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Learning Representations and Generative Models for 3D Point Clouds

机译:学习3D点云的表示形式和生成模型

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Three-dimensional geometric data offer an excellent domain for studying representation learning and generative modeling. In this paper, we look at geometric data represented as point clouds. We introduce a deep AutoEncoder (AE) network with state-of-the-art reconstruction quality and generalization ability. The learned representations outperform existing methods on 3D recognition tasks and enable shape editing via simple algebraic manipulations, such as semantic part editing, shape analogies and shape interpolation, as well as shape completion. We perform a thorough study of different generative models including GANs operating on the raw point clouds, significantly improved GANs trained in the fixed latent space of our AEs, and Gaussian Mixture Models (GMMs). To quantitatively evaluate generative models we introduce measures of sample fidelity and diversity based on matchings between sets of point clouds. Interestingly, our evaluation of generalization, fidelity and diversity reveals that GMMs trained in the latent space of our AEs yield the best results overall.
机译:三维几何数据为研究表示学习和生成建模提供了一个极好的领域。在本文中,我们看一下表示为点云的几何数据。我们介绍了具有最先进的重构质量和泛化能力的深度自动编码器(AE)网络。学习的表示优于3D识别任务上的现有方法,并可以通过简单的代数操作(例如语义部分编辑,形状类比和形状插值以及形状完成)进行形状编辑。我们对不同的生成模型进行了全面的研究,包括在原始点云上运行的GAN,在我们的AE的固定潜在空间中训练有素的GAN以及高斯混合模型(GMM)。为了定量评估生成模型,我们基于点云集之间的匹配引入样本保真度和多样性的度量。有趣的是,我们对泛化,保真度和多样性的评估表明,在我们的AE的潜在空间中训练的GMM总体上可产生最佳结果。

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