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张新生

教授   博士生导师  硕士生导师

个人信息 更多+
  • 教师英文名称: zhangxinsheng
  • 教师拼音名称: zhangxinsheng
  • 所在单位: 管理学院
  • 学历: 研究生(博士)毕业
  • 办公地点: 教学大楼828
  • 性别: 男
  • 学位: 博士学位
  • 在职信息: 在职
  • 主要任职: 西安建筑科技大学,管理学院,副院长
  • 其他任职: CNAIS理事 中国系统工程学会会员 陕西省电子学会图形图像专委会委员 CCF会员

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论文成果

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Industrial character recognition based on improved CRNN in complex environments

发布时间:2025-09-07
点击次数:
DOI码:
10.1016/j.compind.2022.103732
发表刊物:
COMPUTERS IN INDUSTRY
摘要:
Automatic character recognition is being gradually adopted in several everyday applications. In industrial settings, it can free up manpower required for reading and tracking product information. However, character recognition in industrial environments is particularly challenging. The main challenges are as follows: (1) There are no publicly available datasets that would aid the development of robust industrial character recognition methods; (2) Industrial characters may be printed in complex and uneven shapes on the surface of various materials, resulting in blurred characters, low contrast and distortion; (3) Industrial character recognition in complex industrial environments can suffers from various difficulties, such as uneven lighting conditions, oxidation of characters caused by long-term storage, etc. To address these challenges, we propose a convolutional recurrent neural network based on a residual structure and a Squeeze-and-Excitation block, namely RS-CRNN. The feature extraction of this method is inspired by ResNet and SEnet, and the method uses gate recurrent units for sequence label prediction. The model was trained and tested on constructed real and synthetic datasets, and experimental results show that the method has better performance than state-of-the-art character recognition models. (C) 2022 Published by Elsevier B.V.
论文类型:
期刊论文
卷号:
142
ISSN号:
0166-3615; 1872-6194
是否译文:
发表时间:
2022-01-01
收录刊物:
SCI