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Multilevel Model for Video Object Segmentation Based on Supervision Optimization

机译:基于监督优化的视频对象分割多层次模型

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In this work, we present a supervised object segmentation algorithm for unconstrained video. Instead of arbitrarily picking a few frames for manual labeling, as in many existing supervised methods, the proposed method selects frames in a more reasonable manner, called supervision optimization. For this, we formulate a principled objective function by inferring the propagation error from appearance and motion clues. After this, we construct a multilevel segmentation model, which consists of low-level and high-level features. On the low level, image pixels are used for a more accurate estimation of motion and segmentation. On the high level, image segments are considered for a more semantic classification of the foreground and background. By integrating these in one segmentation graph, the result can be further improved by leveraging the knowledge from both levels. In experiments, the proposed approach is evaluated by different measures, and the results on a benchmark demonstrate the effectiveness in comparison with other state-of-the-art algorithms.
机译:在这项工作中,我们提出了一种不受约束的视频的监督对象分割算法。与在许多现有的监督方法中一样,代替了随意地挑选一些帧进行手动标记,该方法以一种更为合理的方式选择了框架,称为监督优化。为此,我们通过从外观和运动线索推断出传播误差,从而制定了有原则的目标函数。此后,我们构建了一个包含低级和高级功能的多级细分模型。在较低级别,图像像素用于更准确地估计运动和分割。在较高级别上,考虑对图像段进行前景和背景的更语义分类。通过将这些信息集成到一个分割图中,可以利用两个级别的知识来进一步改善结果。在实验中,通过不同的方法对所提出的方法进行了评估,并且在基准上的结果证明了与其他最新算法相比的有效性。

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