GSoC/2022/StatusReports/QuocHungTran: Difference between revisions
Quochungtran (talk | contribs) |
Quochungtran (talk | contribs) |
||
(24 intermediate revisions by the same user not shown) | |||
Line 7: | Line 7: | ||
'''Mentors''' : Gilles Caulier, Maik Qualmann, Thanh Trung Dinh | '''Mentors''' : Gilles Caulier, Maik Qualmann, Thanh Trung Dinh | ||
==== Project Proposal ==== | ==== Project Proposal ==== | ||
Line 41: | Line 40: | ||
* https://invent.kde.org/graphics/digikam/-/merge_requests/177 | * https://invent.kde.org/graphics/digikam/-/merge_requests/177 | ||
=== KDE repository for OCR researching === | |||
* https://invent.kde.org/quochungtran/gsoc2022-ocr-tesseract-test/-/tree/master/ | |||
=== Issue tracker === | === Issue tracker === | ||
Line 47: | Line 50: | ||
=== My blog for GSoC === | === My blog for GSoC === | ||
My entire blog : | |||
* https://quochungtran.github.io/ | * https://quochungtran.github.io/ | ||
===== June 13 to June 27 (Week 1 - 2) - Tesseract Page Segmentation Modes (PSMs) Explained and their relations ===== | |||
https://quochungtran.github.io/junk/2022/06/27/week1-2.html | |||
===== June 27 to July 10 (Week 3 - 4) - Preprocessing for improving the quality of the output ===== | |||
https://quochungtran.github.io/junk/2022/07/25/week3-4.html | |||
===== June 11 to July 25 (Week 5 - 6) - Preprocessing for improving the quality of the output ===== | |||
https://quochungtran.github.io/junk/2022/07/25/weed5-6.html | |||
===== July 26 to August 8 (Week 7 - 8) - OCR batch processing based on internal-multi threading ===== | |||
https://quochungtran.github.io/junk/2022/08/08/weed7-8.html | |||
===== August 9 to August 16 (Week 9) - Storing OCR result ===== | |||
https://quochungtran.github.io/junk/2022/08/14/weed9.html | |||
===== August 17 to September 4 (Week 10 - 12) - Code refactoring and demo application ===== | |||
https://quochungtran.github.io/junk/2022/08/30/lasteweeks.html | |||
= '''Conclusion''' = | |||
During the significant coding period of GSoC 2022, we successfully implemented the tool to convert documented image data to Text format using Tesseract, an open-source Optical Characters Recognition engine. Besides, we are totally able to improve the quality of OCR accuracy by embedding preprocessing methods. | |||
At the end of the coding period, thanks to the mentor's dedicated help, the implementation of the plugin was completed successfully with a better layout. | |||
[[File:OCR Text converter tool.png]] | |||
[[File:Text_edit_plugin.png]] |
Latest revision as of 19:16, 11 September 2022
New DigiKam Plugin to Process Optical Character Recognition(OCR)
The goal of this project is to implement a new generic DPlugin to process images in batches with Tesseract. Tesseract is an open-source OCR engine. Even though it can be painful to implement and modify sometimes, only a few free and powerful OCR alternatives are available on the current market. Tesseract is compatible with many programming languages and frameworks through wrappers that can be found here. Tesseract can be used with the existing layout analysis to recognize text within a large document, or it can be used in conjunction with an external text detector to recognize text from an image of a single text line.
Thanks to the help of the OCR plugin in Digikam. The users will be able to select optional parameters to improve the quality of record detected text in image metadata. The output text will be saved in XML files, recorded in the exif of jfif, or the user was asked to store output text under the text file in the locale where they want. Furthermore, Digikam users will be able to review them and correct (spell checking) any OCR errors.
Mentors : Gilles Caulier, Maik Qualmann, Thanh Trung Dinh
Project Proposal
Digikam Plugin to Process Optical Character Recognition(OCR)
GitLab development branch
Contacts
Email: [email protected]
Github: quochungtran
Invent KDE: quochungtran
LinkedIn: https://www.linkedin.com/in/tran-quoc-hung-6362821b3/
Project goals
27/06/2022 :
Researching preprocessing for improving the quality of the output. These results can be applied for building preprocessing of image engine to improve the quality of plugin.
30/08/2022 :
A new optional Generic Tesseract-based DPlugin is available in DigiKam and Showfoto to run OCR automatically. Recognized text can be stored in a text file and XMP metadata for users to review and generate them.
Links to Blogs and other writing
Main merge request
KDE repository for OCR researching
Issue tracker
My blog for GSoC
My entire blog :
June 13 to June 27 (Week 1 - 2) - Tesseract Page Segmentation Modes (PSMs) Explained and their relations
https://quochungtran.github.io/junk/2022/06/27/week1-2.html
June 27 to July 10 (Week 3 - 4) - Preprocessing for improving the quality of the output
https://quochungtran.github.io/junk/2022/07/25/week3-4.html
June 11 to July 25 (Week 5 - 6) - Preprocessing for improving the quality of the output
https://quochungtran.github.io/junk/2022/07/25/weed5-6.html
July 26 to August 8 (Week 7 - 8) - OCR batch processing based on internal-multi threading
https://quochungtran.github.io/junk/2022/08/08/weed7-8.html
August 9 to August 16 (Week 9) - Storing OCR result
https://quochungtran.github.io/junk/2022/08/14/weed9.html
August 17 to September 4 (Week 10 - 12) - Code refactoring and demo application
https://quochungtran.github.io/junk/2022/08/30/lasteweeks.html
Conclusion
During the significant coding period of GSoC 2022, we successfully implemented the tool to convert documented image data to Text format using Tesseract, an open-source Optical Characters Recognition engine. Besides, we are totally able to improve the quality of OCR accuracy by embedding preprocessing methods.
At the end of the coding period, thanks to the mentor's dedicated help, the implementation of the plugin was completed successfully with a better layout.