象预期分布的先验模型。主成分特征模型通常用于形状先验建模,但在捕获二阶矩统计量方面受到限制。另一方面,核密度在概念上可以再现任意统计数据,但对于高维数据(如形状)则存在问题。一种明显的方法是将这些方法结合起来,使用主成分分析来降低问题的维数,然后对主成分分析系数进行核密度建模。在本文中,我们证明了有用的算法和编辑操作可以根据这种简单的方法来制定。在点分布形状模型的背景下说明了这些操作。特定点可以快速评估为可信或异常值,并且在人工引导的过程中,给定有限的操作员输入,可以完成可信的形状。这种“PCA+KD”方法在概念上简单,可扩展(随着额外的训练数据变得越来越准确),提供了改进的建模能力,并支持有用的算法查询。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shape Priors by Kernel Density Modeling of PCA Residual Structure
Modern image processing techniques increasingly use prior models of the expected distribution of objects. Principal component eigen-models are often selected for shape prior modeling, but are limited in capturing only the second order moment statistics. On the other hand, kernel densities can in concept reproduce arbitrary statistics, but are problematic for high dimensional data such as shapes. An evident approach is to combine these methods, using PCA to reduce the problem dimensionality, followed by kernel density modeling of the PCA coefficients. In this paper we show that useful algorithmic and editing operations can be formulated in term of this simple approach. The operations are illustrated in the context of point distribution shape models. Particular points can be rapidly evaluated as being plausible or outliers, and a plausible shape can be completed given limited operator input in a manually guided procedure. This "PCA+KD" approach is conceptually simple, scalable (becoming increasingly accurate with additional training data), provides improved modeling power, and supports useful algorithmic queries.
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