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Appearance-consistent Video Object Segmentation Based on a Multinomial Event Model

机译:基于多项式事件模型的外观一致视频对象分割

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摘要

In this study, we propose an effective and efficient algorithm for unconstrained video object segmentation, which is achieved in a Markov random field (MRF). In the MRF graph, each node is modeled as a superpixel and labeled as either foreground or background during the segmentation process. The unary potential is computed for each node by learning a transductive SVM classifier under supervision by a few labeled frames. The pairwise potential is used for the spatial-temporal smoothness. In addition, a high-order potential based on the multinomial event model is employed to enhance the appearance consistency throughout the frames. To minimize this intractable feature, we also introduce a more efficient technique that simply extends the original MRF structure. The proposed approach was evaluated in experiments with different measures and the results based on a benchmark demonstrated its effectiveness compared with other state-of-the-art algorithms.
机译:在这项研究中,我们提出了一种有效且高效的无约束视频对象分割算法,该算法是在马尔可夫随机场(MRF)中实现的。在MRF图中,每个节点都被建模为一个超像素,并在分割过程中被标记为前景或背景。通过学习在几个标记帧的监督下的转导SVM分类器,可以为每个节点计算一元电势。成对电位用于时空平滑度。另外,采用基于多项式事件模型的高阶电位来增强整个帧的外观一致性。为了最大程度地减少这一棘手的功能,我们还引入了一种更有效的技术,该技术仅扩展了原始MRF结构。在不同的实验条件下对提出的方法进行了评估,基于基准的结果证明了其与其他最新算法相比的有效性。

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