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CPARR: Category-based Proposal Analysis for Referring Relationships

2020-04-17 01:54:01
Chuanzi He, Haidong Zhu, Jiyang Gao, Kan Chen, Ram Nevatia

Abstract

The task of referring relationships is to localize subject and object entities in an image satisfying a relationship query, which is given in the form of \texttt{<subject, predicate, object>}. This requires simultaneous localization of the subject and object entities in a specified relationship. We introduce a simple yet effective proposal-based method for referring relationships. Different from the existing methods such as SSAS, our method can generate a high-resolution result while reducing its complexity and ambiguity. Our method is composed of two modules: a category-based proposal generation module to select the proposals related to the entities and a predicate analysis module to score the compatibility of pairs of selected proposals. We show state-of-the-art performance on the referring relationship task on two public datasets: Visual Relationship Detection and Visual Genome.

Abstract (translated)

URL

https://arxiv.org/abs/2004.08028

PDF

https://arxiv.org/pdf/2004.08028.pdf


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