Mesh is an important and powerful type of data for 3D shapes and widely
studied in the field of computer vision and computer graphics. Regarding the
task of 3D shape representation, there have been extensive research efforts
concentrating on how to represent 3D shapes well using volumetric grid,
multi-view and point cloud. However, there is little effort on using mesh data
in recent years, due to the complexity and irregularity of mesh data. In this
paper, we propose a mesh neural network, named MeshNet, to learn 3D shape
representation from mesh data. In this method, face-unit and feature splitting
are introduced, and a general architecture with available and effective blocks
are proposed. In this way, MeshNet is able to solve the complexity and
irregularity problem of mesh and conduct 3D shape representation well. We have
applied the proposed MeshNet method in the applications of 3D shape
classification and retrieval. Experimental results and comparisons with the
state-of-the-art methods demonstrate that the proposed MeshNet can achieve
satisfying 3D shape classification and retrieval performance, which indicates
the effectiveness of the proposed method on 3D shape representation.
Description
MeshNet: Mesh Neural Network for 3D Shape Representation
%0 Journal Article
%1 feng2018meshnet
%A Feng, Yutong
%A Feng, Yifan
%A You, Haoxuan
%A Zhao, Xibin
%A Gao, Yue
%D 2018
%K deep-learning from:adulny mesh meshnet representation
%T MeshNet: Mesh Neural Network for 3D Shape Representation
%U http://arxiv.org/abs/1811.11424
%X Mesh is an important and powerful type of data for 3D shapes and widely
studied in the field of computer vision and computer graphics. Regarding the
task of 3D shape representation, there have been extensive research efforts
concentrating on how to represent 3D shapes well using volumetric grid,
multi-view and point cloud. However, there is little effort on using mesh data
in recent years, due to the complexity and irregularity of mesh data. In this
paper, we propose a mesh neural network, named MeshNet, to learn 3D shape
representation from mesh data. In this method, face-unit and feature splitting
are introduced, and a general architecture with available and effective blocks
are proposed. In this way, MeshNet is able to solve the complexity and
irregularity problem of mesh and conduct 3D shape representation well. We have
applied the proposed MeshNet method in the applications of 3D shape
classification and retrieval. Experimental results and comparisons with the
state-of-the-art methods demonstrate that the proposed MeshNet can achieve
satisfying 3D shape classification and retrieval performance, which indicates
the effectiveness of the proposed method on 3D shape representation.
@article{feng2018meshnet,
abstract = {Mesh is an important and powerful type of data for 3D shapes and widely
studied in the field of computer vision and computer graphics. Regarding the
task of 3D shape representation, there have been extensive research efforts
concentrating on how to represent 3D shapes well using volumetric grid,
multi-view and point cloud. However, there is little effort on using mesh data
in recent years, due to the complexity and irregularity of mesh data. In this
paper, we propose a mesh neural network, named MeshNet, to learn 3D shape
representation from mesh data. In this method, face-unit and feature splitting
are introduced, and a general architecture with available and effective blocks
are proposed. In this way, MeshNet is able to solve the complexity and
irregularity problem of mesh and conduct 3D shape representation well. We have
applied the proposed MeshNet method in the applications of 3D shape
classification and retrieval. Experimental results and comparisons with the
state-of-the-art methods demonstrate that the proposed MeshNet can achieve
satisfying 3D shape classification and retrieval performance, which indicates
the effectiveness of the proposed method on 3D shape representation.},
added-at = {2022-11-03T10:04:40.000+0100},
author = {Feng, Yutong and Feng, Yifan and You, Haoxuan and Zhao, Xibin and Gao, Yue},
biburl = {https://www.bibsonomy.org/bibtex/24a8a74b7350ce044be1a07fe5dd0d7a1/adulny},
description = {MeshNet: Mesh Neural Network for 3D Shape Representation},
interhash = {0bef319d773cd71d1c4b1a31145ffcab},
intrahash = {4a8a74b7350ce044be1a07fe5dd0d7a1},
keywords = {deep-learning from:adulny mesh meshnet representation},
note = {cite arxiv:1811.11424},
timestamp = {2022-11-03T10:04:40.000+0100},
title = {MeshNet: Mesh Neural Network for 3D Shape Representation},
url = {http://arxiv.org/abs/1811.11424},
year = 2018
}