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Learning Video Object Segmentation from Unlabeled Videos

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arxiv 2003.05020 v1 pith:ZL5F6AL4 submitted 2020-03-10 cs.CV

Learning Video Object Segmentation from Unlabeled Videos

classification cs.CV
keywords learningobjectsegmentationunlabeleddatasettingsvideovideos
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a new method for video object segmentation (VOS) that addresses object pattern learning from unlabeled videos, unlike most existing methods which rely heavily on extensive annotated data. We introduce a unified unsupervised/weakly supervised learning framework, called MuG, that comprehensively captures intrinsic properties of VOS at multiple granularities. Our approach can help advance understanding of visual patterns in VOS and significantly reduce annotation burden. With a carefully-designed architecture and strong representation learning ability, our learned model can be applied to diverse VOS settings, including object-level zero-shot VOS, instance-level zero-shot VOS, and one-shot VOS. Experiments demonstrate promising performance in these settings, as well as the potential of MuG in leveraging unlabeled data to further improve the segmentation accuracy.

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