Recently, deep learning methods have shown great success in 3D point cloud upsampling. Among these methods, many feature expansion units were proposed to complete point expansion at the end. In this paper, we compare various feature expansion units by both theoretical analysis and quantitative experiments. We show that most of the existing feature expansion units process each point feature independently, while ignoring the feature interaction among different points. Further, inspired by upsampling module of image super-resolution and recent success of dynamic graph CNN on point clouds, we propose a novel feature expansion units named ProEdgeShuffle. Experiments show that our proposed method can achieve considerable improvement over previous feature expansion units.
翻译:最近,深层次的学习方法在3D点云层取样中表现出了巨大的成功。 在这些方法中,许多特效扩张单位建议最终完成点扩张。在本文中,我们通过理论分析和数量实验对各种特效扩张单位进行比较。我们表明,大多数现有特效扩张单位处理每个点,而忽略了不同点之间的特效互动。此外,由于图像超分辨率增殖模块以及CNN在点云上动态图集最近的成功,我们提议建立一个名为ProEdgeShuffle的新特效扩张单位。实验表明,我们提出的方法可以大大改进以前的特效扩张单位。