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Open Vocabulary Scene Parsing (1703.08769v2)
Published 26 Mar 2017 in cs.CV and cs.AI
Abstract: Recognizing arbitrary objects in the wild has been a challenging problem due to the limitations of existing classification models and datasets. In this paper, we propose a new task that aims at parsing scenes with a large and open vocabulary, and several evaluation metrics are explored for this problem. Our proposed approach to this problem is a joint image pixel and word concept embeddings framework, where word concepts are connected by semantic relations. We validate the open vocabulary prediction ability of our framework on ADE20K dataset which covers a wide variety of scenes and objects. We further explore the trained joint embedding space to show its interpretability.
- Hang Zhao (156 papers)
- Xavier Puig (14 papers)
- Bolei Zhou (134 papers)
- Sanja Fidler (184 papers)
- Antonio Torralba (178 papers)