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3D Action Recognition Exploiting Hierarchical Deep Feature Fusion Model

机译:利用层次深度特征融合模型的3D动作识别

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Numerous existing handcrafted feature-based and conventional machine learning-based approaches cannot seize the intensive correlations of skeleton structure in the spatiotemporal dimension. On another hand, some modern methods exploiting Long Short Term Memory (LSTM) to learn temporal action attribute, which lack an efficient scheme of revealing high-level informative features. To handle the aforementioned issues, this research introduces a novel hierarchical deep feature fusion model for 3D skeleton-based human action recognition, in which the deep information for modeling human appearance and action dynamic is gained by Convolutional Neural Networks (CNNs). The deep features of geometrical joint distance and orientation are extracted via a multi-stream CNN architecture to uncovering the hidden correlations in both the spatial and temporal dimensions. The experimental results on the NTU RGB+D dataset demonstrates the superiority of the proposed fusion model against several recently deep learning (DL)-based action recognition approaches.
机译:现有的许多手工制作的基于特征的方法和基于常规机器学习的方法都无法抓住时空维度上骨架结构的紧密关联。另一方面,一些现代的利用长期短期记忆(LSTM)来学习时间动作属性的方法,缺乏揭示高级信息特征的有效方案。为了解决上述问题,本研究引入了一种新颖的基于3D骨骼的人类动作识别的分层深度特征融合模型,其中通过卷积神经网络(CNN)获得了用于建模人类外观和动作动态的深度信息。通过多流CNN架构提取几何关节距离和方向的深层特征,以揭示空间和时间维度上的隐藏关联。 NTU RGB + D数据集上的实验结果证明了所提出的融合模型相对于几种最近基于深度学习(DL)的动作识别方法的优越性。

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