基于摄像机运动估计的广播足球视频反击检测

M. Sigari, H. Soltanian-Zadeh, Vahid Kiani, Amid-Reza Pourreza
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引用次数: 9

摘要

本文提出了一种利用摄像机运动估计进行反击检测的新方法,并对几种检测反击事件的分类方法进行了评价。为此,将视频划分为多个镜头,并首先识别每个镜头的观看类型。然后,估计出相机在远视和中视拍摄时的相对平移幅度。根据镜头类型对每一帧的平移值进行加权后,将视频分割为运动段。然后,对运动片段进行细化,以达到更好的效果。最后,研究从连续运动片段中提取的特征进行反击检测。我们提出了两种反击检测方法:(1)基于规则(启发式规则)和(2)基于svm。实验表明,线性核和RBF核支持向量机分类器的分类效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Counterattack detection in broadcast soccer videos using camera motion estimation
This paper presents a new method for counterattack detection using estimated camera motion and evaluates some classification methods to detect this event. To this end, video is partitioned to shots and view type of each shot is recognized first. Then, relative pan of the camera during far-view and medium-view shots is estimated. After weighting of pan value of each frame according to the type of shots, the video is partitioned to motion segments. Then, motion segments are refined to achieve better results. Finally, the features extracted from consecutive motion segments are investigated for counterattack detection. We propose two methods for counterattack detection: (1) rule-based (heuristic rules) and (2) SVM-based. Experiments show that the SVM classifier with linear or RBF kernel results in the best results.
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