Background subtraction via coherent trajectory decomposition

Zhixiang Ren, L. Chia, D. Rajan, Shenghua Gao
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引用次数: 6

Abstract

Background subtraction, the task to detect moving objects in a scene, is an important step in video analysis. In this paper, we propose an efficient background subtraction method based on coherent trajectory decomposition. We assume that the trajectories from background lie in a low-rank subspace, and foreground trajectories are sparse outliers in this background subspace. Meanwhile, the Markov Random Field (MRF) is used to encode the spatial coherency and trajectory consistency. With the low-rank decomposition and the MRF, our method can better handle videos with moving camera and obtain coherent foreground. Experimental results on a video dataset show our method achieves very competitive performance.
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通过相干轨迹分解进行背景减法
背景减法是视频分析中的一个重要步骤,其任务是检测场景中的运动物体。本文提出了一种基于相干轨迹分解的高效背景减法。我们假设来自背景的轨迹位于低秩子空间中,前景轨迹是该背景子空间中的稀疏离群值。同时,利用马尔可夫随机场(MRF)对空间相干性和轨迹一致性进行编码。通过低秩分解和MRF,该方法可以更好地处理运动摄像机视频,获得连贯的前景。在一个视频数据集上的实验结果表明,我们的方法取得了很好的性能。
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