TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/I2UV-HandNet: Image-to-UV Prediction Network for Accurate ...

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

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

2021-02-07ICCV 2021 10Super-Resolution3D Hand Pose EstimationImage Super-ResolutionTranslationImage-to-Image Translation
PaperPDF

Abstract

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.

Results

TaskDatasetMetricValueModel
HandFreiHANDPA-F@15mm0.977I2UV-HandNet
HandFreiHANDPA-F@5mm0.707I2UV-HandNet
HandFreiHANDPA-MPJPE6.7I2UV-HandNet
HandFreiHANDPA-MPVPE6.9I2UV-HandNet
HandHO-3D v2AUC_J0.804I2UV-HandNet
HandHO-3D v2AUC_V0.799I2UV-HandNet
HandHO-3D v2F@15mm0.943I2UV-HandNet
HandHO-3D v2F@5mm0.5I2UV-HandNet
HandHO-3D v2PA-MPJPE (mm)9.9I2UV-HandNet
HandHO-3D v2PA-MPVPE10.1I2UV-HandNet
Pose EstimationFreiHANDPA-F@15mm0.977I2UV-HandNet
Pose EstimationFreiHANDPA-F@5mm0.707I2UV-HandNet
Pose EstimationFreiHANDPA-MPJPE6.7I2UV-HandNet
Pose EstimationFreiHANDPA-MPVPE6.9I2UV-HandNet
Pose EstimationHO-3D v2AUC_J0.804I2UV-HandNet
Pose EstimationHO-3D v2AUC_V0.799I2UV-HandNet
Pose EstimationHO-3D v2F@15mm0.943I2UV-HandNet
Pose EstimationHO-3D v2F@5mm0.5I2UV-HandNet
Pose EstimationHO-3D v2PA-MPJPE (mm)9.9I2UV-HandNet
Pose EstimationHO-3D v2PA-MPVPE10.1I2UV-HandNet
Hand Pose EstimationFreiHANDPA-F@15mm0.977I2UV-HandNet
Hand Pose EstimationFreiHANDPA-F@5mm0.707I2UV-HandNet
Hand Pose EstimationFreiHANDPA-MPJPE6.7I2UV-HandNet
Hand Pose EstimationFreiHANDPA-MPVPE6.9I2UV-HandNet
Hand Pose EstimationHO-3D v2AUC_J0.804I2UV-HandNet
Hand Pose EstimationHO-3D v2AUC_V0.799I2UV-HandNet
Hand Pose EstimationHO-3D v2F@15mm0.943I2UV-HandNet
Hand Pose EstimationHO-3D v2F@5mm0.5I2UV-HandNet
Hand Pose EstimationHO-3D v2PA-MPJPE (mm)9.9I2UV-HandNet
Hand Pose EstimationHO-3D v2PA-MPVPE10.1I2UV-HandNet
3DFreiHANDPA-F@15mm0.977I2UV-HandNet
3DFreiHANDPA-F@5mm0.707I2UV-HandNet
3DFreiHANDPA-MPJPE6.7I2UV-HandNet
3DFreiHANDPA-MPVPE6.9I2UV-HandNet
3DHO-3D v2AUC_J0.804I2UV-HandNet
3DHO-3D v2AUC_V0.799I2UV-HandNet
3DHO-3D v2F@15mm0.943I2UV-HandNet
3DHO-3D v2F@5mm0.5I2UV-HandNet
3DHO-3D v2PA-MPJPE (mm)9.9I2UV-HandNet
3DHO-3D v2PA-MPVPE10.1I2UV-HandNet
3D Hand Pose EstimationFreiHANDPA-F@15mm0.977I2UV-HandNet
3D Hand Pose EstimationFreiHANDPA-F@5mm0.707I2UV-HandNet
3D Hand Pose EstimationFreiHANDPA-MPJPE6.7I2UV-HandNet
3D Hand Pose EstimationFreiHANDPA-MPVPE6.9I2UV-HandNet
3D Hand Pose EstimationHO-3D v2AUC_J0.804I2UV-HandNet
3D Hand Pose EstimationHO-3D v2AUC_V0.799I2UV-HandNet
3D Hand Pose EstimationHO-3D v2F@15mm0.943I2UV-HandNet
3D Hand Pose EstimationHO-3D v2F@5mm0.5I2UV-HandNet
3D Hand Pose EstimationHO-3D v2PA-MPJPE (mm)9.9I2UV-HandNet
3D Hand Pose EstimationHO-3D v2PA-MPVPE10.1I2UV-HandNet
1 Image, 2*2 StitchiFreiHANDPA-F@15mm0.977I2UV-HandNet
1 Image, 2*2 StitchiFreiHANDPA-F@5mm0.707I2UV-HandNet
1 Image, 2*2 StitchiFreiHANDPA-MPJPE6.7I2UV-HandNet
1 Image, 2*2 StitchiFreiHANDPA-MPVPE6.9I2UV-HandNet
1 Image, 2*2 StitchiHO-3D v2AUC_J0.804I2UV-HandNet
1 Image, 2*2 StitchiHO-3D v2AUC_V0.799I2UV-HandNet
1 Image, 2*2 StitchiHO-3D v2F@15mm0.943I2UV-HandNet
1 Image, 2*2 StitchiHO-3D v2F@5mm0.5I2UV-HandNet
1 Image, 2*2 StitchiHO-3D v2PA-MPJPE (mm)9.9I2UV-HandNet
1 Image, 2*2 StitchiHO-3D v2PA-MPVPE10.1I2UV-HandNet

Related Papers

SpectraLift: Physics-Guided Spectral-Inversion Network for Self-Supervised Hyperspectral Image Super-Resolution2025-07-17A Translation of Probabilistic Event Calculus into Markov Decision Processes2025-07-17Function-to-Style Guidance of LLMs for Code Translation2025-07-15IM-LUT: Interpolation Mixing Look-Up Tables for Image Super-Resolution2025-07-14PanoDiff-SR: Synthesizing Dental Panoramic Radiographs using Diffusion and Super-resolution2025-07-12HNOSeg-XS: Extremely Small Hartley Neural Operator for Efficient and Resolution-Robust 3D Image Segmentation2025-07-104KAgent: Agentic Any Image to 4K Super-Resolution2025-07-09Speak2Sign3D: A Multi-modal Pipeline for English Speech to American Sign Language Animation2025-07-09