Litcius/Paper detail

A Rotation-Invariant Framework for Deep Point Cloud Analysis

Xianzhi Li, Ruihui Li, Guangyong Chen, Chi‐Wing Fu, Daniel Cohen‐Or, Pheng‐Ann Heng

2021IEEE Transactions on Visualization and Computer Graphics101 citationsDOIOpen Access PDF

Abstract

Recently, many deep neural networks were designed to process 3D point clouds, but a common drawback is that rotation invariance is not ensured, leading to poor generalization to arbitrary orientations. In this article, we introduce a new low-level purely rotation-invariant representation to replace common 3D Cartesian coordinates as the network inputs. Also, we present a network architecture to embed these representations into features, encoding local relations between points and their neighbors, and the global shape structure. To alleviate inevitable global information loss caused by the rotation-invariant representations, we further introduce a region relation convolution to encode local and non-local information. We evaluate our method on multiple point cloud analysis tasks, including (i) shape classification, (ii) part segmentation, and (iii) shape retrieval. Extensive experimental results show that our method achieves consistent, and also the best performance, on inputs at arbitrary orientations, compared with all the state-of-the-art methods.

Topics & Concepts

Point cloudComputer scienceInvariant (physics)Artificial intelligenceConvolution (computer science)Rotation (mathematics)SegmentationConvolutional neural networkCartesian coordinate systemAlgorithmPattern recognition (psychology)Theoretical computer scienceComputer visionArtificial neural networkMathematicsGeometryMathematical physics3D Shape Modeling and Analysis3D Surveying and Cultural HeritageComputer Graphics and Visualization Techniques