I'm working on digitizing a large collection of scanned documents, working with Tesseract 3 as my OCR engine. The quality of its output is mediocre, as it often produces both garbage characters before and after the actual text, and misspellings within the text.

For the former problem, it seems like there must be strategies for determining which text is actually text and which text isn't (much of this text is things like people's names, so I'm looking for solutions other than looking up words in a dictionary).

For the typo problem, most of the errors stem from a few misclassifications of letters (substituting l, 1, and I for one another, for instance), and it seems like there should be methods for guessing which words are misspelled (since not too many words in English have a "1" in the middle of them), and guessing what the appropriate correction is.

What are the best practices in this space? Are there free/open-source implementations of algorithms that do this sort of thing? Google has yielded lots of papers, but not much concrete. If there aren't implementations available, which of the many papers would be a good starting place?


For "determining which text is actually text and which text isn't" you might want to look at rmgarbage from same department that developed Tesseract (the ISRI). I've written a Perl implementation and there's also a Ruby implementation. For the 1 vs. l problem I'm experimenting with ocrspell (again from the same department), for which their original source is available.

I can only post two links, so the missing ones are:

  • ocrspell: enter "10.1007/PL00013558" at dx.doi.org]
  • rmgarbage: search for "Automatic Removal of Garbage Strings in OCR Text: An Implementation"
  • ruby implementation: search for "docsplit textcleaner"

Something that could be useful for you is to try this free online OCR and compare its results with yours to see if by playing with the image (e.g. scaling up/down) you could improve the results.

I was using it as an "upper bound" of the results I should get when using tesseract myself (after using OpenCV to modify the images).

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