A Novel Graph Representation for Skeleton-based Action Recognition

Tingwei Li, Ruiwen Zhang, Qing Li
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Abstract

Graph convolutional networks (GCNs) have been proven to be effective for processing structured data, so that it can effectively capture the features of related nodes and improve the performance of model. More attention is paid to employing GCN in Skeleton-Based action recognition. But there are some challenges with the existing methods based on GCNs. First, the consistency of temporal and spatial features is ignored due to extracting features node by node and frame by frame. We design a generic representation of skeleton sequences for action recognition and propose a novel model called Temporal Graph Networks (TGN), which can obtain spatiotemporal features simultaneously. Secondly, the adjacency matrix of graph describing the relation of joints are mostly depended on the physical connection between joints. We propose a multi-scale graph strategy to appropriately describe the relations between joints in skeleton graph, which adopts a full-scale graph, part-scale graph and core-scale graph to capture the local features of each joint and the contour features of important joints. Extensive experiments are conducted on two large datasets including NTU RGB+D and Kinetics Skeleton. And the experiments results show that TGN with our graph strategy outperforms other state-of-the-art methods.
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一种新的基于骨架的动作识别图表示方法
图卷积网络(Graph convolutional networks, GCNs)在结构化数据的处理上已经被证明是有效的,它可以有效地捕捉相关节点的特征,提高模型的性能。将GCN应用于基于骨骼的动作识别得到了更多的关注。但是现有的基于GCNs的方法存在一些挑战。首先,采用逐节点、逐帧提取特征的方法,忽略了时空特征的一致性;我们设计了一种用于动作识别的骨架序列的通用表示,并提出了一种可以同时获取时空特征的新模型——时间图网络(TGN)。其次,描述节点关系的图的邻接矩阵大多依赖于节点之间的物理连接。为了在骨架图中恰当地描述关节之间的关系,我们提出了一种多尺度图策略,该策略采用全尺度图、部分尺度图和核心尺度图来捕捉每个关节的局部特征和重要关节的轮廓特征。在NTU RGB+D和Kinetics Skeleton两个大型数据集上进行了广泛的实验。实验结果表明,基于我们的图策略的TGN优于其他最先进的方法。
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