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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >TVENet: Temporal variance embedding network for fine-grained action representation
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TVENet: Temporal variance embedding network for fine-grained action representation

机译:TVENET:用于细粒度动作表示的时间方差嵌入网络

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摘要

With the breakthroughs in general action understanding, it has become an inevitable trend to analyze the actions in finer granularity. However, related researches have been largely hindered by the lack of fine-grained datasets and the difficulty of capturing subtle differences between fine-grained actions that are highly similar overall. In this paper, we address the above challenges by constructing a fine-grained action dataset, i.e., Figure Skating, which can be used for end-to-end network training and presenting a framework for the joint optimization of classification and similarity constraints. We propose to incorporate the triplet loss into the training of Convolutional Neural Network, which learns a mapping from fine-grained actions to a compact Euclidean space where distances directly correspond to a measure of action similarity. Triplet loss compels actions of distinct classes to have larger distances than actions of the same class. Besides, to boost the discrimination of the fine-grained actions, we further propose a temporal variance embedding network (TVENet) embedding temporal context variances into the feature embeddings during the joint network training. The experimental results on Figure Skating dataset, HMDB51 dataset as well as UCF101 dataset demonstrate the effectiveness of TVENet representation for fine-grained action search. (C) 2020 Elsevier Ltd. All rights reserved.
机译:随着一般行动理解的突破,它已成为分析更精细粒度的行为的必然趋势。然而,相关的研究在很大程度上阻碍了缺乏细粒度的数据集,并且难以捕获整体高度相似的细粒度动作之间的微妙差异。在本文中,我们通过构建细粒度的动作数据集来解决上述挑战,即图形滑冰,其可用于端到端网络训练,并为分类和相似性限制提供联合优化的框架。我们建议将三联损失纳入卷积神经网络的训练,这将从微粒作用的映射到紧凑的欧几里德空间,其中距离直接对应于作用相似度的量度。三态损耗将不同类的动作迫使具有比同一类的动作更大的距离。此外,为了提高细粒度行动的歧视,我们进一步提出了在联合网络训练期间将时间方差嵌入网络(TVENET)嵌入了时间上下文差异嵌入特征嵌入。花样滑冰数据集,HMDB51数据集以及UCF101数据集的实验结果证明了TVENET表示对细粒度动作搜索的有效性。 (c)2020 elestvier有限公司保留所有权利。

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