Litcius/Paper detail

Meta-PU: An Arbitrary-Scale Upsampling Network for Point Cloud

Shuquan Ye, Dongdong Chen, Songfang Han, Ziyu Wan, Jing Liao

2021IEEE Transactions on Visualization and Computer Graphics101 citationsDOI

Abstract

Point cloud upsampling is vital for the quality of the mesh in three-dimensional reconstruction. Recent research on point cloud upsampling has achieved great success due to the development of deep learning. However, the existing methods regard point cloud upsampling of different scale factors as independent tasks. Thus, the methods need to train a specific model for each scale factor, which is both inefficient and impractical for storage and computation in real applications. To address this limitation, in this article, we propose a novel method called "Meta-PU" to first support point cloud upsampling of arbitrary scale factors with a single model. In the Meta-PU method, besides the backbone network consisting of residual graph convolution (RGC) blocks, a meta-subnetwork is learned to adjust the weights of the RGC blocks dynamically, and a farthest sampling block is adopted to sample different numbers of points. Together, these two blocks enable our Meta-PU to continuously upsample the point cloud with arbitrary scale factors by using only a single model. In addition, the experiments reveal that training on multiple scales simultaneously is beneficial to each other. Thus, Meta-PU even outperforms the existing methods trained for a specific scale factor only.

Topics & Concepts

UpsamplingComputer sciencePoint cloudCloud computingBlock (permutation group theory)SubnetworkScale (ratio)Convolution (computer science)Artificial intelligenceAlgorithmData miningTheoretical computer scienceMathematicsComputer networkImage (mathematics)Artificial neural networkGeometryPhysicsQuantum mechanicsOperating system3D Shape Modeling and AnalysisComputer Graphics and Visualization Techniques3D Surveying and Cultural Heritage