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SAPCGAN: Self-Attention based Generative Adversarial Network for Point Clouds

机译:SAPCGAN:积分云的自我关注生成对抗网络

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The direct extension of 2D image learning to three-dimensional space is 3D point cloud learning. Recently, point cloud learning has shown significant results in 3D shape estimation and semantic segmentation. Despite these advancements, fundamental problems in point cloud learning still pose significant challenges. These problems include representation learning, shape generation, shape segmentation, and shape matching. In this paper, we propose a cognitive self-attention based learning approach to aggregate global representation of 3D shapes from point cloud data. We also integrate 3D point data with a binary tree structure to build a point cloud generator. We further design a novel Generative Adversarial Network (GAN) architecture to generate point clouds resembling the ground truth that could be used for unsupervised learning of 3D shapes. Relying on a self-attention mechanism, our framework, called SAPCGAN, aggregates the global graph features to correct the structural information of 3D shapes in the latent space. Finally, we compare the performance of two gradient penalty methods used in stabilizing the training of our GAN system. We show that our framework has high training efficiency and can provide state-of-the-art results in 3D point cloud generation. The performance of our is demonstrated with both quantitative and qualitative experimental evaluations. Furthermore, the generated 3D point clouds can be segmented into their natural semantic parts, such as, for example the four legs of a chair, the wings of an air plane, or the four wheels of a car.
机译:2D图像学习到三维空间的直接扩展是3D点云学习。最近,点云学习在3D形状估计和语义分割中显示出显着的结果。尽管有这些进步,但点云学习中的根本问题仍然存在重大挑战。这些问题包括表示学习,形状生成,形状分割和形状匹配。在本文中,我们提出了一种基于认知的自我关注,从点云数据汇总3D形状的全局表示。我们还将3D点数据与二进制树结构集成到构建点云生成器。我们进一步设计了一种新颖的生成对抗网络(GAN)架构,以产生类似于地面真理的点云,可用于3D形状的无监督学习。依靠自我关注机制,我们的框架称为SAPCGAN,汇总了全局图的功能,以纠正潜在空间中的3D形状的结构信息。最后,我们比较了两个梯度惩罚方法的性能,用于稳定我们的GaN系统培训。我们表明,我们的框架具有高培训效率,并且可以在3D点云生成中提供最先进的结果。我们的性能与定量和定性的实验评估展示。此外,所产生的3D点云可以分段为它们的天然语义部件,例如,例如椅子的四个腿,空气平面的翅膀,或汽车的四个轮子。

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