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Robust Skeleton-based Action Recognition through Hierarchical Aggregation of Local and Global Spatio-temporal Features

机译:通过局部和全局时空特征的分层聚合进行基于骨骼的鲁棒动作识别

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Recognizing human actions based on 3D skeleton data, commonly referred to as 3D action recognition, is fast gaining interest from the scientific community recently, because this approach presents a robust, compact and a perspective-invariant representation of motion data. Recent attempts on this problem proposed the development of RNN-based learning methods to model the temporal dependency in the sequential data. In this paper, we extend this idea to a hierarchical spatio-temporal domains to exploit the local and global features embedded in the long skeleton sequence. We introduce a novel temporal-contextual recurrent layer to learn the local features from consecutive frames and then to aggregate the extracted features hierarchically, refining the sequence representation layer by layer. Our method achieves competitive performance on 3 popular benchmark datasets for 3D human action analysis.
机译:最近,基于3D骨骼数据的人类动作识别(通常称为3D动作识别)正迅速引起科学界的关注,因为这种方法呈现了运动数据的鲁棒,紧凑和透视不变的表示形式。关于此问题的最新尝试提出了基于RNN的学习方法的发展,该方法可以对顺序数据中的时间依赖性进行建模。在本文中,我们将此思想扩展到时空分层结构域,以利用长骨架序列中嵌入的局部和全局特征。我们引入了一种新颖的时间上下文循环层,以从连续帧中学习局部特征,然后对提取的特征进行分层聚合,从而逐层细化序列表示。我们的方法在3种流行的基准数据集上进行3D人体动作分析时,具有竞争优势。

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