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局部几何与全局结构联合感知的三维形状分类方法

张晓辉 何金海 兰鹏燕 徐圣斯

计算机应用研究2023,Vol.40Issue(12):3828-3833,6.
计算机应用研究2023,Vol.40Issue(12):3828-3833,6.DOI:10.19734/j.issn.1001-3695.2023.04.0170

局部几何与全局结构联合感知的三维形状分类方法

3D shape classification method based on joint graph convolution learning of local geometry and global structure

张晓辉 1何金海 1兰鹏燕 1徐圣斯2

作者信息

  • 1. 辽宁师范大学计算机与信息技术学院,辽宁大连 116081
  • 2. 大连工业大学信息技术中心,辽宁大连 116034
  • 折叠

摘要

Abstract

Aiming at the issue of complex 3D shape analysis and recognition,this paper presented a novel 3D graph convolu-tion classification method.It established a joint graph convolution learning mechanism of local geometry and global structure to provide both geometrical features and global context features,which effectively improved the robustness and stability of 3D data learning.Firstly,it constructed the local graph in spatial domain by farthest point sampling and K-nearest neighbor method,and designed a dynamic spectral graph convolution operator to extract local geometric features effectively.Meanwhile,it con-structed the global feature graph based on random sampling in the feature domain,and obtained the global structure context by spectral graph convolution.Furthermore,it established a weighted graph convolution network with an attention mechanism to achieve adaptive feature fusion.Finally,under the optimization of objective function,it improved the performance of feature learning effectively.Experimental results show that the proposed joint network learning mechanism,which combined local geo-metric features with global structure features,enhances the representation ability and discrimination of deep features,and ob-tains better recognition and classification performance compared with advanced methods.This method can be used for large-scale point clouds recognition,3D shape reconstruction and data compression.It has important research significance and broad application prospects in robot,product digital analysis,intelligent navigation,virtual reality and other fields.

关键词

深度学习/形状分类/三维形状/图卷积/局部几何/全局结构

Key words

deep learning/shape classification/three-dimensional shape/graph convolution/local geometry/global structure

分类

信息技术与安全科学

引用本文复制引用

张晓辉,何金海,兰鹏燕,徐圣斯..局部几何与全局结构联合感知的三维形状分类方法[J].计算机应用研究,2023,40(12):3828-3833,6.

基金项目

辽宁省科技厅资助项目(2023JH2/101300190) (2023JH2/101300190)

辽宁省教育厅一般项目(LJ2020015) (LJ2020015)

计算机应用研究

OA北大核心CSCDCSTPCD

1001-3695

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