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View Adaptive Recurrent Neural Networks for High Performance Human Action Recognition from Skeleton Data

机译:查看自适应经常性神经网络,从骨架数据中获得高性能人类行动识别

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Skeleton-based human action recognition has recently attracted increasing attention due to the popularity of 3D skeleton data. One main challenge lies in the large view variations in captured human actions. We propose a novel view adaptation scheme to automatically regulate observation viewpoints during the occurrence of an action. Rather than re-positioning the skeletons based on a human defined prior criterion, we design a view adaptive recurrent neural network (RNN) with LSTM architecture, which enables the network itself to adapt to the most suitable observation viewpoints from end to end. Extensive experiment analyses show that the proposed view adaptive RNN model strives to (1) transform the skeletons of various views to much more consistent viewpoints and (2) maintain the continuity of the action rather than transforming every frame to the same position with the same body orientation. Our model achieves significant improvement over the state-of-the-art approaches on three benchmark datasets.
机译:由于3D骨架数据的普及,基于骨架的人类行动识别最近引起了越来越多的关注。一个主要挑战在于捕获人类行为的大型视野变化。我们提出了一种新颖的视图适应方案,在发生行动的发生过程中自动调节观察观点。不是基于人类定义的先前标准重新定位骨架,而是使用LSTM架构设计视图自适应经常性神经网络(RNN),这使得网络本身能够适应最适合最适合的观察视点。广泛的实验分析表明,所提出的视图自适应RNN模型攻击(1)将各种视图的骨架转换为更长一致的视点和(2)保持动作的连续性,而不是将每个框架转换到与同一主体相同的位置方向。我们的模型实现了在三个基准数据集上的最先进方法的重大改进。

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