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arxiv:2512.06864

Boosting Unsupervised Video Instance Segmentation with Automatic Quality-Guided Self-Training

Published on Dec 7
· Submitted by onurcan on Dec 10
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Abstract

AutoQ-VIS achieves state-of-the-art results in unsupervised Video Instance Segmentation using quality-guided self-training to bridge the synthetic-to-real domain gap.

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Video Instance Segmentation (VIS) faces significant annotation challenges due to its dual requirements of pixel-level masks and temporal consistency labels. While recent unsupervised methods like VideoCutLER eliminate optical flow dependencies through synthetic data, they remain constrained by the synthetic-to-real domain gap. We present AutoQ-VIS, a novel unsupervised framework that bridges this gap through quality-guided self-training. Our approach establishes a closed-loop system between pseudo-label generation and automatic quality assessment, enabling progressive adaptation from synthetic to real videos. Experiments demonstrate state-of-the-art performance with 52.6 AP_{50} on YouTubeVIS-2019 val set, surpassing the previous state-of-the-art VideoCutLER by 4.4%, while requiring no human annotations. This demonstrates the viability of quality-aware self-training for unsupervised VIS. We will release the code at https://github.com/wcbup/AutoQ-VIS.

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Accepted at WACV'26!

Keywords: Video Instance Segmentation; Unsupervised Learning; Segmentation Quality Assessment

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