A Lightweight Graph Transformer Network for Human Mesh Reconstruction from 2D Human Pose

Type: Article

Publication Date: 2022-10-10

Citations: 17

DOI: https://doi.org/10.1145/3503161.3547844

Abstract

Existing deep learning-based human mesh reconstruction approaches have a tendency to build larger networks to achieve higher accuracy. Computational complexity and model size are often neglected, despite being key characteristics for practical use of human mesh reconstruction models (e.g. virtual try-on systems). In this paper, we present GTRS, a lightweight pose-based method that can reconstruct human mesh from 2D human pose. We propose a pose analysis module that uses graph transformers to exploit structured and implicit joint correlations, and a mesh regression module that combines the extracted pose feature with the mesh template to reconstruct the final human mesh. We demonstrate the efficiency and generalization of GTRS by extensive evaluations on the Human3.6M and 3DPW datasets. In particular, GTRS achieves better accuracy than the SOTA pose-based method Pose2Mesh while only using 10.2% of the parameters (Params) and 2.5% of the FLOPs on the challenging in-the-wild 3DPW dataset. Code is available at https://github.com/zczcwh/GTRS

Locations

  • arXiv (Cornell University) - View - PDF
  • Proceedings of the 30th ACM International Conference on Multimedia - View

Similar Works

Action Title Year Authors
+ A Lightweight Graph Transformer Network for Human Mesh Reconstruction from 2D Human Pose 2021 Ce Zheng
MatĂ­as Mendieta
Pu Wang
Aidong Lu
Chen Chen
+ Pose2Mesh: Graph Convolutional Network for 3D Human Pose and Mesh Recovery from a 2D Human Pose 2020 Hongsuk Choi
Gyeongsik Moon
Kyoung Mu Lee
+ Pose2Mesh: Graph Convolutional Network for 3D Human Pose and Mesh Recovery from a 2D Human Pose 2020 Hongsuk Choi
Gyeongsik Moon
Kyoung Mu Lee
+ Mesh Graphormer 2021 Kevin Lin
Lijuan Wang
Zicheng Liu
+ Mesh Graphormer 2021 Kevin Lin
Lijuan Wang
Zicheng Liu
+ MUG: Multi-human Graph Network for 3D Mesh Reconstruction from 2D Pose 2022 Chenyan Wu
Yandong Li
Xianfeng Tang
James Z. Wang
+ PDF Chat FeatER: An Efficient Network for Human Reconstruction via Feature Map-Based TransformER 2023 Ce Zheng
MatĂ­as Mendieta
Taojiannan Yang
Guo-Jun Qi
Chen Chen
+ End-to-End Human Pose and Mesh Reconstruction with Transformers 2020 Kevin Lin
Lijuan Wang
Zicheng Liu
+ PDF Chat Convolutional Mesh Regression for Single-Image Human Shape Reconstruction 2019 Nikos Kolotouros
Georgios Pavlakos
Kostas Daniilidis
+ Convolutional Mesh Regression for Single-Image Human Shape Reconstruction 2019 Nikos Kolotouros
Georgios Pavlakos
Kostas Daniilidis
+ Convolutional Mesh Regression for Single-Image Human Shape Reconstruction 2019 Nikos Kolotouros
Georgios Pavlakos
Kostas Daniilidis
+ PDF Chat End-to-End Human Pose and Mesh Reconstruction with Transformers 2021 Kevin Lin
Lijuan Wang
Zicheng Liu
+ FeatER: An Efficient Network for Human Reconstruction via Feature Map-Based TransformER 2022 Ce Zheng
MatĂ­as Mendieta
Taojiannan Yang
Guo-Jun Qi
Chen Chen
+ PDF Chat Pose2Mesh: Graph Convolutional Network for 3D Human Pose and Mesh Recovery from a 2D Human Pose 2020 Hongsuk Choi
Gyeongsik Moon
Kyoung Mu Lee
+ Benchmarking and Analyzing 3D Human Pose and Shape Estimation Beyond Algorithms 2022 Hui En Pang
Zhongang Cai
Lei Yang
Tianwei Zhang
Ziwei Liu
+ Leveraging the Learnable Vertex-Vertex Relationship to Generalize Human Pose and Mesh Reconstruction for In-the-Wild Scenes 2022 Trung Tran-Quang
Cuong Than-Cao
Hai Nguyen-Thanh
Hoang Si Hong
+ PDF Chat Leveraging the Learnable Vertex-Vertex Relationship to Generalize Human Pose and Mesh Reconstruction for In-the-Wild Scenes 2022 Trung Quang Tran
Cuong Cao Than
Hai Thanh Nguyen
Hoang Si Hong
+ Gator: Graph-Aware Transformer with Motion-Disentangled Regression for Human Mesh Recovery from a 2D Pose 2023 Yingxuan You
Hong Liu
Xia Li
Wenhao Li
Ti Wang
Runwei Ding
+ PDF Chat MPT: Mesh Pre-Training with Transformers for Human Pose and Mesh Reconstruction 2024 Kevin Lin
Chung-Ching Lin
Lin Liang
Zicheng Liu
Lijuan Wang
+ MPT: Mesh Pre-Training with Transformers for Human Pose and Mesh Reconstruction 2022 Kevin Lin
Chung-Ching Lin
Liang Lin
Zicheng Liu
Lijuan Wang

Works Cited by This (24)

Action Title Year Authors
+ PDF Chat Generalized Procrustes Analysis: A Tool for Exploring Aggregates and Persons 2009 James W. Grice
Kimberly K. Assad
+ PDF Chat Unite the People: Closing the Loop Between 3D and 2D Human Representations 2017 Christoph Lassner
Javier Romero
Martin Kiefel
Federica Bogo
Michael J. Black
Peter Gehler
+ PDF Chat Squeeze-and-Excitation Networks 2018 Jie Hu
Li Shen
Gang Sun
+ PDF Chat Monocular 3D Human Pose Estimation in the Wild Using Improved CNN Supervision 2017 Dushyant Mehta
Helge Rhodin
Dan Casas
Pascal Fua
Oleksandr Sotnychenko
Weipeng Xu
Christian Theobalt
+ PDF Chat Learning to Estimate 3D Human Pose and Shape from a Single Color Image 2018 Georgios Pavlakos
Luyang Zhu
Xiaowei Zhou
Kostas Daniilidis
+ PDF Chat Deep High-Resolution Representation Learning for Human Pose Estimation 2019 Ke Sun
Bin Xiao
Dong Liu
Jingdong Wang
+ PDF Chat Neural Body Fitting: Unifying Deep Learning and Model Based Human Pose and Shape Estimation 2018 Mohamed Omran
Christoph Lassner
Gerard Pons‐Moll
Peter Gehler
Bernt Schiele
+ PDF Chat Pixel2Mesh: Generating 3D Mesh Models from Single RGB Images 2018 Nanyang Wang
Yinda Zhang
Zhuwen Li
Yanwei Fu
Wei Liu
Yu–Gang Jiang
+ PDF Chat 3D Human Pose Estimation in Video With Temporal Convolutions and Semi-Supervised Training 2019 Dario Pavllo
Christoph Feichtenhofer
David Grangier
Michael Auli
+ PDF Chat MobileNetV2: Inverted Residuals and Linear Bottlenecks 2018 Mark Sandler
Andrew Howard
Menglong Zhu
Andrey Zhmoginov
Liang-Chieh Chen