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GA-DAN: Geometry-Aware Domain Adaptation Network for Scene Text Detection and Recognition

2019-07-23 01:56:06
Fangneng Zhan, Chuhui Xue, Shijian Lu

Abstract

Recent adversarial learning research has achieved very impressive progress for modelling cross-domain data shifts in appearance space but its counterpart in modelling cross-domain shifts in geometry space lags far behind. This paper presents an innovative Geometry-Aware Domain Adaptation Network (GA-DAN) that is capable of modelling cross-domain shifts concurrently in both geometry space and appearance space and realistically converting images across domains with very different characteristics. In the proposed GA-DAN, a novel multi-modal spatial learning technique is designed which converts a source-domain image into multiple images of different spatial views as in the target domain. A new disentangled cycle-consistency loss is introduced which balances the cycle consistency in appearance and geometry spaces and improves the learning of the whole network greatly. The proposed GA-DAN has been evaluated for the classic scene text detection and recognition tasks, and experiments show that the domain-adapted images achieve superior scene text detection and recognition performance while applied to network training.

Abstract (translated)

URL

https://arxiv.org/abs/1907.09653

PDF

https://arxiv.org/pdf/1907.09653.pdf


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