5

I am working on a face recognition project. I have pictures with different lighting so I need to do illumination normalization. I read a paper which which claims to do illumination normalization. The paper describe the following function and values.

1- gamma correction with gamma = 0.2
2- Difference of Gaussian (DOG) filtering with (sigma0 = 1, sigma1 =2)
3- contrast equalization (truncation threshold of 10 and compressive component 0.1 is used in the paper)

I use CvPow for gamma correction, CvSmooth for DoG and Threshold() with truncate (I don't know how to specify the compression component) but I didn't get the exact image. I used histogram equalization for contrast equalization.

If someone has done it before or has any idea??

Link to the paper: http://lear.inrialpes.fr/pubs/2007/TT07/Tan-amfg07a.pdf

The code is below: (Python code of Peb Aryan converted to JAVACV)

public static IplImage preprocessImg(IplImage img)
{
    IplImage gf = cvCreateImage(cvSize(img.width(),img.height()),IPL_DEPTH_32F, 1 );
    IplImage gr = IplImage.create(img.width(),img.height(), IPL_DEPTH_8U, 1);
    IplImage tr = IplImage.create(img.width(),img.height(), IPL_DEPTH_8U, 1);

    IplImage b1 = IplImage.create(img.width(),img.height(),IPL_DEPTH_32F, 1 );
    IplImage b2 = IplImage.create(img.width(),img.height(),IPL_DEPTH_32F, 1 );
    IplImage b3 = IplImage.create(img.width(),img.height(),IPL_DEPTH_32F, 1 );
    CvArr mask = IplImage.create(0,0,IPL_DEPTH_8U, 1 );

    cvCvtColor(img, gr, CV_BGR2GRAY); 
    gamma(gr,gr,gf);

    cvSmooth(gf,b1,CV_GAUSSIAN, 1);
    cvSmooth(gf,b2,CV_GAUSSIAN,23);
    cvSub(b1,b2,b2,mask);         
    cvConvertScale(b2,gr,127,127);
    cvEqualizeHist(gr, gr);

    //cvThreshold(gr,tr,255,0,CV_THRESH_TRUNC);

    return gr;
}

public static void gamma(IplImage src,IplImage dst, IplImage temp)
{
    cvConvertScale(src,temp, 1.0/255,0);
    cvPow(temp, temp, 0.2);
    cvConvertScale(temp, dst, 255,0);
}

Here is the result of my attempt:

My attempt

And the reference from the paper:

enter image description here

2
  • This question would be much better if you posted your code and described what differs in your method. Even better, post links to example images. – Aurelius Jul 12 '13 at 16:23
  • @Aurelius: The code is now available and the pictures are also uploaded. – Shah Jul 14 '13 at 14:26
1

Don't know if it's too late for you.

In the original paper, DoG was performed by a given sigma, here your radius(23) it too big. Try radius = 7 and radius = 1. About the equalization step, it's different from the paper. you need implement one by yourself.

BTW: some basic functions like cvSmooth was not implemented right for your application. You probably need to implement by yourself to get a better result.

1
  • I used CvNormalize instead of EqualizeHist and i get closer image to the image mentioned in the paper. – Shah Sep 19 '13 at 12:09

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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