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Sports Event Recognition Using Layered HMMS

机译:基于分层HMMS的体育赛事识别

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The recognition of events in video data is a subject of much current interest. In this paper, we address several issues related to this topic. The first one is overfitting when very large feature spaces are used and relatively small amounts of training data are available. The second is the use of a framework that can recognise events at different time scales, as standard hidden Markov model (HMM) do not model well long-term term temporal dependencies in the data. In this paper we propose a method combining layered HMMs and an unsupervised low level clustering of the features to address these issues. Experiments conducted on the recognition task of different events in 7 rugby games demonstrates the potential of our approach with respect to standard HMM techniques coupled with a feature size reduction technique. While the current focus of this work is on events in sports videos, we believe the techniques shown here are general enough to be applied to other sources of data
机译:视频数据中事件的识别是当前备受关注的主题。在本文中,我们解决了与此主题相关的几个问题。第一个是当使用非常大的特征空间并且可用相对少量的训练数据时过度拟合。第二个原因是使用可以识别不同时间范围内事件的框架,因为标准的隐马尔可夫模型(HMM)不能很好地模拟数据中的长期长期时间依赖性。在本文中,我们提出了一种结合分层HMM和特征的无监督低层聚类的方法来解决这些问题。在7项橄榄球比赛中,对不同事件的识别任务进行的实验证明了我们的方法相对于标准HMM技术以及特征尺寸缩减技术的潜力。尽管目前这项工作的重点是体育视频中的事件,但我们认为此处显示的技术已经足够通用,可以应用于其他数据源

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