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Open Visual Knowledge Extraction via Relation-Oriented Multimodality Model Prompting

Authors :
Cui, Hejie
Fang, Xinyu
Zhang, Zihan
Xu, Ran
Kan, Xuan
Liu, Xin
Yu, Yue
Li, Manling
Song, Yangqiu
Yang, Carl
Publication Year :
2023

Abstract

Images contain rich relational knowledge that can help machines understand the world. Existing methods on visual knowledge extraction often rely on the pre-defined format (e.g., sub-verb-obj tuples) or vocabulary (e.g., relation types), restricting the expressiveness of the extracted knowledge. In this work, we take a first exploration to a new paradigm of open visual knowledge extraction. To achieve this, we present OpenVik which consists of an open relational region detector to detect regions potentially containing relational knowledge and a visual knowledge generator that generates format-free knowledge by prompting the large multimodality model with the detected region of interest. We also explore two data enhancement techniques for diversifying the generated format-free visual knowledge. Extensive knowledge quality evaluations highlight the correctness and uniqueness of the extracted open visual knowledge by OpenVik. Moreover, integrating our extracted knowledge across various visual reasoning applications shows consistent improvements, indicating the real-world applicability of OpenVik.<br />Comment: Accepted to NeurIPS 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.18804
Document Type :
Working Paper