基于视频全局-局部特征的人体动作识别研究

Miao Jin, Jun Zhang, Tianfu Huang, Zhiwei Guo, Xiwen Chen
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引用次数: 1

摘要

在人类行为识别的研究中,双流网络结构表现出优异的效果。针对两流网络的分支特征,提出了一种基于全局-局部特征的两流人类行为研究方法。该方法首先使用混合高斯背景建模方法提取轮廓特征作为全局轮廓特征,然后使用端到端可学习的无监督网络TV-Net生成光流运动特征作为网络输入,并使用异常网络作为特征生成网络,在不改变模型尺度的同时提高了精度。并对两流分支网络的输出进行融合分类,得到行为识别结果。该方法对全局特征和局部特征中包含的运动信息进行细化分类,降低了计算复杂度,对公共数据集和内部数据集都有很好的识别能力。
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Research on Human Action Recognition Based on Global-Local Features of Video
In the research of human behavior recognition, the two-stream network structure shows excellent results. Aiming at the branch feature of two-stream networks, this paper proposes a two-stream human behavior research method based on global-local features. This method first uses a mixture of Gaussian background modeling methods to extract silhouette features as global contour features, and then uses an end-to-end learnable unsupervised network TV-Net to generate optical flow motion features, which are used as the network input, and the Xception network is used as The feature generation network which does not change the model scale while improving the accuracy, and performs fusion classification on the output of the two-stream branch network to obtain the behavior recognition result. This method refines the motion information contained in the global and local features for classification, reduces the computational complexity, and shows a good level of recognition on both public and internal data sets.
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