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  4. Large-Scale 3D Shape Retrieval from ShapeNet Core55
 
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2017
Conference Paper
Title

Large-Scale 3D Shape Retrieval from ShapeNet Core55

Abstract
With the advent of commodity 3D capturing devices and better 3D modeling tools, 3D shape content is becoming increasingly prevalent. Therefore, the need for shape retrieval algorithms to handle large-scale shape repositories is more and more important. This track provides a benchmark to evaluate large-scale 3D shape retrieval based on the ShapeNet dataset. It is a continuation of the SHREC 2016 large-scale shape retrieval challenge with a goal of measuring progress with recent developments in deep learning methods for shape retrieval. We use ShapeNet Core55, which provides more than 50 thousands models over 55 common categories in total for training and evaluating several algorithms. Eight participating teams have submitted a variety of retrieval methods which were evaluated on several standard information retrieval performance metrics. The approaches vary in terms of the 3D representation, using multi-view projections, point sets, volumetric grids, or traditional 3D shape descriptors. Overall performance on the shape retrieval task has improved significantly compared to the iteration of this competition in SHREC 2016. We release all data, results, and evaluation code for the benefit of the community and to catalyze future research into large-scale 3D shape retrieval.
Author(s)
Savva, Manolis
Princeton Univ.
Yu, Fisher
UC Berkeley
Su, Hao
AIST, Japan
Kanezaki, Asako
AIST, Japan
Furuya, Takahiko
Univ. of Yamanashi
Ohbuchi, Ryutarou
Univ. of Yamanashi
Zhou, Zhichao
Huazhong Univ. of Science and Technology
Yu, Rui
Huazhong Univ. of Science and Technology
Bai, Song
Huazhong Univ. of Science and Technology
Bai, Xiang
Huazhong Univ. of Science and Technology
Aono, Masaki
Toyohashi Univ. of Technology
Tatsuma, Atsushi
Toyohashi Univ. of Technology
Thermos, S.
Centre for Research and Technology Hellas
Axenopoulos, A.
Centre for Research and Technology Hellas
Papadopoulos, G.T.
Centre for Research and Technology Hellas
Daras, P.
Centre for Research and Technology Hellas
Deng, Xiao
Peking Univ.
Lian, Zhouhui
Peking Univ.
Li, Bo
Univ. of Southern Mississippi
Johan, Henry
Fraunhofer Singapore  
Lu, Yijuan
Texas State Univ.
Mk, Sanjeev
Indian Institute of Technology
Mainwork
Eurographics 2017 Workshop on 3D Object Retrieval, EG 3DOR 2017  
Conference
Workshop on 3D Object Retrieval (EG 3DOR) 2017  
Link
Link
DOI
10.2312/3dor.20171050
Language
English
Singapore  
Keyword(s)
  • 3D Object retrieval

  • Shape retrieval

  • Information retrieval

  • Digitized Work

  • Computer graphics (CG)

  • Computer vision (CV)

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