Modeling the hand-object (HO) interaction not only requires estimation of the HO pose, but also pays attention to the contact due to their interaction. Significant progress has been made in estimating hand and object separately with deep learning methods, simultaneous HO pose estimation and contact modeling has not yet been fully explored. In this paper, we present an explicit contact representation namely Contact Potential Field (CPF), and a learning-fitting hybrid framework namely MIHO to Modeling the Interaction of Hand and Object. In CPF, we treat each contacting HO vertex pair as a spring-mass system. Hence the whole system forms a potential field with minimal elastic energy at the grasp position. Extensive experiments on the two commonly used benchmarks have demonstrated that our method can achieve state-of-the-art in several reconstruction metrics, and allow us to produce more physically plausible HO pose even when the ground-truth exhibits severe interpenetration or disjointedness. Our code is available at https://github.com/lixiny/CPF.
翻译:模拟手球(HO)互动不仅需要估计HO的外形,而且还要注意由于相互影响而产生的接触。在用深层次的学习方法分别估计手和对象方面已取得重大进展,同时HO的外形估计和接触模型尚未充分探讨。在本文中,我们提出了一个明确的接触代表,即接触潜在领域(CPF),以及一个适合学习的混合框架,即MIHO模拟手和物体的相互作用。在森林合作伙伴关系中,我们把每个接触HO的顶端对面作为弹簧质系统。因此,整个系统在掌握位置形成一个具有最小弹性能量的潜在领域。关于两种常用基准的广泛实验已经表明,我们的方法可以在几个重建指标中达到最新水平,并使我们能够产生更符合实际需要的HO型外形,即使地面的外壳显示出严重的内交或断交。我们的代码可以在https://github.com/lixin/CPFF中查阅。