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Progressive Relation Learning for Group Activity Recognition

机译:团体关系识别的渐进式关系学习

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Group activities usually involve spatio-temporal dynamics among many interactive individuals, while only a few participants at several key frames essentially define the activity. Therefore, effectively modeling the group-relevant and suppressing the irrelevant actions (and interactions) are vital for group activity recognition. In this paper, we propose a novel method based on deep reinforcement learning to progressively refine the low-level features and high-level relations of group activities. Firstly, we construct a semantic relation graph (SRG) to explicitly model the relations among persons. Then, two agents adopting policy according to two Markov decision processes are applied to progressively refine the SRG. Specifically, one feature-distilling (FD) agent in the discrete action space refines the low-level spatio-temporal features by distilling the most informative frames. Another relation-gating (RG) agent in continuous action space adjusts the high-level semantic graph to pay more attention to group-relevant relations. The SRG, FD agent, and RG agent are optimized alternately to mutually boost the performance of each other. Extensive experiments on two widely used benchmarks demonstrate the effectiveness and superiority of the proposed approach.
机译:小组活动通常涉及许多互动性的时空动态,而几个关键帧只有几个参与者基本上定义了活动。因此,有效地建模群体相关和抑制不相关的动作(和相互作用)对于组活动识别至关重要。在本文中,我们提出了一种基于深度加强学习的新方法,以逐步优化小组活动的低级特征和高层关系。首先,我们构建一个语义关系图(SRG)以显式模拟人群之间的关系。然后,适用于根据两个马尔可夫决策过程采用策略的两个代理程序逐步细化SRG。具体地,在离散作用空间中的一个特征蒸馏(FD)代理通过蒸馏最具信息帧来改进低级时空特征。在连续动作空间中的另一个关系(RG)代理调整了高级语义图,以更加关注群体相关关系。 SRG,FD代理和RG代理商是交替进行优化的,以相互提高彼此的性能。两个广泛使用的基准的广泛实验证明了所提出的方法的有效性和优越性。

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