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Mask Selection and Propagation for Unsupervised Video Object Segmentation

机译:未经监督视频对象分段的屏蔽选择和传播

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In this work we present a novel approach for Unsupervised Video Object Segmentation, that is automatically generating instance level segmentation masks for salient objects and tracking them in a video. We efficiently handle problems present in existing methods such as drift while temporal propagation, tracking and addition of new objects. To this end, we propose a novel idea of improving masks in an online manner using ensemble of criteria whose task is to inspect the quality of masks. We introduce a novel idea of assessing mask quality using a neural network called Selector Net. The proposed network is trained is such way that it is generalizes across various datasets. Our proposed method is able to limit the noise accumulated along the video, giving state of the art result on Davis 2019 Unsupervised challenge dataset with $mathcal{J}& {mathcal{F}}$ mean 61.6%. We also tested on datasets such as FBMS and SegTrack V2 and performed better or on par compared to the other methods.
机译:在这项工作中,我们为无监督的视频对象分割提出了一种新的方法,它是自动生成突出对象的实例级分段掩码,并在视频中跟踪它们。 我们有效处理现有方法中存在的问题,例如漂移,而在时间传播,跟踪和添加新对象。 为此,我们建议使用标准的合奏来提出改善掩模的蒙版,其任务是检查掩模的质量。 我们使用称为选择器网的神经网络介绍评估掩模质量的新颖思想。 培训所提出的网络是这样的,即它在各种数据集中概括。 我们所提出的方法能够限制沿视频累积的噪声,在Davis 2019上给出最先进的挑战数据集与$ Mathcal {J} &{ Mathcal {F}} $均值61.6%。 我们还测试了与其他方法相比的数据集(如FBMS和SEGTRACK V2),并执行了更好或on PAR。

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