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Text Spotting Transformers

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arxiv 2204.01918 v1 pith:SP2D44LL submitted 2022-04-05 cs.CV

Text Spotting Transformers

classification cs.CV
keywords texttestrspottingtransformersbounding-boxcontrolcurveddetection
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we present TExt Spotting TRansformers (TESTR), a generic end-to-end text spotting framework using Transformers for text detection and recognition in the wild. TESTR builds upon a single encoder and dual decoders for the joint text-box control point regression and character recognition. Other than most existing literature, our method is free from Region-of-Interest operations and heuristics-driven post-processing procedures; TESTR is particularly effective when dealing with curved text-boxes where special cares are needed for the adaptation of the traditional bounding-box representations. We show our canonical representation of control points suitable for text instances in both Bezier curve and polygon annotations. In addition, we design a bounding-box guided polygon detection (box-to-polygon) process. Experiments on curved and arbitrarily shaped datasets demonstrate state-of-the-art performances of the proposed TESTR algorithm.

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