This page (revision-61) was last changed on 19-Sep-2022 11:15 by Arnab Ghosh Chowdhury

This page was created on 10-May-2022 15:30 by Arnab Ghosh Chowdhury

Only authorized users are allowed to rename pages.

Only authorized users are allowed to delete pages.

Page revision history

Version Date Modified Size Author Changes ... Change note
61 19-Sep-2022 11:15 5 KB Arnab Ghosh Chowdhury to previous

Page References

Incoming links Outgoing links

Version management

Difference between version and

At line 16 added one line
- Linux OS (operating system)\\
At line 17 changed one line
- Advanced User: Python, Basic Deep Learning (PyTorch)\\
- Advanced User: Python, Basic Deep Learning (PyTorch), Shell scripting\\
At line 19 changed one line
\\__%%( color: #003399; font-size: 16px;)Required programs %%( color: #003000; font-size: 14px;)(step-by-step guide and links provided in user guideline blow): __
\\__%%( color: #003399; font-size: 16px;)Required programs %%( color: #003000; font-size: 14px;)(step-by-step guide and links provided in GitHub and user guideline blow): __
At line 21 changed one line
\\- Java
\\- Shell script
At line 23 changed one line
\\- Tool files from the GitHub (link below)
\\- Linux
\\- Code from GitHub ([https://github.com/cslab-hub/MatrixDataExtractor])
At line 26 changed one line
Any support to provide table detection model will not be provided unfortunately after project completion. The accuracy of table detection model depends on various factors such as volume, variety of annotated datasets, hyperparameters of model. You can do your experiment to get better accuracy of your table detection model.
Any support to provide table detection model will not be provided unfortunately after project completion. The accuracy of table detection model depends on various factors such as volume, variety of annotated datasets, hyperparameters of model. You can do your experiment to get better accuracy of your table detection model. To get table detection model weight on Di-Plast dataset, you can request to Semantic Information Systems Research Group, Osnabrueck University, Osnabrueck, Germany ( [https://www.informatik.uni-osnabrueck.de/arbeitsgruppen/semantische_informationssysteme.html|https://www.informatik.uni-osnabrueck.de/arbeitsgruppen/semantische_informationssysteme.html] ).
At line 30 added one line
At line 30 changed one line
[Data Extractor/MDE_Home.png]
[Data Extractor/MDE_SyncData.png]
[Data Extractor/MDE_DataInfoExt_1.png]
[Data Extractor/MDE_DataInfoExt_2.png]
[Data Extractor/MDE_DataInfoExt_3.png]
[Data Extractor/MDE_TableDataExt.png]
At line 34 changed one line
- (Text)
\\ - Extract textual and tabular information from PDF documents.
\\ - ⚠️ For brief overview about the tool, we recommend to open and save the presentation before proceeding: [Data Extractor/Di-Plast_MDE_UI.pdf]
At line 36 removed one line
At line 38 changed one line
- (Text)
\\ - Open-source document table detection tools are not suitable enough to extract tabular information from PDF documents by considering all possible document templates and table templates. Due to diverse document templates and table templates, computer vision and transfer learning based document table detection emerged significantly. This tool helps to extract textual and tabular data (in excel files) from your domain specific dataset. The extracted data can be used in Big Data technologies and Natural Language Processing (NLP).
At line 42 changed 2 lines
\\ - The tool can be accessed throughout the following link: [https://share.streamlit.io/cslab-hub/data_validation/main/main.py]
\\- Get the code/installation files from github [https://cslab-hub-data-validation-main-bx6ggw.streamlitapp.com/] and start using the app by browsing through the pages.
\\ - Get GitHub [https://github.com/cslab-hub/MatrixDataExtractor], copy code into your computer, prepare your annotated dataset, build or request about table detection model weight and model description file, and start using it\\
At line 46 removed 4 lines
Get the GitHub [https://github.com/cslab-hub/MatrixDataExtractor], copy
the code into your computer, prepare your annotated dataset and start using it\\