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Papers/RefineVIS: Video Instance Segmentation with Temporal Atten...

RefineVIS: Video Instance Segmentation with Temporal Attention Refinement

Andre Abrantes, Jiang Wang, Peng Chu, Quanzeng You, Zicheng Liu

2023-06-07DenoisingTARSegmentationContrastive LearningInstance SegmentationVideo Instance Segmentation
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Abstract

We introduce a novel framework called RefineVIS for Video Instance Segmentation (VIS) that achieves good object association between frames and accurate segmentation masks by iteratively refining the representations using sequence context. RefineVIS learns two separate representations on top of an off-the-shelf frame-level image instance segmentation model: an association representation responsible for associating objects across frames and a segmentation representation that produces accurate segmentation masks. Contrastive learning is utilized to learn temporally stable association representations. A Temporal Attention Refinement (TAR) module learns discriminative segmentation representations by exploiting temporal relationships and a novel temporal contrastive denoising technique. Our method supports both online and offline inference. It achieves state-of-the-art video instance segmentation accuracy on YouTube-VIS 2019 (64.4 AP), Youtube-VIS 2021 (61.4 AP), and OVIS (46.1 AP) datasets. The visualization shows that the TAR module can generate more accurate instance segmentation masks, particularly for challenging cases such as highly occluded objects.

Results

TaskDatasetMetricValueModel
Video Instance SegmentationYouTube-VIS 2021AP5084.1RefineVIS (Swin-L, online)
Video Instance SegmentationYouTube-VIS 2021AP7568.5RefineVIS (Swin-L, online)
Video Instance SegmentationYouTube-VIS 2021AR148.3RefineVIS (Swin-L, online)
Video Instance SegmentationYouTube-VIS 2021AR1065.2RefineVIS (Swin-L, online)
Video Instance SegmentationYouTube-VIS 2021mask AP61.4RefineVIS (Swin-L, online)
Video Instance SegmentationOVIS validationAP5070.4RefineVIS (Swin-L, offline)
Video Instance SegmentationOVIS validationAP7548.4RefineVIS (Swin-L, offline)
Video Instance SegmentationOVIS validationAR119.1RefineVIS (Swin-L, offline)
Video Instance SegmentationOVIS validationAR1051.2RefineVIS (Swin-L, offline)
Video Instance SegmentationOVIS validationmask AP46RefineVIS (Swin-L, offline)

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