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A novel 3D model recognition approach using Pitman-Yor process mixtures of Beta-Liouville Distributions

机译:一种新的3D模型识别方法,使用β-荔枝块分布的Pitman-Yor工艺混合物

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In this paper, we formulate 3D model recognition as a statistical inference problem using a Pitman-Yor process mixture of Beta-Liouville Distributions. The proposed model is learned via a collapsed variational inference approach. Unlike classic variational Bayes, the collapsed approach does not make the non-realistic assumption that the model's parameters are independent from the assignment variables, which leads to better modelling and generalization capabilities. The merits and advantages of the proposed approach are shown via extensive experiments.
机译:在本文中,我们使用Beta-Liouville分布的Pitman-Yor工艺混合物制定3D模型识别作为统计推理问题。通过折叠的变分推理方法学习所提出的模型。与经典变分贝叶亚不同,折叠方法不会使模型的参数独立于分配变量的非现实假设,这导致更好的建模和泛化能力。所提出的方法的优点和优点通过广泛的实验显示。

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