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NormNet: Point-wise normal estimation network for three-dimensional point cloud data

Authors
Hyeon, JanghunLee, WeonsukKim, Joo HyungDoh, Nakju
Issue Date
4-7월-2019
Publisher
SAGE PUBLICATIONS INC
Keywords
Normal estimation; 3-D deep learning; 3-D sensor system; 3-D indoor LiDAR data set; robustness
Citation
INTERNATIONAL JOURNAL OF ADVANCED ROBOTIC SYSTEMS, v.16, no.4
Indexed
SCIE
SCOPUS
Journal Title
INTERNATIONAL JOURNAL OF ADVANCED ROBOTIC SYSTEMS
Volume
16
Number
4
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/64142
DOI
10.1177/1729881419857532
ISSN
1729-8814
Abstract
In this article, a point-wise normal estimation network for three-dimensional point cloud data called NormNet is proposed. We propose the multiscale K-nearest neighbor convolution module for strengthened local feature extraction. With the multiscale K-nearest neighbor convolution module and PointNet-like architecture, we achieved a hybrid of three features: a global feature, a semantic feature from the segmentation network, and a local feature from the multiscale K-nearest neighbor convolution module. Those features, by mutually supporting each other, not only increase the normal estimation performance but also enable the estimation to be robust under severe noise perturbations or point deficiencies. The performance was validated in three different data sets: Synthetic CAD data (ModelNet), RGB-D sensor-based real 3D PCD (S3DIS), and LiDAR sensor-based real 3D PCD that we built and shared.
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