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首页> 外文期刊>Journal of visual communication & image representation >Learning attentive dynamic maps (ADMs) for Understanding Human Actions
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Learning attentive dynamic maps (ADMs) for Understanding Human Actions

机译:学习专注的动态图(ADM)以了解人类行为

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This paper presents a novel end-to-end trainable deep architecture to learn an attentive dynamic map (ADM) for understanding human motion from skeleton data. An ADM intends not only to capture the dynamic information over the period of human motion, referred to as an action, as the conventional dynamic image/map does, but also to embed in it the spatio-temporal attention for the classification of the action. Specifically, skeleton sequences are encoded into sequences of Skeleton Joint Maps (STMs), each STM encodes both joint location (i.e. spatial) and relative temporal order (i.e. temporal) of the skeleton in the sequence. The STM sequences are fed into a customized 3DConvLSTM to explore the local and global spatio-temporal information from which a dynamic map is learned. This dynamic map is subsequently used to learn the spatio-temporal attention at each time-stamp. ADMs are then generated from the learned attention weights and all hidden states of the 3DConvLSTM and used for action classification. The proposed method achieved competitive performance compared with the state-of-the-art results on the Large Scale Combined dataset. MSRC-12 dataset and NTU RGB+D dataset. (C) 2019 Elsevier Inc. All rights reserved.
机译:本文提出了一种新颖的端到端可训练深度架构,以学习一种细心动态图(ADM),以从骨骼数据中了解人体运动。 ADM不仅打算像传统的动态图像/地图那样捕获人类运动期间(称为动作)的动态信息,而且还希望将时空注意力嵌入动作分类中。具体地,将骨架序列编码为骨架联合图(STM)序列,每个STM编码序列中骨架的联合位置(即空间)和相对时间顺序(即时间)。将STM序列输入到定制的3DConvLSTM中,以探索可从中获悉动态图的局部和全局时空信息。该动态图随后用于学习每个时间戳的时空注意。然后,根据学习到的注意力权重和3DConvLSTM的所有隐藏状态生成ADM,并将其用于操作分类。与大型组合数据集上的最新结果相比,该方法具有竞争优势。 MSRC-12数据集和NTU RGB + D数据集。 (C)2019 Elsevier Inc.保留所有权利。

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