HYRE: Hybrid Regressor for 3D Human Pose and Shape Estimation

Wenhao Li;Mengyuan Liu;Hong Liu;Bin Ren;Xia Li;Yingxuan You;Nicu Sebe
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Abstract

Regression-based 3D human pose and shape estimation often fall into one of two different paradigms. Parametric approaches, which regress the parameters of a human body model, tend to produce physically plausible but image-mesh misalignment results. In contrast, non-parametric approaches directly regress human mesh vertices, resulting in pixel-aligned but unreasonable predictions. In this paper, we consider these two paradigms together for a better overall estimation. To this end, we propose a novel HYbrid REgressor (HYRE) that greatly benefits from the joint learning of both paradigms. The core of our HYRE is a hybrid intermediary across paradigms that provides complementary clues to each paradigm at the shared feature level and fuses their results at the part-based decision level, thereby bridging the gap between the two. We demonstrate the effectiveness of the proposed method through both quantitative and qualitative experimental analyses, resulting in improvements for each approach and ultimately leading to better hybrid results. Our experiments show that HYRE outperforms previous methods on challenging 3D human pose and shape benchmarks.
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HYRE:用于三维人体姿态和形状估计的混合回归器
基于回归的三维人体姿态和形状估计通常属于两种不同的范式之一。参数化方法回归人体模型的参数,往往会产生物理上合理但图像网格不对齐的结果。相比之下,非参数方法直接回归人类网格顶点,导致像素对齐但不合理的预测。在本文中,我们一起考虑这两种范式,以获得更好的总体估计。为此,我们提出了一种新的混合回归器(HYRE),它极大地受益于两种范式的联合学习。我们的HYRE的核心是跨范式的混合中介,它在共享特征级别为每个范式提供互补的线索,并在基于部件的决策级别融合它们的结果,从而弥合两者之间的差距。我们通过定量和定性实验分析证明了所提出方法的有效性,从而改进了每种方法,并最终获得了更好的混合结果。我们的实验表明,HYRE在挑战3D人体姿势和形状基准方面优于以前的方法。
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