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MeshPose: Unifying DensePose and 3D Body Mesh reconstruction

About

DensePose provides a pixel-accurate association of images with 3D mesh coordinates, but does not provide a 3D mesh, while Human Mesh Reconstruction (HMR) systems have high 2D reprojection error, as measured by DensePose localization metrics. In this work we introduce MeshPose to jointly tackle DensePose and HMR. For this we first introduce new losses that allow us to use weak DensePose supervision to accurately localize in 2D a subset of the mesh vertices ('VertexPose'). We then lift these vertices to 3D, yielding a low-poly body mesh ('MeshPose'). Our system is trained in an end-to-end manner and is the first HMR method to attain competitive DensePose accuracy, while also being lightweight and amenable to efficient inference, making it suitable for real-time AR applications.

Eric-Tuan L\^e, Antonis Kakolyris, Petros Koutras, Himmy Tam, Efstratios Skordos, George Papandreou, R{\i}za Alp G\"uler, Iasonas Kokkinos• 2024

Related benchmarks

TaskDatasetResultRank
3D Human Mesh Recovery3DPW (test)
MPJPE76.1
341
3D Human Pose EstimationHuman3.6M
MPJPE50.7
193
3D Human Pose Estimation3DPW
PA-MPJPE46.73
137
3D Human Mesh Recovery3DPW
PA-MPJPE45.1
80
3D Body Mesh RecoveryHuman3.6M
PA-MPJPE29.4
54
Human Mesh RecoveryMPI-INF-3DHP
MPJPE74.9
43
3D Human Pose Estimation3DPW OCC (test)
PA-MPJPE51.81
31
Human Keypoint DetectionCOCO--
30
3D Mesh RecoveryTHuman 2.0
MPJPE69.9
15
3D Human Pose Estimation3DOH
PA-MPJPE38.18
15
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