Treffer: Automate Identification and Recognition of Handwritten Text from an Image

Title:
Automate Identification and Recognition of Handwritten Text from an Image
Source:
Turkish Journal of Computer and Mathematics Education (TURCOMAT); Vol. 12 No. 3 (2021); 3800 - 3808; 3048-4855
Publisher Information:
Ninety Nine Publication 2021-04-11
Document Type:
E-Ressource Electronic Resource
Availability:
Open access content. Open access content
Note:
application/pdf
English
Other Numbers:
INNNP oai:ojs2.turcomat.org:article/1666
1432769867
Contributing Source:
NINETY NINE PUBN
From OAIster®, provided by the OCLC Cooperative.
Accession Number:
edsoai.on1432769867
Database:
OAIster

Weitere Informationen

Handwritten text acknowledgment is yet an open examination issue in the area of Optical Character Recognition (OCR). This paper proposes a productive methodology towards the advancement of handwritten text acknowledgment frameworks. The primary goal of this task is to create AI calculation to empower element and information extraction from records with manually written explanations, with an, expect to distinguish transcribed words on a picture. The main aim of this project is to extract text, this text can be handwritten text or it can machine printed text and convert it into computer understandable or wNe can say computer editable format. To implement thais project we have used PyTesseract which is an open-sourcemOCR engine used to recognize handwritten text and OpenCV a library in python used to solve computer vision problems. So the input image is executed in various steps, first there is pre-processing of an image then there is text localization after that there is character segmentation and character recognition and finally we have post-processing               of image. Further image processingalgorithms can also be used to deal with the multiple characters input in a single image, tilt image, or rotated image. The prepared framework gives a normal precision of more than 95 % with the concealed test picture.