EI2SR: LEARNING AN ENHANCED INTRA-INSTANCE SEMANTIC RELATIONSHIP FOR ARBITRARY-SHAPED SCENE TEXT DETECTION
Yan Shu (State Key Laboratory of Communication Content Cognition, People`s Daily Online, Beijing, China; Harbin Institute of Technology; Institute of Information Engineering, CAS ); Shaohui Liu (Harbin Institute of Technology); Yu Zhou (Institute of Information Engineering, CAS; Also with University of Chinese Academy of Sciences); honglei xu (Harbin Institute of Technology); Feng Jiang (Harbin Institute of Technology, Harbin)
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Text detection in natural scenarios, has made significant progress with the deep learning architecture. Towards arbitrary-shaped text detection, fracture detection is the major concern due to the lack of semantic relationship within an instance in existing methods. To circumvent this dilemma, we propose a novel network to learn an Enhanced Intra-Instance Semantic Relationship (EI2SR) which consists of Text-Specific Attention Mechanism (TAM) and Border Attraction Grouping (BAG). The former models the rich semantic information between different coarse-grained text regions to guide the fine-grained learning of corresponding text representations. The latter enhances the border-center semantic correlation by establishing high-dimension embedding space to attract and group the border at both ends to their corresponding center. Extensive experimental results show that the proposed Ei2SR
achieves state-of-the-art or competitive performance on existing benchmarks.