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Improving human activity detection by combining multi-dimensional motion descriptors with boosting

机译:通过将多维运动描述符与Boosting相结合来改善人类活动检测

摘要

A new, combined human activity detection method is proposed. Our method is based on Efros et al.'s motion descriptors[2] and Ke et al.'s event detectors[3]. Since both methods use optical flow, it is easy to combine them. However, the computational cost of the training increases considerably because of the increased number of weak classifiers. We reduce this computational cost by extend Ke et al.'s weak classifiers to incorporate multi-dimensional features. The proposed method is applied to off-air tennis video data, and its performance is evaluated by comparison with the original two methods. Experimental results show that the performance of the proposed method is a good compromise in terms of detection rate and of computation time of testing and training. © 2006 IEEE.
机译:提出了一种新的组合的人类活动检测方法。我们的方法是基于Efros等人的运动描述符[2]和Ke等人的事件检测器[3]。由于两种方法都使用光流,因此很容易将它们组合在一起。然而,由于弱分类器的数量增加,训练的计算成本大大增加。通过扩展Ke等人的弱分类器以纳入多维特征,我们降低了计算成本。将该方法应用于空中网球视频数据,并通过与原始两种方法的比较来评估其性能。实验结果表明,该方法在检测率和测试与训练的计算时间上是一个很好的折衷方案。 ©2006 IEEE。

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