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I am working on a Android application using real-time OCR. I using OpenCV and Tesseract Library. But the performance is very poor, even on my Galaxy SIII. There are any methods to improve the performance? It is my code:

    Mat mGray = new Mat();
Bitmap bmp = Bitmap.createBitmap(mGray.cols(), mGray.rows(), Bitmap.Config.ARGB_8888);
String recognizedText = tessBaseApi.getUTF8Text();
Log.i("Reg", recognizedText);

Will the speed of tesseract OCR be reduced by passing bitmap to the Tesseract API? What pre-processing should I perform before passing to the Tesseract API?

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Are you talking about speed or recognition accuracy? –  rmtheis Oct 3 '12 at 23:12
I am taking about the speed, it is very slow. –  QuiLl HoN Oct 4 '12 at 3:39

4 Answers 4

Some things that might make it faster are:

  • Select a smaller region from mGray where your text is, before createBitmap - so the more heavy methods that follow process a smaller image.
  • Changing Bitmap.Config.ARGB_8888 to Bitmap.Config.RGB_565 - your image is grayscale, it will not need a ARGB bitmap.
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The TessBaseAPI only accept ARGB_8888 image. There are any algorithms for finding the text region? Thank you. –  QuiLl HoN Oct 6 '12 at 3:45

You can have Tesseract only do the recognition pass 1, so that it skips passes 2 through 9, when it calls recog_all_words().

Change the following line in baseapi.cpp and rebuild your Tesseract library project:

if (tesseract_->recog_all_words(page_res_, monitor, NULL, NULL, 0)) {

Change it to:

if (tesseract_->recog_all_words(page_res_, monitor, NULL, NULL, 1)) {
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I edited the code and rebuilt the library. But the speed still very slow. –  QuiLl HoN Oct 6 '12 at 8:23

One thing to try is to binarize the image using adaptive thresholding (adaptiveThreshold in OpenCV).

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Tesseract already performs this internally. It uses Otsu's Thresholding. code.google.com/p/tesseract-ocr/source/browse/ccstruct/… –  Raghav Feb 12 at 22:51
Otsu's method uses a single global threshold. This does not work as well as adaptive thresholding if the lighting is not completely uniform (see docs.opencv.org/trunk/doc/py_tutorials/py_imgproc/… for examples) –  ojs Feb 17 at 12:39
Indeed Otsu does not work as great, but it is still very fast. So while this might solve precision issues, it does not affect performance greatly. –  Dmitry Zaitsev Apr 10 at 9:24

Why dont you try using NDK for this? I think that if you want to increase the performance of an android project, while doing things so deep like OCR, doing it natively will increase the performance a lot.

I would like to know about the progress of it, keep me posted.

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