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Dominant Sets-Based Action Recognition using Image Sequence Matching

机译:使用图像序列匹配的基于优势集的动作识别

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Action recognition is one of the most active research fields in computer vision. In this paper, we propose a novel method for classifying human actions in a series of image sequences containing certain actions. Human action in image sequences can be recognized by a time-varying contour of human body. We first extract shape context of each contour to form the feature space. Then the dominant sets approach is used for feature clustering and classification to obtain the labeled sequences. Finally, we use a smoothing algorithm upon the labeled sequences to recognize human actions. The proposed dominant sets-based approach has been tested in comparison to three classical methods: K-means, mean shift, and Fuzzy-Cmean. Experimental results demonstrate that the dominant sets-based approach achieves the best recognition performance. Moreover, our method is robust to non-rigid deformations, significant scale changes, high action irregularities, and low quality video.
机译:动作识别是计算机视觉中最活跃的研究领域之一。在本文中,我们提出了一种在一系列包含某些动作的图像序列中对人类动作进行分类的新颖方法。图像序列中的人类动作可以通过人体随时间变化的轮廓来识别。我们首先提取每个轮廓的形状上下文以形成特征空间。然后,将优势集方法用于特征聚类和分类以获得标记序列。最后,我们对标记的序列使用平滑算法来识别人类动作。与三种经典方法(K均值,均值漂移和模糊均值)相比,该基于优势集的方法已经过测试。实验结果表明,基于支配集的方法获得了最佳的识别性能。此外,我们的方法对于非刚性变形,重大比例变化,高动作不规则性和低质量视频具有鲁棒性。

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