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Exploiting Sub-region Deep Features for Specific Action Recognition in Combat Sports Video

机译:利用分区深层特征进行战斗运动视频的特定动作识别

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Current research works for human action recognition in videos mainly focused on the case in different types of videos, that is coarse recognition. However, for recognizing specific actions of one object of interest, these methods may fail to recognize, especially if the video contains multiple moving objects with different actions. In this paper, we proposed a novel method for specific player action recognition in combat sports video. Object tracking with body segmentation are used to generate sub-frame sequences. Action recognition is achieved by training a new three-stream Convolutional Neural Networks (CNNs) model, where the network inputs are horizontal components of optical flow, single sub-frame and vertical components of optical flow, respectively. And the network fusion is applied at both convolutional and softmax layers. Extensive experiments on real broadcast combat sports videos are provided to show the advantages and effectiveness of the proposed method.
机译:当前针对视频中的人类动作识别的研究主要集中在不同类型视频中的情况,即粗略识别。但是,为了识别一个感兴趣的对象的特定动作,这些方法可能无法识别,尤其是在视频包含具有不同动作的多个运动对象的情况下。在本文中,我们提出了一种用于格斗运动视频中特定运动员动作识别的新方法。具有身体分割的对象跟踪用于生成子帧序列。通过训练新的三流卷积神经网络(CNN)模型来实现动作识别,其中网络输入分别是光流的水平分量,光流的单个子帧和垂直分量。网络融合同时应用于卷积层和softmax层。通过对实况转播体育视频进行大量实验,证明了该方法的优越性和有效性。

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