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Zero-shot Referring Image Segmentation with Global-Local Context Features

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Author(s)
Yu, SeonghoonSeo, Paul HongsuckSon, Jeany
Type
Conference Paper
Citation
2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp.19456 - 19465
Issued Date
2023-06-17
Abstract
Referring image segmentation (RIS) aims to find a segmentation mask given a referring expression grounded to a region of the input image. Collecting labelled datasets for this task, however, is notoriously costly and labor-intensive. To overcome this issue, we propose a simple yet effective zero-shot referring image segmentation method by leveraging the pre-trained cross-modal knowledge from CLIP. In order to obtain segmentation masks grounded to the input text, we propose a mask-guided visual encoder that captures global and local contextual information of an input image. By utilizing instance masks obtained from off-the-shelf mask proposal techniques, our method is able to segment fine-detailed instance-level groundings. We also introduce a global-local text encoder where the global feature captures complex sentence-level semantics of the entire input expression while the local feature focuses on the target noun phrase extracted by a dependency parser. In our experiments, the proposed method outperforms several zero-shot baselines of the task and even the weakly supervised referring expression segmentation method with substantial margins. Our code is available at https://github.com/Seonghoon-Yu/Zero-shot-RIS.
Publisher
IEEE COMPUTER SOC
Conference Place
CN
Vancouver
URI
https://scholar.gist.ac.kr/handle/local/21142
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