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Long-Short Graph Memory Network for Skeleton-based Action Recognition

机译:基于骨架的动作识别的长短图记忆网络

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Current studies have shown the effectiveness of long short-term memory network (LSTM) for skeleton-based human action recognition in capturing temporal and spatial features of the skeleton sequence. Nevertheless, it still remains challenging for LSTM to extract the latent structural dependency among nodes. In this paper, we introduce a new long-short graph memory network (LSGM) to improve the capability of LSTM to model the skeleton sequence - a type of graph data. Our proposed LSGM can learn high-level temporal-spatial features end-to-end, enabling LSTM to extract the spatial information that is neglected but intrinsic to the skeleton graph data. To improve the discriminative ability of the temporal and spatial module, we use a calibration module termed as graph temporal-spatial calibration (GTSC) to calibrate the learned temporal-spatial features. By integrating the two modules into the same framework, we obtain a stronger generalization capability in processing dynamic graph data and achieve a significant performance improvement on the NTU and SYSU dataset. Experimental results have validated the effectiveness of our proposed LSGM+GTSC model in extracting temporal and spatial information from dynamic graph data.1
机译:当前的研究表明,长短期记忆网络(LSTM)对于基于骨骼的人类动作识别在捕获骨骼序列的时间和空间特征方面是有效的。然而,对于LSTM而言,提取节点之间潜在的结构依存关系仍然具有挑战性。在本文中,我们引入了一种新的长短图存储网络(LSGM),以提高LSTM对骨架序列(一种图形数据)进行建模的能力。我们提出的LSGM可以端到端地学习高级时空特征,从而使LSTM能够提取被忽略但对于骨架图数据而言是固有的空间信息。为了提高时空模块的判别能力,我们使用称为图时空校准(GTSC)的校准模块来校准学习的时空特征。通过将两个模块集成到同一框架中,我们在处理动态图形数据时获得了更强的泛化能力,并且在NTU和SYSU数据集上实现了显着的性能提升。实验结果验证了我们提出的LSGM + GTSC模型在从动态图数据中提取时间和空间信息的有效性。 1

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