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Weighting Video Information into a Multikernel SVM for Human Action Recognition

机译:将视频信息加权为人类行动识别的多时期SVM

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Action classification using a Bag of Words (BoW) representation has shown computational simplicity and good performance, but the increasing number of categories, including actions with high confusion, and the addition of significant contextual information has led most authors to focus their efforts on the combination of image descriptors. In this approach we code the action videos using a BoW representation with diverse image descriptors and introduce them to the optimal SVM kernel as a linear combination of learning weighted single kernels. Experiments have been carried out on the action database HMDB and the upturn achieved with our approach is much better than the state of the art, reaching an improvement of 14.63% of accuracy.
机译:使用一袋单词(弓)表示的行动分类显示了计算简单和良好的性能,而是越来越多的类别,包括高困难的行为,并且增加了重要的语境信息,使大多数作者带来了他们的努力图像描述符。在这种方法中,我们使用具有不同图像描述符的弓形表示来编码动作视频,并将它们引入最佳的SVM内核作为学习加权单内核的线性组合。实验已经在行动数据库中进行了HMDB,并通过我们的方法实现的上升性远远优于最先进的技术,提高了14.63%的准确性。

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