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Temporally consistent multi-class video-object segmentation with the Video Graph-Shifts algorithm

机译:使用视频图移算法的时间一致的多类视频对象分割

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We present the Video Graph-Shifts (VGS) approach for efficiently incorporating temporal consistency into MRF energy minimization for multi-class video object segmentation. In contrast to previous methods, our dynamic temporal links avoid the computational overhead of using a fully connected spatiotemporal MRF, while still being able to deal with the uncertainties of the exact inter-frame pixel correspondence issues. The dynamic temporal links are initialized flexibly for balancing between speed and accuracy, and are automatically revised whenever a label change (shift) occurs during the energy minimization process. We show in the benchmark CamVid database and our own wintry driving dataset that VGS improves the issue of temporally inconsistent segmentation effectively-enhancements of up to 5% to 10% for those semantic classes with high intra-class variance. Furthermore, VGS processes each frame at pixel resolution in about one second, which provides a practical way of modeling complex probabilistic relationships in videos and solving it in near real-time.
机译:我们提出了视频图移(VGS)方法,以有效地将时间一致性纳入MRF能量最小化,以进行多类视频对象分割。与以前的方法相比,我们的动态时间链接避免了使用完全连接的时空MRF的计算开销,同时仍然能够处理确切的帧间像素对应问题的不确定性。动态时间链接可以灵活地初始化,以在速度和准确性之间取得平衡,并且在能量最小化过程中每当发生标签更改(移位)时,都会自动进行修改。我们在基准的CamVid数据库和我们自己的寒冬驾驶数据集中显示,VGS改进了时间上不一致的分割问题,对于那些具有较高类内差异的语义类,可以将这种情况提高多达5%到10%。此外,VGS在大约一秒钟的时间内以像素分辨率处理每个帧,这提供了一种实用的方式来对视频中的复杂概率关系进行建模并以近乎实时的方式对其进行求解。

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