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Graph Convolutional Hourglass Networks for Skeleton-Based Action Recognition

机译:图形卷积沙漏网络,基于骨架的动作识别

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Graph convolution networks (GCNs) have become the mainstream framework for the skeleton-based action recognition task, since the skeleton representation of human action can be naturally modeled by the graph structure. Generally, most of the existing GCN based models extract and aggregate skeleton features by exploiting single-scale joint information, while neglecting the valuable multi-scale information such as part and body features in the skeleton. To address this issue, we propose a novel Graph Convolutional Hourglass Network (GCHN) model, which is scalable by stacking several basic modules of Graph Convolutional Hourglass Block (GCHB). Each GCHB module consists of the sequential operations of graph convolution, graph pooling and graph unpooling, which can promote the interaction of multi-scale information in the skeleton and effectively improve the recognition performance. Extensive experiments on the challenging NTU-RGB+D and Kinetics-Skeleton datasets demonstrate that the proposed GCHN model achieves state-of-the-art performance.
机译:图表卷积网络(GCNS)已成为基于骨架的动作识别任务的主流框架,因为人类动作的骨架表示可以通过图形结构自然地建模。通常,大多数基于GCN的模型通过利用单尺度联合信息提取和聚合骨架特征,同时忽略了诸如骨骼中的零件和身体特征的有价值的多尺度信息。为了解决这个问题,我们提出了一种新颖的图表卷积沙漏网络(GCHN)模型,它是通过堆叠图表卷积沙漏块(GCHB)的几个基本模块来缩放。每个GCHB模块都包括图形卷积的顺序操作,图形池和图形未降级,可以促进骨架中的多尺度信息的交互,有效地提高识别性能。关于挑战的NTU-RGB + D和动力学 - 骨架数据集的大量实验表明,所提出的GCHN模型实现了最先进的性能。

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