基于测地线的统计形状分析

Michel Abboud, A. Benzinou, K. Nasreddine, M. Jazar
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引用次数: 3

摘要

在本文中,我们描述了一种基于鲁棒弹性度量的统计形状分析。所提出的度量是基于形状空间中的测地线。利用这个距离,我们制定了一个变分设置来估计被视为代表一组给定形状的完美模式的内在平均形状。通过应用基于测地线的形状翘曲,我们生成了一个能够捕获非线性形状变化的主成分分析(PCA)。实际上,所提出的方法更好地反映了数据的主要变异性模式。因此,通过重建过程可以很好地表征个体形状变化的主导模式。我们用一个基于手势数据库的应用程序演示了这种方法的效率。
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Geodesics-based statistical shape analysis
In this paper, we describe a statistical shape analysis founded on a robust elastic metric. The proposed metric is based on geodesics in the shape space. Using this distance, we formulate a variational setting to estimate intrinsic mean shape viewed as the perfect pattern to represent a set of given shapes. By applying a geodesic-based shape warping, we generate a principal component analysis (PCA) able to capture nonlinear shape variability. Indeed, the proposed approach better reflects the main modes of variability of the data. Therefore, characterizing dominant modes of individual shape variations is conducted well through the reconstruction process. We demonstrate the efficiency of our approach with an application on a GESTURES database.
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