16

I am using OpenCV to prepare images for OCR from an iPhone camera, and I have been having trouble getting the results I need for an accurate OCR scan. Here is the code I am using now.

    cv::cvtColor(cvImage, cvImage, CV_BGR2GRAY);
    cv::medianBlur(cvImage, cvImage, 0);
    cv::adaptiveThreshold(cvImage, cvImage, 255, CV_ADAPTIVE_THRESH_MEAN_C, CV_THRESH_BINARY, 5, 4);

This method takes a bit too long and does not provide me good results. enter image description here enter image description here

Any suggestions on how I could make this more effective? The images are coming from an iPhone camera.

After using Andry's suggestion.

enter image description here

    cv::Mat cvImage = [self cvMatFromUIImage:image];
    cv::Mat res;
    cv::cvtColor(cvImage, cvImage, CV_RGB2GRAY);
    cvImage.convertTo(cvImage,CV_32FC1,1.0/255.0);
    CalcBlockMeanVariance(cvImage,res);
    res=1.0-res;
    res=cvImage+res;
    cv::threshold(res,res, 0.85, 1, cv::THRESH_BINARY);
    cv::resize(res, res, cv::Size(res.cols/2,res.rows/2));
    image = [self UIImageFromCVMat:cvImage];

Method:

void CalcBlockMeanVariance(cv::Mat Img,cv::Mat Res,float blockSide=21) // blockSide - the parameter (set greater for larger font on image)
{
    cv::Mat I;
    Img.convertTo(I,CV_32FC1);
    Res=cv::Mat::zeros(Img.rows/blockSide,Img.cols/blockSide,CV_32FC1);
    cv::Mat inpaintmask;
    cv::Mat patch;
    cv::Mat smallImg;
    cv::Scalar m,s;

    for(int i=0;i<Img.rows-blockSide;i+=blockSide)
    {
        for (int j=0;j<Img.cols-blockSide;j+=blockSide)
        {
             patch=I(cv::Rect(j,i,blockSide,blockSide));
            cv::meanStdDev(patch,m,s);
            if(s[0]>0.01) // Thresholding parameter (set smaller for lower contrast image)
            {
                Res.at<float>(i/blockSide,j/blockSide)=m[0];
            }else
            {
                Res.at<float>(i/blockSide,j/blockSide)=0;
            }
        }
    }

    cv::resize(I,smallImg,Res.size());

    cv::threshold(Res,inpaintmask,0.02,1.0,cv::THRESH_BINARY);

    cv::Mat inpainted;
    smallImg.convertTo(smallImg,CV_8UC1,255);

    inpaintmask.convertTo(inpaintmask,CV_8UC1);
    inpaint(smallImg, inpaintmask, inpainted, 5, cv::INPAINT_TELEA);

    cv::resize(inpainted,Res,Img.size());
    Res.convertTo(Res,CV_32FC1,1.0/255.0);

}

Any idea why I am getting this result? The OCR results are pretty good, but would be better if I could get an image similar to the one you got. I am developing for iOS if that matters. I had to use cvtColor because the method expects a single channel image.

  • 2
    Isn't that third param the radius of the convolution mask? Must be odd, and non-zero. – danh Mar 2 '14 at 0:33
  • Yeah, you're right let me go check out what the default is and try that. EDIT: Tried a few and hardly changed the results, anything else? – user3247146 Mar 2 '14 at 0:35
  • change blocksize parameter of adaptive threshold to some higher values, like 25 etc. – Abid Rahman K Mar 2 '14 at 6:55
19

Here is my result: enter image description here

Here is the code:

#include <iostream>
#include <vector>
#include <stdio.h>
#include <stdarg.h>
#include "opencv2/opencv.hpp"
#include "fstream"
#include "iostream"
using namespace std;
using namespace cv;

//-----------------------------------------------------------------------------------------------------
// 
//-----------------------------------------------------------------------------------------------------
void CalcBlockMeanVariance(Mat& Img,Mat& Res,float blockSide=21) // blockSide - the parameter (set greater for larger font on image)
{
    Mat I;
    Img.convertTo(I,CV_32FC1);
    Res=Mat::zeros(Img.rows/blockSide,Img.cols/blockSide,CV_32FC1);
    Mat inpaintmask;
    Mat patch;
    Mat smallImg;
    Scalar m,s;

    for(int i=0;i<Img.rows-blockSide;i+=blockSide)
    {       
        for (int j=0;j<Img.cols-blockSide;j+=blockSide)
        {
            patch=I(Range(i,i+blockSide+1),Range(j,j+blockSide+1));
            cv::meanStdDev(patch,m,s);
            if(s[0]>0.01) // Thresholding parameter (set smaller for lower contrast image)
            {
                Res.at<float>(i/blockSide,j/blockSide)=m[0];
            }else
            {
                Res.at<float>(i/blockSide,j/blockSide)=0;
            }           
        }
    }

    cv::resize(I,smallImg,Res.size());

    cv::threshold(Res,inpaintmask,0.02,1.0,cv::THRESH_BINARY);

    Mat inpainted;
    smallImg.convertTo(smallImg,CV_8UC1,255);

    inpaintmask.convertTo(inpaintmask,CV_8UC1);
    inpaint(smallImg, inpaintmask, inpainted, 5, INPAINT_TELEA);

    cv::resize(inpainted,Res,Img.size());
    Res.convertTo(Res,CV_32FC1,1.0/255.0);

