RPAN: An End-to-End Recurrent Pose-Attention Network for Action Recognition in Videos

Wenbin Du, Yali Wang, Y. Qiao
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引用次数: 149

Abstract

Recent studies demonstrate the effectiveness of Recurrent Neural Networks (RNNs) for action recognition in videos. However, previous works mainly utilize video-level category as supervision to train RNNs, which may prohibit RNNs to learn complex motion structures along time. In this paper, we propose a recurrent pose-attention network (RPAN) to address this challenge, where we introduce a novel pose-attention mechanism to adaptively learn pose-related features at every time-step action prediction of RNNs. More specifically, we make three main contributions in this paper. Firstly, unlike previous works on pose-related action recognition, our RPAN is an end-toend recurrent network which can exploit important spatialtemporal evolutions of human pose to assist action recognition in a unified framework. Secondly, instead of learning individual human-joint features separately, our poseattention mechanism learns robust human-part features by sharing attention parameters partially on the semanticallyrelated human joints. These human-part features are then fed into the human-part pooling layer to construct a highlydiscriminative pose-related representation for temporal action modeling. Thirdly, one important byproduct of our RPAN is pose estimation in videos, which can be used for coarse pose annotation in action videos. We evaluate the proposed RPAN quantitatively and qualitatively on two popular benchmarks, i.e., Sub-JHMDB and PennAction. Experimental results show that RPAN outperforms the recent state-of-the-art methods on these challenging datasets.
RPAN:一种用于视频动作识别的端到端递归姿态-注意网络
最近的研究证明了递归神经网络(RNNs)在视频动作识别中的有效性。然而,以往的工作主要是利用视频级别的类别作为监督来训练rnn,这可能会阻碍rnn随着时间的推移学习复杂的运动结构。在本文中,我们提出了一个循环姿态注意网络(RPAN)来解决这一挑战,在rnn的每一个时间步动作预测中,我们引入了一种新的姿态注意机制来自适应地学习姿态相关特征。更具体地说,我们在本文中做出了三个主要贡献。首先,与先前的姿势相关动作识别工作不同,我们的RPAN是一个端到端的循环网络,它可以利用人体姿势的重要时空演变来协助在统一框架下的动作识别。其次,我们的poseattention机制不是单独学习单个人体关节特征,而是通过在语义相关的人体关节上部分共享注意参数来学习鲁棒的人体部位特征。然后将这些人体部位特征输入到人体部位池化层中,以构建一个高度判别的姿势相关表示,用于时间动作建模。第三,我们的RPAN的一个重要副产品是视频中的姿态估计,它可以用于动作视频中的粗姿态标注。我们在两个流行的基准(即Sub-JHMDB和PennAction)上定量和定性地评估了拟议的RPAN。实验结果表明,在这些具有挑战性的数据集上,RPAN优于最近最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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