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Autori principali: Liu, Shiyong, Li, Zhihao, Tang, Xiao, Liu, Jianzhuang
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2504.01298
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author Liu, Shiyong
Li, Zhihao
Tang, Xiao
Liu, Jianzhuang
author_facet Liu, Shiyong
Li, Zhihao
Tang, Xiao
Liu, Jianzhuang
contents Most model-based 3D hand pose and shape estimation methods directly regress the parametric model parameters from an image to obtain 3D joints under weak supervision. However, these methods involve solving a complex optimization problem with many local minima, making training difficult. To address this challenge, we propose learning direction-aware hybrid features (DaHyF) that fuse implicit image features and explicit 2D joint coordinate features. This fusion is enhanced by the pixel direction information in the camera coordinate system to estimate pose, shape, and camera viewpoint. Our method directly predicts 3D hand poses with DaHyF representation and reduces jittering during motion capture using prediction confidence based on contrastive learning. We evaluate our method on the FreiHAND dataset and show that it outperforms existing state-of-the-art methods by more than 33% in accuracy. DaHyF also achieves the top ranking on both the HO3Dv2 and HO3Dv3 leaderboards for the metric of Mean Joint Error (after scale and translation alignment). Compared to the second-best results, the largest improvement observed is 10%. We also demonstrate its effectiveness in real-time motion capture scenarios with hand position variability, occlusion, and motion blur.
format Preprint
id arxiv_https___arxiv_org_abs_2504_01298
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publishDate 2025
record_format arxiv
spellingShingle Direction-Aware Hybrid Representation Learning for 3D Hand Pose and Shape Estimation
Liu, Shiyong
Li, Zhihao
Tang, Xiao
Liu, Jianzhuang
Computer Vision and Pattern Recognition
Most model-based 3D hand pose and shape estimation methods directly regress the parametric model parameters from an image to obtain 3D joints under weak supervision. However, these methods involve solving a complex optimization problem with many local minima, making training difficult. To address this challenge, we propose learning direction-aware hybrid features (DaHyF) that fuse implicit image features and explicit 2D joint coordinate features. This fusion is enhanced by the pixel direction information in the camera coordinate system to estimate pose, shape, and camera viewpoint. Our method directly predicts 3D hand poses with DaHyF representation and reduces jittering during motion capture using prediction confidence based on contrastive learning. We evaluate our method on the FreiHAND dataset and show that it outperforms existing state-of-the-art methods by more than 33% in accuracy. DaHyF also achieves the top ranking on both the HO3Dv2 and HO3Dv3 leaderboards for the metric of Mean Joint Error (after scale and translation alignment). Compared to the second-best results, the largest improvement observed is 10%. We also demonstrate its effectiveness in real-time motion capture scenarios with hand position variability, occlusion, and motion blur.
title Direction-Aware Hybrid Representation Learning for 3D Hand Pose and Shape Estimation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.01298