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Energy-based model of least squares twin Support Vector Machines for human action recognition

机译:基于能量的最小二乘双支持向量机人体动作识别模型

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Human action recognition is an active field of research in pattern recognition and computer vision. For this purpose, several approaches based on bag-of-word features and support vector machine (SVM) classifiers have been proposed. Multi-category classifications of human actions are usually performed by solving many one-versus-rest binary SVM classification tasks. However, it leads to the class imbalance problem. Furthermore, because of environmental problems and intrinsic noise of spatio-temporal features, videos of similar actions may suffer from huge intra-class variations. In this paper, we address these problems by introducing the Energy-based Least Square Twin Support Vector Machine (ELS-TSVM) algorithm. ELS-TSVM is an extended LS-TSVM classifier that performs classification by using two nonparallel hyperplanes instead of a single hyperplane, as used in the conventional SVM. ELS-TSVM not only could consider the different energy for each class but also it handles unbalanced datasets' problem. We investigate the performance of the proposed methods on Weizmann, KTH, Hollywood, and ten UCI datasets which have been extensively studied by research groups. Experimental results show the effectiveness and validity of noise handling in human action and UCI datasets. ELS-TSVM has also obtained superior accuracy compared with the related methods while its time complexity is remarkably lower than SVM.
机译:人体动作识别是模式识别和计算机视觉研究的活跃领域。为此,已经提出了几种基于词袋特征和支持向量机(SVM)分类器的方法。通常,人类动作的多类别分类是通过解决许多一对多的二进制SVM分类任务来完成的。但是,这会导致班级不平衡的问题。此外,由于环境问题和时空特征的固有噪声,类似动作的视频可能会遭受巨大的类内变化。在本文中,我们通过介绍基于能量的最小二乘支持向量机(ELS-TSVM)算法来解决这些问题。 ELS-TSVM是扩展的LS-TSVM分类器,它通过使用两个不平行的超平面而不是传统SVM中使用的单个超平面来执行分类。 ELS-TSVM不仅可以为每个类考虑不同的能量,而且可以处理不平衡数据集的问题。我们在Weizmann,KTH,Hollywood和十个UCI数据集上研究了所提出方法的性能,研究小组对此进行了广泛研究。实验结果证明了噪声处理在人类行为和UCI数据集中的有效性和有效性。与相关方法相比,ELS-TSVM还获得了更高的精度,同时其时间复杂度明显低于SVM。

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