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I am working on OCR recognition of printed text. In particular I am focusing on the preprocessing step to improve the results of the Tesseract engine. I have already obtained good results with adaptive thresholding, noise removal, text deskew, etc... But still Tesseract seems to fail when other commercial product return decent results.

I used the following test image and here are the results obtained with Tesseract 3.04 compared to two commercial OCR apis. All the 3 services were provided with the same binary image that contains some slightly blurred text.

Text image used to compared the 3 OCR products

Tesseract

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Online OCR

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Now I wonder whether the big gap between Tesseract and the other two products is due to a different engine (for sure ABBYY uses its own engine, not sure about OCR Web Service) or there are some other preprocessing steps that can be done before running Tesseract. Do you have any suggestions?

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Here a suggestion for "magic" OCR preprocessing. In order to explain the principle of the proposed preprocessing idea, let's consider an excerpt from the provided text image on which all of the tested OCRs failed :

original image

and apply to it some "preprocessing-wisdom". First the usual thresholding:

thresholded image

and then some "magic" by shooting vertical lines through word-elements, detecting max. 2 pixel high "bars" and cutting them at their edges along with cutting the word-element down to its bottom line:

after extracting "i"s

Now switching from shooting lines through the word-elements in this image from vertical to horizontal ones in order to detect very wide "bars" and cut them vertical in the middle of their width:

after splitting grown-together characters

This should help any OCR-engine to provide better results on this particular image. I can imagine that some of the commercial OCR-engines use this approach already being able to provide a better recognition than this ones tested.

In this context let me mention another free OCR-engines available in the Ubuntu repositories (comparable with tesseract). Testing them against each other you can wonder even more how it comes that they provide different results and then look into their source code to know :) and infer from this experience something about the commercial ones.

sudo apt-get install cuneiform gocr ocrad

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