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Foreground Segmentation Using Motion Vectors in Sports Video

机译:运动视频中使用运动矢量进行前景分割

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摘要

In this paper, we present an effective algorithm for foreground objects segmentation for sports video. This algorithm consists of three steps: low-level features extraction, camera motion estimate, and foreground object extraction. We employ a robust M-estimator to motion vectors fields to estimate global camera motion parameters based on a four-parameter camera motion model, followed by outliers analysis using robust weights instead of the residuals to extract foreground objects. Based on the fact that foreground objects' motion patterns are independent of the global motion model caused by camera motions such as pan, tilt, and zooming, we considers those macro-blocks as foreground, which corresponds to the outliers blocks during robust regression procedure. Experiments showed that the proposed algorithm can robustly extract foreground objects like tennis players and estimate camera motion parameters. Based on these results, high-level semantic video indexing such as event detection and sports video structure analysis can be greatly facilitated. Furthermore, basing the algorithm on compressed domain features can achieve great saving in computation.
机译:在本文中,我们提出了一种有效的运动视频前景对象分割算法。该算法包括三个步骤:低级特征提取,摄像机运动估计和前景对象提取。我们将鲁棒的M估计器应用于运动矢量字段,以基于四参数摄像机运动模型来估计全局摄像机运动参数,然后使用鲁棒权重而非残差进行离群值分析以提取前景对象。基于前景对象的运动模式独立于由摄像机运动(例如平移,倾斜和缩放)引起的全局运动模型这一事实,我们将这些宏块视为前景,它与鲁棒回归过程中的异常值块相对应。实验表明,该算法可以鲁棒地提取网球运动员等前景物体并估计摄像机运动参数。基于这些结果,可以大大促进高级语义视频索引,例如事件检测和体育视频结构分析。此外,将算法基于压缩域特征可以大大节省计算量。

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