SelfGCN: Graph Convolution Network With Self-Attention for Skeleton-Based Action Recognition

Zhize Wu;Pengpeng Sun;Xin Chen;Keke Tang;Tong Xu;Le Zou;Xiaofeng Wang;Ming Tan;Fan Cheng;Thomas Weise
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Abstract

Graph Convolutional Networks (GCNs) are widely used for skeleton-based action recognition and achieved remarkable performance. Due to the locality of graph convolution, GCNs can only utilize short-range node dependencies but fail to model long-range node relationships. In addition, existing graph convolution based methods normally use a uniform skeleton topology for all frames, which limits the ability of feature learning. To address these issues, we present the Graph Convolution Network with Self-Attention (SelfGCN), which consists of a mixing features across self-attention and graph convolution (MFSG) module and a temporal-specific spatial self-attention (TSSA) module. The MFSG module models local and global relationships between joints by executing graph convolution and self-attention branches in parallel. Its bi-directional interactive learning strategy utilizes complementary clues in the channel dimensions and the spatial dimensions across both of these branches. The TSSA module uses self-attention to learn the spatial relationships between joints of each frame in a skeleton sequence. It also models the unique spatial features of the single frames. We conduct extensive experiments on three popular benchmark datasets, NTU RGB+D, NTU RGB+D120, and Northwestern-UCLA. The results of the experiment demonstrate that our method achieves or exceeds the record accuracies on all three benchmarks. Our project website is available at https://github.com/SunPengP/SelfGCN .
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SelfGCN:基于骨架的动作识别图卷积网络(Graph Convolution Network with Self-Attention for Skeleton-based Action Recognition)。
图卷积网络(Graph Convolutional Networks,GCNs)被广泛用于基于骨骼的动作识别,并取得了显著的性能。由于图卷积的局部性,GCN 只能利用短程节点依赖关系,而无法模拟长程节点关系。此外,现有的基于图卷积的方法通常对所有帧使用统一的骨架拓扑结构,这限制了特征学习的能力。为了解决这些问题,我们提出了具有自注意力的图卷积网络(SelfGCN),它由一个跨自注意力和图卷积的混合特征(MFSG)模块和一个特定于时间的空间自注意力(TSSA)模块组成。MFSG 模块通过并行执行图卷积和自我注意分支来模拟关节之间的局部和全局关系。它的双向互动学习策略利用通道维度和空间维度的互补线索贯穿这两个分支。TSSA 模块利用自我注意来学习骨架序列中每个帧的关节之间的空间关系。它还对单帧的独特空间特征进行建模。我们在 NTU RGB+D、NTU RGB+D120 和 Northwestern-UCLA 这三个流行的基准数据集上进行了广泛的实验。实验结果表明,我们的方法在所有三个基准数据集上都达到或超过了创纪录的精确度。我们的项目网站是 https://github.com/SunPengP/SelfGCN。
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