Research Article

Deep Learning Method for Handwriting Recognition

Volume: 9 Number: 1 June 30, 2021
EN

Deep Learning Method for Handwriting Recognition

Abstract

The advancement of technology nowadays resulted into documents, such as forms and petitions, being filled out in computer and digital environment. Yet in some cases, documents are still preserved in traditional style, on print. Due to its distinct proportions, however, its storage, sharing and filing has become a complication. The relocation of these written documents to digital environment is therefore of great significance. In this view, this study aims to explore methodologies of digitizing handwritten documents. In this study, the documents converted to image format were pre-processed using image processing methods. These operations include dividing lines of the document into image format, dividing into words which then divided into characters, and finally, a classification operation on the characters. As classification phase, one of the deep learning methods is the Convolution Neural Network method is used in image recognition. The model was trained using the EMNIST dataset, and in the character, dataset created from the documents at hand. The dataset created had a success rate of 87.81%. Characters classified as finishers are sequentially combined and the document is transferred to the computer afterwards.

Keywords

Character recognition, convolutional neural network, deep learning, handwriting recognition, image processing

References

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APA
Ayvacı Erdoğan, A., & Tümer, A. E. (2021). Deep Learning Method for Handwriting Recognition. MANAS Journal of Engineering, 9(1), 85-92. https://doi.org/10.51354/mjen.852312
AMA
1.Ayvacı Erdoğan A, Tümer AE. Deep Learning Method for Handwriting Recognition. MJEN. 2021;9(1):85-92. doi:10.51354/mjen.852312
Chicago
Ayvacı Erdoğan, Ayşe, and Abdullah Erdal Tümer. 2021. “Deep Learning Method for Handwriting Recognition”. MANAS Journal of Engineering 9 (1): 85-92. https://doi.org/10.51354/mjen.852312.
EndNote
Ayvacı Erdoğan A, Tümer AE (June 1, 2021) Deep Learning Method for Handwriting Recognition. MANAS Journal of Engineering 9 1 85–92.
IEEE
[1]A. Ayvacı Erdoğan and A. E. Tümer, “Deep Learning Method for Handwriting Recognition”, MJEN, vol. 9, no. 1, pp. 85–92, June 2021, doi: 10.51354/mjen.852312.
ISNAD
Ayvacı Erdoğan, Ayşe - Tümer, Abdullah Erdal. “Deep Learning Method for Handwriting Recognition”. MANAS Journal of Engineering 9/1 (June 1, 2021): 85-92. https://doi.org/10.51354/mjen.852312.
JAMA
1.Ayvacı Erdoğan A, Tümer AE. Deep Learning Method for Handwriting Recognition. MJEN. 2021;9:85–92.
MLA
Ayvacı Erdoğan, Ayşe, and Abdullah Erdal Tümer. “Deep Learning Method for Handwriting Recognition”. MANAS Journal of Engineering, vol. 9, no. 1, June 2021, pp. 85-92, doi:10.51354/mjen.852312.
Vancouver
1.Ayşe Ayvacı Erdoğan, Abdullah Erdal Tümer. Deep Learning Method for Handwriting Recognition. MJEN. 2021 Jun. 1;9(1):85-92. doi:10.51354/mjen.852312