Department of Computer Science and Operations Research, University of Montreal, Montreal, QC H3C 3J7, Canada.
Sensors (Basel). 2022 Mar 8;22(6):2091. doi: 10.3390/s22062091.
Human action recognition has been applied in many fields, such as video surveillance and human computer interaction, where it helps to improve performance. Numerous reviews of the literature have been done, but rarely have these reviews concentrated on skeleton-graph-based approaches. Connecting the skeleton joints as in the physical appearance can naturally generate a graph. This paper provides an up-to-date review for readers on skeleton graph-neural-network-based human action recognition. After analyzing previous related studies, a new taxonomy for skeleton-GNN-based methods is proposed according to their designs, and their merits and demerits are analyzed. In addition, the datasets and codes are discussed. Finally, future research directions are suggested.
人体动作识别已经被广泛应用于视频监控和人机交互等领域,能够提高这些领域的性能。目前已经有很多针对这一主题的文献综述,但很少有综述集中在基于骨架图的方法上。将骨骼关节连接起来就可以自然地生成一个图。本文为读者提供了一个基于骨架图神经网络的人体动作识别的最新综述。在分析了之前的相关研究之后,根据设计提出了一个基于骨架图神经网络方法的新分类法,并分析了它们的优缺点。此外,还讨论了数据集和代码。最后,提出了未来的研究方向。