Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

I2UV-HandNet: Image-to-UV Prediction Network for Accurate and High-fidelity 3D Hand Mesh Modeling

About

Reconstructing a high-precision and high-fidelity 3D human hand from a color image plays a central role in replicating a realistic virtual hand in human-computer interaction and virtual reality applications. The results of current methods are lacking in accuracy and fidelity due to various hand poses and severe occlusions. In this study, we propose an I2UV-HandNet model for accurate hand pose and shape estimation as well as 3D hand super-resolution reconstruction. Specifically, we present the first UV-based 3D hand shape representation. To recover a 3D hand mesh from an RGB image, we design an AffineNet to predict a UV position map from the input in an image-to-image translation fashion. To obtain a higher fidelity shape, we exploit an additional SRNet to transform the low-resolution UV map outputted by AffineNet into a high-resolution one. For the first time, we demonstrate the characterization capability of the UV-based hand shape representation. Our experiments show that the proposed method achieves state-of-the-art performance on several challenging benchmarks.

Ping Chen, Yujin Chen, Dong Yang, Fangyin Wu, Qin Li, Qingpei Xia, Yong Tan• 2021

Related benchmarks

TaskDatasetResultRank
3D Hand ReconstructionFreiHAND (test)
F@15mm97.7
154
Hand Mesh ReconstructionHO3D v2 (test)
F@50.956
44
3D Hand Pose EstimationFreiHAND
PA-MPJPE (mm)6.7
36
3D Hand ReconstructionFreiHAND
PA MPVPE0.74
25
3D Hand Pose EstimationHO-3D v2
PA-MPJPE (mm)9.9
25
3D Hand-Object InteractionHO3D v2 (test)
PA-MPJPE9.9
20
3D Hand-Object ReconstructionHO3D v2
MPJPE0.99
16
3D Hand Pose Estimation and Mesh ReconstructionHO-3D v2 (test)--
12
Hand Mesh RecoveryHO-3D (test)
PA-MPJPE (mm)0.99
10
3D Hand-Object ReconstructionHO3D v3
MPJPE1.25
10
Showing 10 of 11 rows

Other info

Follow for update