Feb. 6, 2024, 5:52 a.m. | Xiaoqi Zhao Shijie Chang Youwei Pang Jiaxing Yang Lihe Zhang Huchuan Lu

cs.CV updates on arXiv.org arxiv.org

Static and moving objects often occur in real-life videos. Most video object segmentation methods only focus on extracting and exploiting motion cues to perceive moving objects. Once faced with the frames of static objects, the moving object predictors may predict failed results caused by uncertain motion information, such as low-quality optical flow maps. Besides, different sources such as RGB, depth, optical flow and static saliency can provide useful information about the objects. However, existing approaches only consider either the RGB …

cs.cv flow focus information life low moving objects optical optical flow quality segmentation uncertain video videos zero-shot

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