Accurate 3D Hand Pose Estimation for Whole-Body 3D Human Mesh Estimation

23 Nov 2020  ยท  Gyeongsik Moon, Hongsuk Choi, Kyoung Mu Lee ยท

Whole-body 3D human mesh estimation aims to reconstruct the 3D human body, hands, and face simultaneously. Although several methods have been proposed, accurate prediction of 3D hands, which consist of 3D wrist and fingers, still remains challenging due to two reasons. First, the human kinematic chain has not been carefully considered when predicting the 3D wrists. Second, previous works utilize body features for the 3D fingers, where the body feature barely contains finger information. To resolve the limitations, we present Hand4Whole, which has two strong points over previous works. First, we design Pose2Pose, a module that utilizes joint features for 3D joint rotations. Using Pose2Pose, Hand4Whole utilizes hand MCP joint features to predict 3D wrists as MCP joints largely contribute to 3D wrist rotations in the human kinematic chain. Second, Hand4Whole discards the body feature when predicting 3D finger rotations. Our Hand4Whole is trained in an end-to-end manner and produces much better 3D hand results than previous whole-body 3D human mesh estimation methods. The codes are available here at https://github.com/mks0601/Hand4Whole_RELEASE.

PDF Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Hand Pose Estimation 3DPW Hand4Whole MPJPE 86.6 # 1
3D Human Pose Estimation 3DPW Hand4Whole PA-MPJPE 54.4 # 78
3D Human Reconstruction AGORA Hand4Whole PA-MPVPE 73.2 # 1
3D Human Reconstruction Expressive hands and faces dataset (EHF) Hand4Whole PA V2V (mm), whole body 50.3 # 1
PA V2V (mm), left hand 10.8 # 5
PA V2V (mm), face 5.8 # 3
3D Hand Pose Estimation FreiHAND Hand4Whole PA-MPVPE 7.7 # 5
PA-MPJPE 7.7 # 6
PA-F@5mm 66.4 # 6
PA-F@15mm 97.1 # 6
3D Human Pose Estimation UBody Hand4Whole PVE-All 104.1 # 4
PVE-Hands 45.7 # 4
PVE-Face 27.0 # 2
PA-PVE-All 44.8 # 4
PA-PVE-Hands 8.9 # 2
PA-PVE-Face 2.8 # 3

Methods