OpenVIS: Open-vocabulary Video Instance Segmentation

26 May 2023  ·  Pinxue Guo, Tony Huang, Peiyang He, Xuefeng Liu, Tianjun Xiao, Zhaoyu Chen, Wenqiang Zhang ·

Open-vocabulary Video Instance Segmentation (OpenVIS) can simultaneously detect, segment, and track arbitrary object categories in a video, without being constrained to categories seen during training. In this work, we propose an OpenVIS framework called InstFormer that achieves powerful open vocabulary capability through lightweight fine-tuning on a limited-category labeled dataset. Specifically, InstFormer comes in three steps a) Open-world Mask Proposal: we utilize a query-based transformer, which is encouraged to propose all potential object instances, to obtain class-agnostic instance masks; b) Open-vocabulary Instance Representation and Classification: we propose InstCLIP, adapted from pre-trained CLIP with Instance Guidance Attention. InstCLIP generates the instance token capable of representing each open-vocabulary instance. These instance tokens not only enable open-vocabulary classification for multiple instances with a single CLIP forward pass but have also been proven effective for subsequent open-vocabulary instance tracking. c) Rollout Association: we introduce a class-agnostic rollout tracker to predict rollout tokens from the tracking tokens of previous frames to enable open-vocabulary instance association across frames in the video. The experimental results demonstrate the proposed InstFormer achieve state-of-the-art capabilities on a comprehensive OpenVIS evaluation benchmark, while also achieves competitive performance in fully supervised VIS task.

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