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Learning representations from quadrilateral based geometric features for skeleton-based action recognition using LSTM networks

机译:基于四边形的几何特征的学习表示,使用LSTM网络的基于骨架的动作识别

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摘要

With the recent developments in sensor technology and pose estimation algorithms, skeleton based action recognition has become popular. Classical machine learning methods based on hand-crafted features fail on large scale datasets due to their limited representation power. Recently, recurrent neural networks (RNN) based methods focus on the temporal evolution of body joints and neglect the geometric relations between them. In this paper, we propose eleven quadrilaterals to capture the geometric relations among joints for action recognition. An end-to-end 3-layer Bi-LSTM network is designed as Base-Net to learn robust representations. We propose two subnets based on the Base-Net to extract discriminative spatio temporal features. Specifically, the first subnet (SQuadNet) uses four spatial features and the second one (TQuadNet) uses two temporal features. The empirical results on two benchmark datasets, NTU RGB+ D and UTD MHAD, show how our method achieves state of the art performance when compared to recent methods in the literature.
机译:随着最近传感器技术和姿势估计算法的发展,基于骨架的动作识别已经变得流行。由于其有限的表示电源,基于手工制作功能的古典机器学习方法失败。最近,经常性的神经网络(RNN)的方法侧重于身体关节的时间演变,忽视它们之间的几何关系。在本文中,我们提出了11个四边形来捕捉行动认可关节的几何关系。端到端的3层Bi-LSTM网络被设计为基网以学习鲁棒的表示。我们提出了基于基础网的两个子网,以提取鉴别性的时空时间特征。具体地,第一个子网(Squadnet)使用四个空间特征,第二个是一个(TQuadnet)使用两个时间特征。在两个基准数据集,NTU RGB + D和UTD MHAD上的经验结果显示了我们的方法与文献中最近的方法相比,我们的方法如何实现最新的性能。

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