Decanus to Legatus: Synthetic training for 2D-3D human pose lifting

Yue Zhu, David Picard
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引用次数: 0

Abstract

3D human pose estimation is a challenging task because of the difficulty to acquire ground-truth data outside of controlled environments. A number of further issues have been hindering progress in building a universal and robust model for this task, including domain gaps between different datasets, unseen actions between train and test datasets, various hardware settings and high cost of annotation, etc. In this paper, we propose an algorithm to generate infinite 3D synthetic human poses (Legatus) from a 3D pose distribution based on 10 initial handcrafted 3D poses (Decanus) during the training of a 2D to 3D human pose lifter neural network. Our results show that we can achieve 3D pose estimation performance comparable to methods using real data from specialized datasets but in a zero-shot setup, showing the generalization potential of our framework.
Decanus到Legatus: 2D-3D人体姿势提升的合成训练
三维人体姿态估计是一项具有挑战性的任务,因为很难获得受控环境之外的真实数据。一些进一步的问题阻碍了为这项任务建立一个通用和健壮的模型的进展,包括不同数据集之间的域差距,训练和测试数据集之间看不见的动作,各种硬件设置和高成本的注释等。在本文中,我们提出了一种算法,在2D到3D人体姿势提升神经网络的训练过程中,基于10个初始手工制作的3D姿势(Decanus),从3D姿势分布生成无限的3D合成人体姿势(Legatus)。我们的结果表明,我们可以实现与使用来自专门数据集的真实数据的方法相当的3D姿态估计性能,但在零射击设置中,显示了我们框架的泛化潜力。
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