Generative 3D Part Assembly via Dynamic Graph Learning

被引:0
|
作者
Huang, Jialei [3 ]
Zhan, Guanqi [3 ]
Fan, Qingnan
Mo, Kaichun [1 ]
Shao, Lin [1 ]
Chen, Baoquan [2 ]
Guibas, Leonidas [1 ]
Dong, Hao [2 ]
机构
[1] Stanford Univ, Stanford, CA USA
[2] Peking Univ, Peng Cheng Lab, CFCS CS Dept, AIIT, Beijing, Peoples R China
[3] Peking Univ, Beijing, Peoples R China
关键词
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Autonomous part assembly is a challenging yet crucial task in 3D computer vision and robotics. Analogous to buying an IKEA furniture, given a set of 3D parts that can assemble a single shape, an intelligent agent needs to perceive the 3D part geometry, reason to propose pose estimations for the input parts, and finally call robotic planning and control routines for actuation. In this paper, we focus on the pose estimation subproblem from the vision side involving geometric and relational reasoning over the input part geometry. Essentially, the task of generative 3D part assembly is to predict a 6-DoF part pose, including a rigid rotation and translation, for each input part that assembles a single 3D shape as the final output. To tackle this problem, we propose an assembly-oriented dynamic graph learning framework that leverages an iterative graph neural network as a backbone. It explicitly conducts sequential part assembly refinements in a coarse-to-fine manner, exploits a pair of part relation reasoning module and part aggregation module for dynamically adjusting both part features and their relations in the part graph. We conduct extensive experiments and quantitative comparisons to three strong baseline methods, demonstrating the effectiveness of the proposed approach.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] 3D graph contrastive learning for molecular property prediction
    Moon, Kisung
    Im, Hyeon-Jin
    Kwon, Sunyoung
    BIOINFORMATICS, 2023, 39 (06)
  • [42] Feature Graph Learning for 3D Point Cloud Denoising
    Hu, Wei
    Gao, Xiang
    Cheung, Gene
    Guo, Zongming
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2020, 68 (68) : 2841 - 2856
  • [43] Learning Superpoint Graph Cut for 3D Instance Segmentation
    Hui, Le
    Tang, Linghua
    Shen, Yaqi
    Xie, Jin
    Yang, Jian
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35 (NEURIPS 2022), 2022,
  • [44] Geometric Encoded Feature Learning for 3D Graph Recognition
    Han, Li
    Lan, Pengyan
    Wang, Xiao-min
    Shi, Xue
    He, Jin-hai
    Li, Gen-yu
    JOURNAL OF IMAGING SCIENCE AND TECHNOLOGY, 2022, 66 (03)
  • [45] Learning Human Cognition via fMRI Analysis Using 3D CNN and Graph Neural Network
    Ni, Xiuyan
    Gao, Tian
    Wu, Tingting
    Fan, Jin
    Chen, Chao
    MULTIMODAL BRAIN IMAGE ANALYSIS AND MATHEMATICAL FOUNDATIONS OF COMPUTATIONAL ANATOMY, 2019, 11846 : 93 - 101
  • [46] View-based 3D object retrieval via multi-modal graph learning
    Zhao, Sicheng
    Yao, Hongxun
    Zhang, Yanhao
    Wang, Yasi
    Liu, Shaohui
    SIGNAL PROCESSING, 2015, 112 : 110 - 118
  • [47] 3D Cell Assembly via Anode Electrode Manipulation
    Shen, Yajing
    Wong, Chin To
    Wan, Wenfeng
    Nakajima, Masahiro
    Fukuda, Toshio
    2015 IEEE INTERNATIONAL CONFERENCE ON CYBER TECHNOLOGY IN AUTOMATION, CONTROL, AND INTELLIGENT SYSTEMS (CYBER), 2015, : 1138 - 1142
  • [48] 3D nanoprinting via spatially controlled assembly and polymerization
    Thomas G. Pattison
    Shuo Wang
    Robert D. Miller
    Gang-yu Liu
    Greg G. Qiao
    Nature Communications, 13
  • [49] 3D nanoprinting via spatially controlled assembly and polymerization
    Pattison, Thomas G.
    Wang, Shuo
    Miller, Robert D.
    Liu, Gang-yu
    Qiao, Greg G.
    NATURE COMMUNICATIONS, 2022, 13 (01)
  • [50] A method of generating 3D part drawings from assembly drawings
    Tanaka, M
    Kaneeda, T
    Iwama, K
    Hosoda, A
    Watanabe, T
    1998 JAPAN-U.S.A. SYMPOSIUM ON FLEXIBLE AUTOMATION - PROCEEDINGS, VOLS I AND II, 1998, : 707 - 710