基于运动熵的运动视频事件分割

Chen-Yu Chen, Jia-Ching Wang, Jhing-Fa Wang, Y. Hu
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引用次数: 10

摘要

提出了一种基于事件的体育视频分割方法。采用运动熵准则来表征视频序列的各个帧中相关物体运动的强度水平。然后使用基于均方差误差模型的时间序列变化点检测算法,用分段线性模型逼近得到运动熵曲线。观察到,有趣的体育赛事与分段线性模型的特定模式相关。然后根据这些观察得出一组经验推导的分类规则。将这些规则应用到运动熵曲线中,可以将相应的视频序列分割成单独的部分,每个部分由语义相关的事件组成。该方法在包括篮球、足球和网球在内的6个小时的体育视频上进行了测试。实验结果良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event-Based Segmentation of Sports Video Using Motion Entropy
An event-based segmentation method for sports videos is presented. A motion entropy criterion is employed to characterize the level of intensity of relevant object motion in individual frames of a video sequence. The resulting motion entropy curve then is approximated with a piece-wise linear model using a homoscedastic error model based time series change point detection algorithm. It is observed that interesting sports events are correlated with specific patterns of the piece-wise linear model. A set of empirically derived classification rules then is derived based on these observations. Application of these rules to the motion entropy curve leads to this motion entropy curve, one is able to segment the corresponding video sequence into individual sections, each consisting of a semantically relevant event. The proposed method is tested on six hours of sports videos including basketball, soccer and tennis. Excellent experimental results are observed.
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