Gator: Graph-Aware Transformer with Motion-Disentangled Regression for Human Mesh Recovery from a 2D Pose

Jun 4, 2023·
Yingxuan You
Yingxuan You
,
Hong Liu
Xia Li
Xia Li
,
Wenhao Li
,
Ti Wang
,
Runwei Ding
· 0 min read
Abstract
3D human mesh recovery from a 2D pose plays an important role in various applications. However, it is hard for existing methods to simultaneously capture the multiple relations during the evolution from skeleton to mesh, including joint-joint, joint-vertex and vertex-vertex relations, which often leads to implausible results. To address this issue, we propose a novel solution, called GATOR, that contains an encoder of Graph-Aware Transformer (GAT) and a decoder with Motion-Disentangled Regression (MDR) to explore these multiple relations. Specifically, GAT combines a GCN and a graph-aware self-attention in parallel to capture physical and hidden joint-joint relations. Furthermore, MDR models joint-vertex and vertex-vertex interactions to explore joint and vertex relations. Based on the clustering characteristics of vertex offset fields, MDR regresses the vertices by composing the predicted base motions. Extensive experiments show that GATOR achieves state-of-the-art performance on two challenging benchmarks. Code is available at .
Type
Publication
IEEE International Conference on Acoustics, Speech and Signal Processing
Yingxuan You
Authors
Ph.D. Student
Leading research at the intersection of medical imaging, radiotherapy, and computer vision.
Xia Li
Authors
Associate Professor (incoming)
Leading research at the intersection of computer vision, medical imaging and radiotherapy.