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Action recognition by single stream convolutional neural networks: An approach using combined motion and static information

机译:单流卷积神经网络的动作识别:一种结合运动和静态信息的方法

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We investigate the problem of automatic action recognition and classification of videos. In this paper, we present a convolutional neural network architecture, which takes both motion and static information as inputs in a single stream. We show that the network is able to treat motion and static information as different feature maps and extract features off them, although stacked together. We trained and tested our network on Youtube dataset. Our network is able to surpass state-of-the-art hand-engineered feature methods. Furthermore, we also studied and compared the effect of providing static information to the network, in the task of action recognition. Our results justify the use of optic flows as the raw information of motion and also show the importance of static information, in the context of action recognition.
机译:我们研究视频的自动动作识别和分类问题。在本文中,我们提出了一种卷积神经网络体系结构,该体系结构将运动和静态信息都作为单个流中的输入。我们证明了该网络能够将运动和静态信息视为不同的特征图,并从它们中提取特征,尽管它们可以堆叠在一起。我们在Youtube数据集上训练并测试了我们的网络。我们的网络能够超越最新的手工设计特征方法。此外,我们还研究并比较了在动作识别任务中向网络提供静态信息的效果。我们的结果证明了使用光流作为运动的原始信息是正确的,并且在动作识别的背景下也表明了静态信息的重要性。

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