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Primary Object Segmentation in Videos via Alternate Convex Optimization of Foreground and Background Distributions

机译:通过前景和背景分布的交替凸优化在视频中进行主对象分割

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An unsupervised video object segmentation algorithm, which discovers a primary object in a video sequence automatically, is proposed in this work. We introduce three energies in terms of foreground and background probability distributions: Markov, spatiotemporal, and antagonistic energies. Then, we minimize a hybrid of the three energies to separate a primary object from its background. However, the hybrid energy is nonconvex. Therefore, we develop the alternate convex optimization (ACO) scheme, which decomposes the nonconvex optimization into two quadratic programs. Moreover, we propose the forward-backward strategy, which performs the segmentation sequentially from the first to the last frames and then vice versa, to exploit temporal correlations. Experimental results on extensive datasets demonstrate that the proposed ACO algorithm outperforms the state-of-the-art techniques significantly.
机译:在这项工作中,提出了一种无监督的视频对象分割算法,该算法可以自动发现视频序列中的主要对象。我们根据前景和背景概率分布介绍三种能量:马尔可夫,时空和对立能量。然后,我们最小化三种能量的混合,以将主要物体与其背景分离。但是,混合能量是非凸的。因此,我们开发了交替凸优化(ACO)方案,该方案将非凸优化分解为两个二次程序。此外,我们提出了前向后策略,该策略从第一帧到最后一帧依次执行分割,然后反之亦然,以利用时间相关性。在大量数据集上的实验结果表明,提出的ACO算法明显优于最新技术。

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