Abstract
The recognition of cursive script is regarded as a subtle task in optical character recognition due to its varied representation. Every cursive script has different nature and associated challenges. As Urdu is one of cursive language that is derived from Arabic script, that is why it nearly shares the similar challenges and complexities but with more intensity. We can categorize Urdu and Arabic language on basis of its script they use. Urdu is mostly written in Nasta’liq style, whereas Arabic follows Naskh style of writing. This paper presents new and comprehensive Urdu handwritten offline database name Urdu-Nasta’liq handwritten dataset (UNHD). Currently, there is no standard and comprehensive Urdu handwritten dataset available publicly for researchers. The acquired dataset covers commonly used ligatures that were written by 500 writers with their natural handwriting on A4 size paper. UNHD is publically available and can be download form https://sites.google.com/site/researchonurdulanguage1/databases. We performed experiments using recurrent neural networks and reported a significant accuracy for handwritten Urdu character recognition.










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Biadsy F, El-Sana J, Habash NY (2006) Online Arabic handwriting recognition using hidden Markov models. In: Proceedings of the 10th international workshop on frontiers of handwriting and recognition
Breuel TM (2008) The OCRopus open source OCR system. In: Yanikoglu BA, Berkner K (eds) Document Recognition and Retrieval XV, vol 6815. SPIE, San Jose, CA, p 68150. doi:10.1117/12.783598
Deng L (2012) The MNIST database of handwritten digit images for machine learning. IEEE Signal Process Mag 29(6):141–147
Essoukri N, Amara B, Mazhoud O, Bouzrara N, Ellouze N (2005) ARABASE: a relational database for Arabic OCR systems. Int Arab J Inf Technol 2(4):259–266
Graves A (2012) Supervised sequence labeling with recurrent neural networks, vol 385. Springer Studies in Computational Intelligence
Gosselin B (1996) Multilayer perceptrons combination applied to handwritten character recognition. Neural Process Lett 3(1):3
Razzak MI, Hussain SA (2010) Locally baseline detection for online Arabic script based languages character recognition. Int J Phys Sci 5:955
Sabbour N, Shafait F (2013) A segmentation free approach to Arabic and Urdu OCR. In: DRR, ser. SPIE Proceedings 8658
Marti U-V, Horst Bunke H (2004) The IAM-database: an English sentence database for offline handwriting recognition. IJDAR 5(1):39
Taghva K, Nartker T, Borsack J, Condit A (1999) UNLV-ISRI document collection for research in OCR and information retrieval. In: International society for optics and photonics in electronic imaging
Javed ST, Hussain S (2013) Segmentation based Urdu Nastalique OCR. Springer 8259:41
Naz S, Hayat K, Razzak MI, Anwar MW, Madani SA, Khan SU (2014) The optical character recognition of Urdu-like cursive scripts. Pattern Recognit 47(3):12291248
Naz S, Hayat K, Razzak MI, Anwar MW, Khan SK (2014) Challenges in baseline detection of Arabic script based languages. Springer International Publishing in Intelligent Systems for Science and Information, p 181
Parvez MT, Mahmoud SA (2013) Offline Arabic handwritten text recognition: a survey. ACM Comput Surveys (CSUR) 45(2):23
Smith R (2007) An overview of the tesseract OCR engine. In: ICDAR 629
Lorigo LM, Govindaraju V (2006) Offline Arabic handwriting recognition: a survey. IEEE Trans Pattern Anal Mach Intell 28(5):712
Marti U-V, Bunke H (2002) Using a statistical language model to improve the performance of an HMM-based cursive handwriting recognition system. World Scientific Publishing Co., River Edge, p 65
Seiler R, Schenkel M (1996) Off-line cursive handwriting recognition compared with on-line recognition. In: ICPR, p 505
Sagheer MW, He CL, Nobile N, Suen CY (2009) A new large Urdu database for off line handwriting recognition. In: Image analysis and processing ICIAP. Springer, Berlin, p 538
Ul-Hasan A, Bukhari SS, Rashid SF, Shafait F, Breuel TM (2012) Semi-automated OCR database generation for Nabataean scripts. In: ICPR 1667
Ahmed SB, Naz S, Razzak MI, Rashid SF, Afzal MZ, Breuel TM (2015) Evaluation of cursive and non-cursive scripts using recurrent neural networks. Neural Comput Appl 27(3):603–613
Al-Maadeed S, Elliman D, Higgins C (2002) A data base for Arabic handwritten text recognition research. In: Proceedings of the 8th international workshop on frontiers in handwriting recognition, p 485
Al-Ohali Y, Cheriet M, Suen C (2003) Databases for recognition of handwritten Arabic cheques. Pattern Recognit 36(1):111
Wang Y, Ding X, Liu C (2011) MQDF discriminative learning based offline handwritten Chinese character recognition. In: ICDAR. IEEE 1100
Graves A, Bunke H, Fernandez S, Liwicki M, Schmidhuber J (2008) Unconstrained online handwriting recognition with recurrent neural networks. In: Advances in neural information processing systems, p 577
Gers FA, Schmidhuber E (2001) LSTM recurrent networks learn simple context-free and context-sensitive languages. IEEE Trans Neural Netw 12(6):1333
Hochreiter S, Schmidhuber J (1997) Long short term memory. Neural Comput 9(8):1735
Graves A (2008) Supervised sequence labeling with recurrent neural networks. PhD thesis, 1-117, Technical University Munich
Mrgner V, El-Abed H (2008) Databases and competitions: strategies to improve Arabic recognition systems. In: Proceedings of the conference on Arabic and Chinese handwriting recognition, Springer, Berlin, p 82
Srihari S, Srinivasan, H, Babu, P, Bhole C (2005) Handwritten Arabic word spotting using the cedarabic document analysis system. In: Proceedings of the symposium on document image UNHDerstanding technology (SDIUT-05), p 123
Al-Ohali Y, Cheriet M, Suen C (2003) Databases for recognition of handwritten Arabic cheques. Pattern Recognit 36(1):111–121
Schlosser S (1995) Erim Arabic Database. Document Processing Research Program, Information and Materials Applications Laboratory, Environmental Research Institute of Michigan
Slimane F, Ingold R, Kanoun S, Alimi A, Hennebert J (2009) Database and evaluation protocols for Arabic printed text recognition. Technical Report 296-09-01. Department of Informatics, University of Fribourg
Mozaffari S, El-Abed H, Maergner V, Faez K, Amirshahi A (2008) A database of Farsi handwritten city names. IfN/Farsi-Database, p 24
Ziaratban M, Faez K, Bagheri F (2009) FHT: an unconstraint Farsi handwritten text database. In: Proceedings of the 10th international conference on document analysis and recognition, Catalonia, Spain, p 281
www.cle.org.pk/clestore/imagecorpora.htm. Accessed 23 June 2014
Ul-Hasan A, Bukhari SS, Rashid SF, Shafait F, Breuel TM (2012) Semi-automated OCR database generation for Nabataean scripts. In: ICPR, p 1667
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Ahmed, S.B., Naz, S., Swati, S. et al. Handwritten Urdu character recognition using one-dimensional BLSTM classifier. Neural Comput & Applic 31, 1143–1151 (2019). https://doi.org/10.1007/s00521-017-3146-x
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DOI: https://doi.org/10.1007/s00521-017-3146-x