Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Tesseract OCR engine sometimes outputs text that has no meaning, i want to design an algorithm that neglects any text or word that has no meaning, below is some sort of output text that i want to neglect,my simple solution is to count the words in the recognized text that's separated by " " and the text which has too many words will be garbage(Hint: i'm scanning images which at most will contains 40 words) any idea will be helpful,thanks.

 °J!9O‘ !P99W M9N 6 13!-|15!Cl ‘I-/Vl
 978 89l9 Z0 3+ 3 'l9.l.
 97 999 VLL lLOZ+ 3 9l!q°lN
 wo0'|axno/(@|au1e>1e: new;
 1=96r2a1ey\1 1uauud0|e/\e(]
 |8UJB){ p8UJL|\7'
share|improve this question
Very broad question. First, how do you know if a text or a word has no meaning? (i.e. do you have a perfect dictionary?). How do you account for local mistakes? Eg. If 'ENGINE' is read as 'ENGTINE' do you discard it completely? I can go on and on. –  ElKamina Apr 16 '12 at 19:07
i updated my question –  chostDevil Apr 16 '12 at 19:08
You could look for too many consecutive symbols, or consecutive letter combinations that do not occur in the language of the text, on top of looking at word length. 1-3 letter words are not likely to be misspelled or from another language, so dictionary could help for those. –  Benjamin Apr 16 '12 at 19:51

2 Answers 2

up vote 3 down vote accepted

Divide the output text into words. Divide the words into triples. Count the triple frequencies, and compare to triple frequencies from text of a known-good text corpus (EG all the articles from some mailing list discussing what you intend to OCR, minus the header lines).

When I say "triples", I mean:

whe, hen, i, say, tri, rip, ipl, ple, les, i, mea, ean

...so "i" has a frequency of 2 in this short example, while the others are all frequency 1.

If you do a frequency count of each of these triples for a large document in your intended language, it should become possible to be reasonably accurate in guessing whether a string is in the same language.

Granted, it's heuristic.

I've used a similar approach for detecting English passwords in a password changing program. It worked pretty well, though there's no such thing as a perfect "obvious password rejecter".

share|improve this answer
These "triples" are properly called trigrams. –  maniek Apr 16 '12 at 21:45

Check the words against a dictionary?

Of course, this will have false-positives for things like foreign-phrases or code. The problem in general is intractable (ex. is this code or gibberish? :) ). The only (nearly) perfect method would be to use this as a heuristic to flag certain sections for human review.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.