Graph convolutional networks (GCNs) have been very successful in skeleton-based human action recognition where the sequence of skeletons is modeled as a graph. However, most of the GCN-based methods in this area train a deep feed-forward network with a fixed topology that leads to high computational complexity and restricts their application in low computation scenarios. In this paper, we propose a method to automatically find a compact and problem-specific topology for spatio-temporal graph convolutional networks in a progressive manner. Experimental results on two widely used datasets for skeleton-based human action recognition indicate that the proposed method has competitive or even better classification performance compared to the state-of-the-art methods with much lower computational complexity.
翻译:图形革命网络(GCNs)在以骨骼为基础的人类行动认知方面非常成功,骨骼序列以图表为模型。然而,这一领域的大多数基于GCN的方法都训练了一个具有固定地貌学的深线进化前网络,从而导致计算复杂性高,并限制其在低度计算情景中的应用。在本文中,我们提出了一个方法,以渐进的方式自动找到一个紧凑和有问题的特定地形,用于空间-时钟图组合网络。两种广泛使用的人类行动认知数据集的实验结果表明,与计算复杂性低得多的先进方法相比,拟议的方法具有竞争性,甚至更好的分类性能。