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Design Pseudo Ground Truth with Motion Cue for Unsupervised Video Object Segmentation

机译:用于运动图像的无监督视频对象分割的伪地面真相设计

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One major technique debt in video object segmentation is to label the object masks for training instances. As a result, we propose to prepare inexpensive, yet high quality pseudo ground truth corrected with motion cue for video object segmentation training. Our method conducts semantic segmentation using instance segmentation networks and, then, selects the segmented object of interest as the pseudo ground truth based on the motion information. Afterwards, the pseudo ground truth is exploited to finetune the pretrained objectness network to facilitate object segmentation in the remaining frames of the video. We show that the pseudo ground truth could effectively improve the segmentation performance. This straightforward unsupervised video object segmentation method is more efficient than existing methods. Experimental results on DAVIS and FBMS show that the proposed method outperforms state-of-the-art unsupervised segmentation methods on various benchmark datasets. And the category-agnostic pseudo ground truth has great potential to extend to multiple arbitrary object tracking.
机译:视频对象分割中的一项主要技术缺点是为训练实例标记对象蒙版。结果,我们建议准备用运动线索校正的廉价但高质量的伪地面真相,用于视频对象分割训练。我们的方法使用实例分割网络进行语义分割,然后基于运动信息选择分割的感兴趣对象作为伪地面真相。之后,利用伪地面实况对预训练的客观性网络进行微调,以利于视频其余帧中的目标分割。我们表明,伪地面真理可以有效地提高分割性能。这种直接的无监督视频对象分割方法比现有方法更有效。在DAVIS和FBMS上进行的实验结果表明,该方法在各种基准数据集上的性能优于最新的无监督分割方法。与类别无关的伪地面真相具有扩展到多个任意对象跟踪的巨大潜力。

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