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Vote Distribution Model for Hough-Based Action Detection

机译:基于霍夫动作检测的投票分配模型

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Hough-based voting approaches have been widely used to solve many detection problems such as object and action detection. These approaches for action detection cast votes for action classes and positions based on the local spatio-temporal features of given videos. The voting process of each local feature is performed independently of the other local features. This independence enables the method to be robust to occlusions because votes based on visible local features are not influenced by occluded local features. However, such independence makes discrimination of similar motions between different classes difficult and causes the method to cast many false votes. We propose a novel Hough-based action detection method to overcome the problem of false votes. The false votes do not occur randomly such that they depend on relevant action classes. We introduce vote distributions, which represent the number of votes for each action class. We assume that the distribution of false votes include important information necessary to improving action detection. These distributions are used to build a model that represents the characteristics of Hough voting that include false votes. The method estimates the likelihood using the model and reduces the influence of false votes. In experiments, we confirmed that the proposed method reduces false positive detection and improves action detection accuracy when using the IXMAS dataset and the UT-Interaction dataset.
机译:基于霍夫的投票方法已广泛用于解决许多检测问题,例如对象和动作检测。这些用于动作检测的方法基于给定视频的本地时空特征为动作类别和位置投票。每个本地功能的表决过程独立于其他本地功能执行。这种独立性使该方法对于遮挡具有鲁棒性,因为基于可见局部特征的投票不受遮挡局部特征的影响。然而,这种独立性使得区分不同阶级之间的类似动作变得困难,并且导致该方法投出许多错误的票。我们提出了一种新的基于霍夫的动作检测方法,以克服虚假投票的问题。错误的投票不会随机发生,因此取决于相关的行动类别。我们介绍投票分配,代表每个动作类别的投票数。我们假设虚假选票的分配包括改善行动检测所必需的重要信息。这些分布用于构建一个模型,该模型表示包括虚假投票在内的霍夫投票的特征。该方法使用模型估计可能性,并减少虚假投票的影响。在实验中,我们证实了该方法在使用IXMAS数据集和UT-Interaction数据集时,减少了误报检测并提高了动作检测的准确性。

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