In this paper, we propose a novel method for representation and classification of two-person interactions from 3D skeleton sequences. The key idea of our approach is to use Gaussian distributions to capture statistics on R n and those on the space of symmetric positive definite (SPD) matrices. The main challenge is how to parametrize those distributions. Towards this end, we develop methods for embedding Gaussian distributions in matrix groups based on the theory of Lie groups and Riemannian symmetric spaces. Our method relies on the Riemannian geometry of the underlying manifolds and has the advantage of encoding high-order statistics from 3D joint positions. We show that the proposed method achieves competitive results in two-person interaction recognition on three benchmarks for 3D human activity understanding.
翻译:在本文中,我们提出了一个新的3D骨骼序列中两人互动的表述和分类方法。我们方法的关键思想是使用高斯分布法来捕捉关于Rn和对称正确定矩阵空间的统计数据。主要的挑战是如何对准这些分布。为此,我们根据利伊集团和里伊曼对称空间的理论,制定将高斯分布在矩阵组中的方法。我们的方法依靠赖伊曼对基管的几何方法,并具有从3D联合位置对高阶统计进行编码的优势。我们表明,拟议方法在承认3D人类活动理解的三项基准方面,在两人互动中取得了竞争结果。