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Robust human action recognition scheme based on high-level feature fusion

机译:基于高级特征融合的鲁棒人体动作识别方案

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摘要

This paper presents our research on the human action recognition which employs different low-level local and spatio-temporal descriptors. The motivation is that these descriptors emphasize different aspects of actions. We investigate a generic approach applied to different periodic and non-periodic actions in the same framework defined by Weizmann and KTH datasets. So, we explore the notion of self-similarity descriptor over time. Then, non-linear x~2 kernel-based Support Vector Machines are used to perform classification. Individual actions are modeled independently. Finally, classifier outputs are fused using our proposed neural network based on Evidence theory method, trying to improve the classification rate by pushing classifiers into an optimized structure. Experimental results report the efficiency and the significant improvement of the proposed scheme.
机译:本文介绍了我们对人类行为识别的研究,该研究采用了不同的低层本地和时空描述符。动机是这些描述符强调动作的不同方面。我们研究了在Weizmann和KTH数据集定义的同一框架中应用于不同周期性和非周期性动作的通用方法。因此,随着时间的推移,我们探索了自相似描述符的概念。然后,基于非线性x〜2核的支持向量机进行分类。各个动作是独立建模的。最后,使用我们提出的基于证据理论方法的神经网络对分类器的输出进行融合,试图通过将分类器推入优化的结构来提高分类率。实验结果表明了该方案的有效性和重大改进。

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