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Skeleton-Based Action Recognition With Gated Convolutional Neural Networks

机译:门控卷积神经网络的基于骨架的动作识别

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摘要

For skeleton-based action recognition, most of the existing works used recurrent neural networks. Using convolutional neural networks (CNNs) is another attractive solution considering their advantages in parallelization, effectiveness in feature learning, and model base sufficiency. Besides these, skeleton data are low-dimensional features. It is natural to arrange a sequence of skeleton features chronologically into an image, which retains the original information. Therefore, we solve the sequence learning problem as an image classification task using CNNs. For better learning ability, we build a classification network with stacked residual blocks and having a special design called linear skip gated connection which can benefit information propagation across multiple residual blocks. When arranging the coordinates of body joints in one frame into a skeleton feature, we systematically investigate the performance of part-based, chain-based, and traversal-based orders. Furthermore, a fully convolutional permutation network is designed to learn an optimized order for data rearrangement. Without any bells and whistles, our proposed model achieves state-of-the-art performance on two challenging benchmark datasets, outperforming existing methods significantly.
机译:对于基于骨骼的动作识别,大多数现有工作都使用递归神经网络。考虑到卷积神经网络在并行化方面的优势,特征学习的有效性以及模型库的充分性,使用卷积神经网络(CNN)是另一个有吸引力的解决方案。除此之外,骨架数据是低维特征。将一系列骨骼特征按时间顺序排列到图像中是很自然的,该图像保留了原始信息。因此,我们使用CNN解决序列学习问题作为图像分类任务。为了获得更好的学习能力,我们建立了一个具有堆叠残差块的分类网络,并进行了特殊设计,称为线性跳过门控连接,可以使信息跨多个残差块传播。将身体关节的坐标在一帧中排列成骨架特征时,我们系统地研究了基于零件,基于链和基于遍历的订单的性能。此外,设计了一个全卷积置换网络以学习数据重排的优化顺序。我们提出的模型在没有任何障碍的情况下,在两个具有挑战性的基准数据集上实现了最先进的性能,大大优于现有方法。

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