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Explore Faster Localization Learning For Scene Text Detection

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arxiv 2207.01342 v1 pith:UPD6DSTW submitted 2022-07-04 cs.CV

Explore Faster Localization Learning For Scene Text Detection

classification cs.CV
keywords textfanetnetworkproposedperformancepre-trainingachievedescriptor
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Generally pre-training and long-time training computation are necessary for obtaining a good-performance text detector based on deep networks. In this paper, we present a new scene text detection network (called FANet) with a Fast convergence speed and Accurate text localization. The proposed FANet is an end-to-end text detector based on transformer feature learning and normalized Fourier descriptor modeling, where the Fourier Descriptor Proposal Network and Iterative Text Decoding Network are designed to efficiently and accurately identify text proposals. Additionally, a Dense Matching Strategy and a well-designed loss function are also proposed for optimizing the network performance. Extensive experiments are carried out to demonstrate that the proposed FANet can achieve the SOTA performance with fewer training epochs and no pre-training. When we introduce additional data for pre-training, the proposed FANet can achieve SOTA performance on MSRATD500, CTW1500 and TotalText. The ablation experiments also verify the effectiveness of our contributions.

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