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Clustering-Based Latent Variable Models for Monocular Non-rigid 3D Shape Recovery

机译:单眼非刚性3D形状恢复的基于聚类的潜在变量模型

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The difficulty of monocular non-rigid 3D reconstruction using statistical learning approaches is to get a model that can represent as many deformations as possible. Given a known dataset to learn a model, existing latent variable models (LVMs) fail to focus on how to attain labeled samples. In this paper, we propose novel clustering-based LVMs in which we automatically select representative samples to be the labeled ones. To this end, G-means algorithm is adopted to cluster latent variables and obtain the labeled samples. These labeled samples are corresponding to the latent variables closest to clustering centers. We learn the Gaussian Process Latent Variable Model (GPLVM) and the Constrained Latent Variable Model (CLVM) into which we introduce clustering in the context of monocular non-rigid 3D reconstruction, and compare them to those without clustering. The experimental results show that our clustering-based LVMs could perform better.
机译:使用统计学习方法进行单眼非刚性3D重建的困难在于获得一个可以表示尽可能多的变形的模型。给定一个已知的可学习模型的数据集,现有的潜在变量模型(LVM)无法专注于如何获得标记的样本。在本文中,我们提出了新颖的基于聚类的LVM,其中我们自动选择代表性样本作为标记样本。为此,采用G均值算法对潜在变量进行聚类并获得标记样本。这些标记的样本对应于最接近聚类中心的潜在变量。我们学习了高斯过程潜在变量模型(GPLVM)和约束潜在变量模型(CLVM),我们在单眼非刚性3D重建的背景下向其中引入了聚类,并将它们与没有聚类的情况进行了比较。实验结果表明,基于聚类的LVM的性能更好。

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