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Guided Co-Segmentation Network for Fast Video Object Segmentation

机译:用于快速视频对象分割的导向共分割网络

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摘要

Semi-supervised video object segmentation is a task of propagating instance masks given in the first frame to the entire video. It is a challenging task since it usually suffers from heavy occlusions, large deformation, and large variations of objects. To alleviate these problems, many existing works apply time-consuming techniques such as fine-tuning, post-processing, or extracting optical flow, which makes them intractable for online segmentation. In our work, we focus on online semi-supervised video object segmentation. We propose a GCSeg (Guided Co-Segmentation) Network which is mainly composed of a Reference Module and a Co-segmentation Module, to simultaneously incorporate the short-term, middle-term, and long-term temporal inter-frame relationships. Moreover, we propose an Adaptive Search Strategy to reduce the risk of propagating inaccurate segmentation results in subsequent frames. Our GCSeg network achieves state-of-the-art performance on online semi-supervised video object segmentation on Davis 2016 and Davis 2017 datasets.
机译:半监控视频对象分割是传播在第一帧中给整个视频中给出的实例掩码的任务。这是一个具有挑战性的任务,因为它通常遭受重闭合,大变形和物体的大变化。为了缓解这些问题,许多现有的作品适用于耗时的技术,例如微调,后处理或提取光流,这使得它们可以用于在线分段。在我们的工作中,我们专注于在线半监督视频对象细分。我们提出了一种主要由参考模块和共分割模块组成的GCSEG(引导共分割)网络,同时包含短期,中期和长期的时间帧间关系。此外,我们提出了一种自适应搜索策略,以降低在后续帧中传播不准确的分段结果的风险。我们的GCSEG网络在Davis 2016和Davis 2017数据集上实现了在线半监督视频对象分段的最先进的性能。

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