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Instance-Aware Detailed Action Labeling in Videos

机译:视频中的实例感知详细操作标签

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We address the problem of detailed sequence labeling of complex activities in videos, which aims to assign an action label to every frame. Previous work typically focus on predicting action class labels for each frame in a sequence without reasoning action instances. However, such category-level labeling is inefficient in encoding the global constraints at the action instance level and tends to produce inconsistent results. In this work we consider a fusion approach that exploits the synergy between action detection and sequence labeling for complex activities. To this end, we propose an instance-aware sequence labeling method that utilizes the cues from action instance detection. In particular, we design an LSTM-based fusion network that integrates framewise action labeling and action instance prediction to produce a final consistent labeling. To evaluate our method, we create a large-scale RGBD video dataset on gym activities for sequence labeling and action detection called GADD. The experimental results on GADD dataset show that our method outperforms all the state-of-the-art methods consistently in terms of labeling accuracy.
机译:我们解决了视频中复杂活动的详细序列标签问题,该问题旨在为每个帧分配一个动作标签。先前的工作通常着重于预测序列中每个帧的动作类标签,而无需推理动作实例。但是,此类类别级别的标签在动作实例级别对全局约束进行编码时效率低下,并且往往会产生不一致的结果。在这项工作中,我们考虑一种融合方法,该方法利用动作检测和序列标记之间的协同作用来完成复杂的活动。为此,我们提出了一种实例感知序列标记方法,该方法利用了来自动作实例检测的线索。特别是,我们设计了一个基于LSTM的融合网络,该网络融合了框架式动作标签和动作实例预测,以产生最终的一致标签。为了评估我们的方法,我们在体育馆活动上创建了一个大型RGBD视频数据集,用于序列标记和动作检测(称为GADD)。 GADD数据集上的实验结果表明,我们的方法在标记精度方面始终优于所有最新方法。

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