STEFANN: Scene Text Editor using Font Adaptive Neural Network.

2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)(2019)

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摘要
Textual information in a captured scene plays an important role in scene interpretation and decision making. Though there exist methods that can successfully detect and interpret complex text regions present in a scene, to the best of our knowledge, there is no significant prior work that aims to modify the textual information in an image. The ability to edit text directly on images has several advantages including error correction, text restoration and image reusability. In this paper, we propose a method to modify text in an image at character-level. We approach the problem in two stages. At first, the unobserved character (target) is generated from an observed character (source) being modified. We propose two different neural network architectures - (a) FANnet to achieve structural consistency with source font and (b) Colornet to preserve source color. Next, we replace the source character with the generated character maintaining both geometric and visual consistency with neighboring characters. Our method works as a unified platform for modifying text in images. We present the effectiveness of our method on COCO-Text and ICDAR datasets both qualitatively and quantitatively.
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关键词
STEFANN,scene text editor,font adaptive neural network,textual information,scene interpretation,decision making,complex text regions,error correction,text restoration,neural network architectures,source font,source color,geometric consistency,visual consistency,neighboring characters,observed character generation,unobserved character generation,source character generation,FANnet,COCO-text datasets,ICDAR datasets
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