}
//-----------------------------------------------------------------------------------------------------
// 
//-----------------------------------------------------------------------------------------------------
int main( int argc, char** argv )
{
    namedWindow("Img");
    namedWindow("Edges");
    //Mat Img=imread("D:\\ImagesForTest\\BookPage.JPG",0);
    Mat Img=imread("Test2.JPG",0);
    Mat res;
    Img.convertTo(Img,CV_32FC1,1.0/255.0);
    CalcBlockMeanVariance(Img,res); 
    res=1.0-res;
    res=Img+res;
    imshow("Img",Img);
    cv::threshold(res,res,0.85,1,cv::THRESH_BINARY);
    cv::resize(res,res,cv::Size(res.cols/2,res.rows/2));
    imwrite("result.jpg",res*255);
    imshow("Edges",res);
    waitKey(0);

    return 0;
}
  • 10
    perhaps you should add more explanation for your method and code. – flowfree Mar 2 '14 at 12:24
  • 1
    Take a look here: stackoverflow.com/questions/12781874/… You can use cv::Rect for extracting patch (take care with rows and cols it not the same order as width and height). – Andrey Smorodov Mar 2 '14 at 19:40
  • 1
    You can replace this line with: patch=I(cv::Rect(j,i,blockSide,blockSide)); – Andrey Smorodov Mar 2 '14 at 19:47
  • 1
    Yes, the image must be converted to grayscale. I didn't make this because Mat Img=imread("Test2.JPG",0); loads image in grayscale. – Andrey Smorodov Mar 3 '14 at 6:51
  • 2
    I'm not an expert in iOS programming, but your output image is color image, so I think you miss color to gray conversion somewhere. Check image types with debugger in runtime. It may be also problem with output format image. May be you need convert the result back to BGR before displaying. – Andrey Smorodov Mar 3 '14 at 7:02
8

JAVA CODE: A long time has passed since this question was made, but I've rewritten this code from C++ to Java in case someone will need it (I needed to use it for developing an app on android studio).

public Bitmap Thresholding(Bitmap bitmap)
{
    Mat imgMat = new Mat();
    Utils.bitmapToMat(bitmap, imgMat);
    imgMat.convertTo(imgMat, CvType.CV_32FC1, 1.0 / 255.0);

    Mat res = CalcBlockMeanVariance(imgMat, 21);
    Core.subtract(new MatOfDouble(1.0), res, res);
    Imgproc.cvtColor( imgMat, imgMat, Imgproc.COLOR_BGRA2BGR);
    Core.add(imgMat, res, res);

    Imgproc.threshold(res, res, 0.85, 1, Imgproc.THRESH_BINARY);

    res.convertTo(res, CvType.CV_8UC1, 255.0);
    Utils.matToBitmap(res, bitmap);

    return bitmap;
}

public Mat CalcBlockMeanVariance (Mat Img, int blockSide)
{
    Mat I = new Mat();
    Mat ResMat;
    Mat inpaintmask = new Mat();
    Mat patch;
    Mat smallImg = new Mat();
    MatOfDouble mean = new MatOfDouble();
    MatOfDouble stddev = new MatOfDouble();

    Img.convertTo(I, CvType.CV_32FC1);
    ResMat = Mat.zeros(Img.rows() / blockSide, Img.cols() / blockSide, CvType.CV_32FC1);

    for (int i = 0; i < Img.rows() - blockSide; i += blockSide)
    {
        for (int j = 0; j < Img.cols() - blockSide; j += blockSide)
        {
            patch = new Mat(I,new Rect(j,i, blockSide, blockSide));
            Core.meanStdDev(patch, mean, stddev);

            if (stddev.get(0,0)[0] > 0.01)
                ResMat.put(i / blockSide, j / blockSide, mean.get(0,0)[0]);
            else
                ResMat.put(i / blockSide, j / blockSide, 0);
        }
    }

    Imgproc.resize(I, smallImg, ResMat.size());
    Imgproc.threshold(ResMat, inpaintmask, 0.02, 1.0, Imgproc.THRESH_BINARY);

    Mat inpainted = new Mat();
    Imgproc.cvtColor(smallImg, smallImg, Imgproc.COLOR_RGBA2BGR);
    smallImg.convertTo(smallImg, CvType.CV_8UC1, 255.0);

    inpaintmask.convertTo(inpaintmask, CvType.CV_8UC1);
    Photo.inpaint(smallImg, inpaintmask, inpainted, 5, Photo.INPAINT_TELEA);

    Imgproc.resize(inpainted, ResMat, Img.size());
    ResMat.convertTo(ResMat, CvType.CV_32FC1, 1.0 / 255.0);

    return ResMat;
}
  • what version of openCV did you use? When I'm trying to run your snippet my app crashing with Fatal signal 11 (SIGSEGV) error. Do you know why is this happening? – Andrey Mohyla Jan 24 '16 at 3:04
  • 1
    I am using 2.4.8 version of OpenCV. You should search that error code in google for some clues, because code for me works without errors. If you find what causes the error, write that in the comments. – Dainius Šaltenis Jan 24 '16 at 10:02
  • 1
    So I've changed OpenCV to 2.4.8 and now everything works fine) I can't find a line which causes the crash because this error refers to C++ openCV library. – Andrey Mohyla Jan 24 '16 at 13:36
1

As the light is almost in uniform, and the foreground is easily distinguished with the background. So I think just directly threshold (using OTSU) is ok for OCR. (Almost the same with @Andrey's answer in text regions).

enter image description here


OpenCV 3 Code in Python:

#!/usr/bin/python3
# 2018.01.17 16:41:20 CST
import cv2
import numpy as np

img = cv2.imread("ocr.jpg")
gray = cv2.cvtColor(median, cv2.COLOR_BGR2GRAY)
th, threshed = cv2.threshold(gray,127,255, cv2.THRESH_BINARY|cv2.THRESH_OTSU)
print(th)

cv2.imwrite("res.png", threshed)

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