scholarly journals The text recognition algorithm independent evaluation (TRAIT)

2017 ◽  
Author(s):  
Afzal Godil ◽  
Patrick Grother ◽  
Mei Ngan
Author(s):  
Shancheng Fang ◽  
Hongtao Xie ◽  
Jianjun Chen ◽  
Jianlong Tan ◽  
Yongdong Zhang

In this work, we propose an entirely learning-based method to automatically synthesize text sequence in natural images leveraging conditional adversarial networks. As vanilla GANs are clumsy to capture structural text patterns, directly employing GANs for text image synthesis typically results in illegible images. Therefore, we design a two-stage architecture to generate repeated characters in images. Firstly, a character generator attempts to synthesize local character appearance independently, so that the legible characters in sequence can be obtained. To achieve style consistency of characters, we propose a novel style loss based on variance-minimization. Secondly, we design a pixel-manipulation word generator constrained by self-regularization, which learns to convert local characters to plausible word image. Experiments on SVHN dataset and ICDAR, IIIT5K datasets demonstrate our method is able to synthesize visually appealing text images. Besides, we also show the high-quality images synthesized by our method can be used to boost the performance of a scene text recognition algorithm.


Sensors ◽  
2020 ◽  
Vol 20 (10) ◽  
pp. 2942
Author(s):  
Zhiwei Huang ◽  
Jinzhao Lin ◽  
Hongzhi Yang ◽  
Huiqian Wang ◽  
Tong Bai ◽  
...  

Text recognition in natural scene images has always been a hot topic in the field of document-image related visual sensors. The previous literature mostly solved the problem of horizontal text recognition, but the text in the natural scene is usually inclined and irregular, and there are many unsolved problems. For this reason, we propose a scene text recognition algorithm based on a text position correction (TPC) module and an encoder-decoder network (EDN) module. Firstly, the slanted text is modified into horizontal text through the TPC module, and then the content of horizontal text is accurately identified through the EDN module. Experiments on the standard data set show that the algorithm can recognize many kinds of irregular text and get better results. Ablation studies show that the proposed two network modules can enhance the accuracy of irregular scene text recognition.


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