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Human Action Recognition based on GMM-UBM supervector using SVM with non-linear GMM KL and GUMI

机译:基于带有非线性GMM KL和GUMI的SVM的基于GMM-UBM超向量的人体动作识别

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In recent years, Human Action Recognition (HAR) has attracted much attention from the research community due to its challenges as well as wide applications. In this paper, we investigate GMM supervector based Universal Background Model (UBM) and Support Vector Machine (SVM) with dense trajectories and motion bound features for HAR system. A GMM supervector is obtained by adapting with UBM and cascading all the mean vector components. After that, supervectors are applied as input features to SVM classifier. Moreover, we also adopted two modified GMM KL and GUMI kernels in this research. Then we make a comparison and critical analysis of our method with previous systems. Experimental results demonstrate that the proposed approach performs more efficient than current systems.
机译:近年来,由于人类行为识别(HAR)的挑战以及广泛的应用,引起了研究界的广泛关注。在本文中,我们研究了基于GMM超向量的通用背景模型(UBM)和支持向量机(SVM),它们具有用于HAR系统的密集轨迹和运动绑定特征。通过匹配UBM并级联所有平均向量分量,可以获得GMM超向量。之后,将超向量用作SVM分类器的输入特征。此外,在本研究中,我们还采用了两种改进的GMM KL和GUMI内核。然后,我们对我们的方法与以前的系统进行了比较和批判性分析。实验结果表明,所提出的方法比当前系统更有效。

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