dali92002/DocEnTR
DocEnTr: An end-to-end document image enhancement transformer - ICPR 2022
This project helps anyone working with scanned documents by cleaning up poor-quality images. It takes in degraded document images, such as those with smudges, low contrast, or faded text, and outputs crisp, binarized versions where text is clearly separated from the background. Document archivists, data entry specialists, or researchers digitizing old texts would find this useful.
186 stars. No commits in the last 6 months.
Use this if you need to transform hard-to-read scanned documents into clean, black-and-white images for better readability or further processing.
Not ideal if you're looking for a tool to enhance photographs or other types of images that aren't primarily document-based.
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Jan 17, 2025
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