articleJun 1, 2019GREEN OA

Semantic Graph Convolutional Networks for 3D Human Pose Regression

LZLong ZhaoXPXi PengYTYu TianMKMubbasir KapadiaDNDimitris N. Metaxas

Rutgers Sexual and Reproductive Health and Rights · Binghamton University

Indexed inarxivcrossref

Abstract

In this paper, we study the problem of learning Graph Convolutional Networks (GCNs) for regression. Current architectures of GCNs are limited to the small receptive field of convolution filters and shared transformation matrix for each node. To address these limitations, we propose Semantic Graph Convolutional Networks (SemGCN), a novel neural network architecture that operates on regression tasks with graph-structured data. SemGCN learns to capture semantic information such as local and global node relationships, which is not explicitly represented in the graph. These semantic relationships can be learned through end-to-end training from the ground truth without additional supervision or hand-crafted rules.…

Citation impact

492
total citations
FWCI
21.43
Percentile
100%
References
79
Citations per year

Authors

5
  • LZ
    Long ZhaoCorresponding

    Rutgers Sexual and Reproductive Health and Rights

  • XP
    Xi Peng

    Binghamton University

  • YT
    Yu Tian

    Rutgers Sexual and Reproductive Health and Rights

  • MK
    Mubbasir Kapadia

    Rutgers Sexual and Reproductive Health and Rights

  • DN
    Dimitris N. Metaxas

    Rutgers Sexual and Reproductive Health and Rights

Topics & keywords

Keywords
  • Graph
  • Convolutional neural network
  • Pattern recognition (psychology)
  • Ground truth
  • Convolution (computer science)
  • Field (mathematics)
  • Regression
  • Encoding (memory)
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