基于特征袋和骨架图的人类攻击行为识别新范式

A. Ouanane, A. Serir
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引用次数: 4

摘要

人体动作识别是近十年来计算机视觉研究的一个活跃领域。它包括自动识别人类行为并解释他们的行为。在本文中,我们提出了一种基于两个模型的新的人类攻击行为识别范式。第一种方法是基于形状表示的特征袋方法,第二种方法是基于骨架图来提取运动特征。在原子作用的每一帧进行两个模型的特征关联。因此,使用k-means等离线聚类算法为每个特征关联向量分配适当的标签。利用一组标签作为最优码本,对序列视频进行特征向量提取。然后应用支持向量机分类器识别攻击行为。该算法能够在动态环境等极具挑战性的情况下进行鲁棒识别,并能很好地解决自遮挡问题。在KTH数据集动作上进行的实验结果表明,该方法的识别率达到了96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New paradigm for recognition of aggressive human behavior based on bag-of-features and skeleton graph
The human action recognition is an active field on computer vision in the last decade. It consists to automatically identify of human behavior and interpreting their actions. In this paper, we propose a new paradigm to recognize aggressive human behavior based on two models. The first method is based on shape representation by using bag-of-features approach and the second method is based on the skeleton graph in order to extract motion features. The feature association of the two models is carried out at each frame of atomic action. Thus, an appropriate label is assigned to each feature association vector by using an offline clustering algorithm such as k-means. The obtained feature vectors are conducted from a sequence video by using a set of labels as an optimum codebook. The aggressive behaviors are then recognized by applying a support vector machine classifier. The proposed algorithm enables robust recognition in very challenging situations such as dynamic environment and deals well with self-occlusion problem. Experimental results are conducted on KTH dataset actions and demonstrate that the proposed approach provide significant recognition rate of 96%.
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