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Deep Stacked Bidirectional LSTM Neural Network for Skeleton-Based Action Recognition

机译:基于骨架动作识别的深层堆叠双向LSTM神经网络

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Skeleton-based action recognition has made great progress recently. However, many problems still remain unsolved. For example, the representations of skeleton sequences learned by most of the existing methods lack spatial structure information and detailed temporal dynamics features. To this end, we propose a novel Deep Stacked Bidirectional LSTM Network (DSB-LSTM) for human action recognition from skeleton data. Specifically, we first exploit human body geometry to extract the skeletal modulus ratio features (MR) and the skeletal vector angle features (VA) from the skeletal data. Then, the DSB-LSTM is applied to learning both the spatial and temporal representation from MR features and VA features. This network not only leads to more powerful representation but also stronger generalization capability. We perform several experiments on the MSR Action3D dataset, Florence 3D dataset and UTKinect-Action dataset. And the results show that our approach outperforms the compared methods on all datasets, demonstrating the effectiveness of the DSB-LSTM.
机译:基于骨架的动作识别最近取得了很大进展。但是,许多问题仍然存在未解决。例如,大多数现有方法学到的骨架序列的表示缺乏空间结构信息和详细的时间动态特征。为此,我们提出了一种新的深层堆叠双向LSTM网络(DSB-LSTM),用于从骨架数据的人类行动识别。具体地,我们首先利用人体几何形状来提取骨骼模量比特征(MR)和骨骼矢量角度特征(VA)从骨架数据中。然后,将DSB-LSTM应用于从MR特征和VA功能的学习空间和时间表示。该网络不仅导致更强大的表示,而且呈现强大的概括能力。我们在MSR Action3D数据集,佛罗伦萨3D数据集和utkinect-Action DataSet上执行几个实验。结果表明,我们的方法优于所有数据集的比较方法,展示了DSB-LSTM的有效性。

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