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Quantifying The Generative Capabilities Of Variational Autoencoders For 3D Car Point Clouds

机译:量化三维汽车点云变分自动化器的生成功能

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摘要

During each cycle of automotive development, large amounts of geometric data are generated as results of design studies and simulation tasks. Discovering hidden knowledge from this data and making it available to the development team strengthens the design process by utilizing historic information when creating novel products. To this end, we propose to use powerful geometric deep learning models that learn lowdimensional representation of the design data in an unsupervised fashion. Trained models allow to efficiently explore the design space, as well as to generate novel designs. One popular class of generative models are variational autoencoders, which have however been rarely applied to geometric data. Hence, we use a variational autoencoder for 3D point clouds (PC-VAE) and explore the model’s generative capabilities with a focus on the generation of realistic yet novel 3D shapes. We apply the PC-VAE to point clouds sampled from car shapes from a benchmark data set and employ quantitative measures to show that our PC-VAE generates realistic car shapes, wile returning a richer variety of unseen shapes compared to a baseline autoencoder. Finally, we demonstrate how the PC-VAE can be guided towards generating shapes with desired target properties by optimizing the parameters that maximize the output of a trained classifier for said target properties. We conclude that generative models are a powerful tool that may aid designers in automotive product development.
机译:在汽车发展的每个循环期间,将大量的几何数据作为设计研究和仿真任务的结果产生。从这些数据中发现隐藏知识并使其可用于开发团队通过在创建新产品时利用历史信息来增强设计过程。为此,我们建议使用强大的几何深度学习模型,以无监督的方式学习设计数据的低级表示。训练有素的模型允许有效地探索设计空间,并产生新颖的设计。一种流行的一类生成模型是变形式自动统计器,但是已经很少被应用于几何数据。因此,我们使用一个变变AualEncoder用于3D点云(PC-VAE),并探索模型的生成功能,重点是生成现实但新颖的3D形状。我们将PC-VAE应用于从基准数据集中从汽车形状采样的点云,采用定量措施,以表明我们的PC-VAE产生现实的汽车形状,与基线自动化器相比,瓦上返回更丰富的看不见的形状。最后,我们通过优化用于所述目标属性的训练分类器的输出的参数来证明如何引导PC-VAE如何以具有所需的目标特性的形状。我们得出结论,生成模型是一种强大的工具,可以帮助设计师在汽车产品开发中。

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