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Structured Learning for Action Recognition in Videos

机译:视频中动作识别的结构化学习

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摘要

Actions in continuous videos are correlated and may have hierarchical relationships. Densely labeled datasets of complex videos have revealed the simultaneous occurrence of actions, but existing models fail to make use of the relationships to analyze actions in the context of videos and better understand complex videos. We propose a novel architecture consisting of a correlation learning and input synthesis (CoLIS) network, long short-term memory (LSTM), and a hierarchical classifier. First, the CoLIS network captures the correlation between features extracted from video sequences and pre-processes the input to the LSTM. Since the input becomes the weighted sum of multiple correlated features, it enhances the LSTM's ability to learn variable-length long-term temporal dependencies. Second, we design a hierarchical classifier which utilizes the simultaneous occurrence of general actions such as run and jump to refine the prediction on their correlated actions. Third, we use interleaved backpropagation through time for training. All these networks are fully differentiable so that they can be integrated for end-to-end learning. The results show that the proposed approach improves action recognition accuracy by 1.0% and 2.2% on single-labeled or densely labeled datasets respectively.
机译:连续视频中的动作是相关的,并且可能具有层次关系。带有复杂标签的复杂视频数据集揭示了动作的同时发生,但是现有模型无法利用这种关系来分析视频上下文中的动作并更好地理解复杂视频。我们提出了一种新颖的体系结构,该体系结构包括相关学习和输入合成(CoLIS)网络,长短期记忆(LSTM)和分层分类器。首先,CoLIS网络捕获从视频序列中提取的特征之间的相关性,并对LSTM的输入进行预处理。由于输入成为多个相关特征的加权总和,因此它增强了LSTM学习可变长度长期时间相关性的能力。其次,我们设计了一个分级分类器,该分类器利用同时发生的一般动作(例如奔跑和跳跃)来完善其相关动作的预测。第三,我们使用穿越时间的交错反向传播进行训练。所有这些网络都是完全可区分的,因此可以将它们集成为端到端学习。结果表明,该方法对单标签或密集标签数据集的动作识别准确率分别提高了1.0%和2.2%。

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