Video Instance Segmentation (VIS) aims at segmenting and categorizing objects in videos from a closed set of training categories, lacking the generalization ability to handle novel categories in real-world videos. To address this limitation, we make the following three contributions. First, we introduce the novel task of Open-Vocabulary Video Instance Segmentation, which aims to simultaneously segment, track, and classify objects in videos from open-set categories, including novel categories unseen during training. Second, to benchmark Open-Vocabulary VIS, we collect a Large-Vocabulary Video Instance Segmentation dataset (LV-VIS), that contains well-annotated objects from 1,196 diverse categories, significantly surpassing the category size of existing datasets by more than one order of magnitude. Third, we propose an efficient Memory-Induced Transformer architecture, OV2Seg, to first achieve Open-Vocabulary VIS in an end-to-end manner with near real-time inference speed. Extensive experiments on LV-VIS and four existing VIS datasets demonstrate the strong zero-shot generalization ability of OV2Seg on novel categories. The dataset and code are released here https://github.com/haochenheheda/LVVIS.
Towards Open-Vocabulary Video Instance Segmentation
A novel open-vocabulary video instance segmentation task is introduced, benchmarked with a large dataset, and addressed using an efficient Memory-Induced Transformer architecture for real-time inference and zero-shot generalization.
- Year
- 2023
- Venue
- ICCV 2023 1
- Authors
- 8
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2304.01715v2ARXIV-DEFAULT
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