CNN-based Methods for Offline Arabic Handwriting Recognition: A Review

被引:0
作者
Mohsine El Khayati
Ismail Kich
Youssef Taouil
机构
[1] University Ibn Tofail,Mathematics Department, Faculty of Science
[2] University Ibn Tofail,Computer Science Department, Faculty of Science
[3] University Cadi Ayyad,Computer Engineering and Mathematics Department, Higher School of Technology
来源
Neural Processing Letters | / 56卷
关键词
Arabic handwriting recognition; Convolutional neural networks; Deep learning;
D O I
暂无
中图分类号
学科分类号
摘要
Arabic Handwriting Recognition (AHR) is a complex task involving the transformation of handwritten Arabic text from image format into machine-readable data, holding immense potential across various applications. Despite its significance, AHR encounters formidable challenges due to the intricate nature of Arabic script and the diverse array of handwriting styles. In recent years, Convolutional Neural Networks (CNNs) have emerged as a pivotal and promising solution to address these challenges, demonstrating remarkable performance and offering distinct advantages. However, the dominance of CNNs in AHR lacks a dedicated comprehensive review in the existing literature. This review article aims to bridge the existing gap by providing a comprehensive analysis of CNN-based methods in AHR. It covers both segmentation and recognition tasks, delving into advancements in network architectures, databases, training strategies, and employed methods. The article offers an in-depth comparison of these methods, considering their respective strengths and limitations. The findings of this review not only contribute to the current understanding of CNN applications in AHR but also pave the way for future research directions and improved practices, thereby enriching and advancing this critical domain. The review also aims to uncover genuine challenges in the domain, providing valuable insights for researchers and practitioners.
引用
收藏
相关论文
共 121 条
[1]  
Balaha HM(2021)Automatic recognition of handwritten Arabic characters: a comprehensive review Neural Comput & Applic 33 3011-3034
[2]  
Ali HA(1998)Off-line Arabic character recognition: the state of the art Pattern Recogn 31 517-530
[3]  
Badawy M(2016)Deep convolutional neural networks for computer-aided detection: CNN architectures, dataset characteristics and transfer learning IEEE Trans Med Imaging 35 1285-1298
[4]  
Amin A(2022)Arabic optical character recognition: a review CMES 135 1825-1861
[5]  
Shin H(2022)Arabic handwritten recognition using deep learning: a survey Arab J Sci Eng 47 9943-9963
[6]  
Roth HR(2022)UnCNN: a new directed CNN model for isolated Arabic handwritten characters recognition Arab J Sci Eng 28 1563-1571
[7]  
Gao M(2007)Offline recognition of omnifont Arabic text using the HMM ToolKit (HTK) Pattern Recogn Lett 5 11-19
[8]  
Alghyaline S(2017)Arabic handwritten characters recognition using convolutional neural network WSEAS Trans Comput Res 47 1096-1112
[9]  
Alrobah N(2014)KHATT: an open Arabic offline handwritten text database Pattern Recogn 16 295-308
[10]  
Albahli S(2013)IESK-ArDB: a database for handwritten Arabic and an optimized topological segmentation approach IJDAR 80 1162-1180