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Generating Mesh-based Shapes From Learned Latent Spaces of Point Clouds with VAE-GAN

机译:使用VAE-GaN生成来自Deather云的潜在空间的基于网状形状

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We study the problem of mesh-based object generation. We propose a framework that generates mesh-based objects from point clouds in an end-to-end manner by using a combination of variational autoencoder and generative adversarial network. Instead of converting point cloud to other representations like voxels before input into the network, our network directly consumes the point cloud and generates the corresponding 3D object. Given point clouds of objects, our network encodes local and global geometry structures of point clouds into latent representations. These latent vectors are then leveraged to generate the implicit surface representations of objects corresponding to those point clouds. Here, the implicit surface representation is Signed Distance Function (SDF) which preserves the inside-outside information of objects. Then we can easily reconstruct polygon mesh surfaces of objects. This could be very helpful in a situation where there is a need of 3D shapes and only point clouds of objects are available. Experiments demonstrate that our network which makes use of both local and global geometry structure can generate high-quality mesh-based objects from corresponding point clouds. We also show that using PointNet-like structure as an encoder can help to achieve better results.
机译:我们研究基于网格的对象生成的问题。我们建议,通过使用变分自动编码器和生成对抗性网络的组合产生在端至端的方式从点云目基于对象的框架。代替点云转化为其它表示像素输入之前到网络的,我们的网络直接消耗点云,并且生成对应的3D对象。鉴于对象的点云,我们的网络编码点云成潜表示的局部和全局的几何结构。然后,这些潜向量杠杆以产生对应于那些点云对象的隐式曲面表示。这里,隐式表面表示被符号距离函数(SDF),其保留对象的内部 - 外部信息。然后,我们可以很容易地重建物体的多边形网格表面。这可能在一个情况下有必要3D的形状,只有物体的点云都可以有很大的帮助。实验表明,我们的网络,这使得使用局部和全局的几何结构可以产生由相应的点云高品质的基于网格的对象。我们还表明,使用PointNet状结构作为一个编码器可以帮助取得更好的成绩。

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