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Occlusion-Aware Motion Layer Extraction Under Large Interframe Motions

机译:大帧间运动下的遮挡感知运动层提取

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摘要

Extracting motion layers from videos is an important task for video representation, analysis, and compression. For videos with large interframe motions, motion layer extraction is challenging in two respects: the estimation of large disparity motions and the awareness of large occluded regions. In this paper, we propose an effective method for motion layer extraction under large disparity motions. To robustly estimate large displacement motions, we have developed an efficient voting-based method that estimates planar homographies from sparse feature matches. To handle occlusions, we first integrate color and motion consistency into a Markov random field framework to achieve per-pixel assignment with occlusion detection. Then, we perform motion-color segmentation and an earth mover's distance-based comparison to determine motion labels for occluded pixels. Experimental results show that our proposed method achieves good performance in automatically extracting multiple moving objects under large disparity motions while maintaining a low computational cost.
机译:从视频中提取运动层是视频表示,分析和压缩的重要任务。对于具有较大帧间运动的视频,运动层提取在两个方面都具有挑战性:大视差运动的估计和对大遮挡区域的感知。本文提出了一种有效的大视差运动下运动层提取方法。为了可靠地估计大位移运动,我们开发了一种基于投票的有效方法,该方法可以根据稀疏特征匹配来估计平面单应性。为了处理遮挡,我们首先将颜色和运动一致性集成到Markov随机场框架中,以通过遮挡检测实现每个像素的分配。然后,我们执行运动颜色分割和推土机的基于距离的比较,以确定被遮挡像素的运动标签。实验结果表明,该方法在大视差运动下自动提取多个运动物体的同时,保持了较低的计算成本,具有良好的性能。

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