MasterAI-EAM/GraphMaster
Fully automated end to end framework to extract data from complex charts and other figures in scientific literature.
This tool helps researchers and scientists extract numerical data from charts and figures embedded within scientific PDF literature. It takes a scientific PDF document as input and automatically identifies, extracts, and digitizes data points from complex graphs, outputting them into a structured CSV format. Researchers can then use this data for further analysis without manual transcription.
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Use this if you need to quickly and accurately extract underlying numerical data from graphs and charts found in scientific papers, converting visual information into a usable tabular format.
Not ideal if you are looking to extract data from tables or simple images without discernible axes and data points, or if your documents are not in PDF format.
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19
Forks
3
Language
Jupyter Notebook
License
MIT
Category
Last pushed
Oct 30, 2022
Commits (30d)
0
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