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首页> 外文期刊>International journal of multimedia data engineering & management >Unsupervised Video Object Foreground Segmentation and Co-Localization by Combining Motion Boundaries and Actual Frame Edges
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Unsupervised Video Object Foreground Segmentation and Co-Localization by Combining Motion Boundaries and Actual Frame Edges

机译:通过组合运动边界和实际帧边缘,无监督视频对象前景分段和共定位

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摘要

In this article the authors proposed a fast and fully unsupervised approach for a foreground object co-localization and segmentation of unconstrained videos. This article first computes both the actual edges and motion boundaries of the video frames, and then aligns them by the proposed HOG affinity map approach. Then, by filling the occlusions generated by the aligned edges, the paper obtained more precise masks about the foreground object. With an accumulation process, these masks could be derived as the motion-based likelihood, which is used as a unary term in the proposed graph model. Another unary term is called color-based likelihood, which is computed by the color distribution of foreground and background. Experiment results shows the method is fast and effective to detect and segment foreground objects.
机译:在本文中,作者提出了一种快速和完全无监督的方法,可以进行前景对象共同定位和不约束视频的分割。本文首先计算视频帧的实际边缘和运动边界,然后通过所提出的猪关联地图方法对齐它们。然后,通过填充由对齐边缘产生的闭塞,该纸张获得了关于前景对象的更精确的掩模。通过累积过程,这些掩模可以作为基于运动的似然导出,其在所提出的图模型中用作协调术语。另一种联合术语被称为基于颜色的似然,这是由前景和背景的颜色分布计算的。实验结果表明该方法快速有效地检测和段前景对象。

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