2024
DOI: 10.3390/app14093578
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A Normalization Strategy for Weakly Supervised 3D Hand Pose Estimation

Zizhao Guo,
Jinkai Li,
Jiyong Tan

Abstract: The effectiveness of deep neural network models is intricately tied to the distribution of training data. However, in pose estimation, potential discrepancies in root joint positions and inherent variability in biomechanical features across datasets are often overlooked in current training strategies. To address these challenges, a novel Hand Pose Biomechanical Model (HPBM) is developed. In contrast to the traditional 3D coordinate-encoded pose, it provides a more intuitive depiction of the anatomical characte… Show more

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