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.

I am writing a function Conv2ByFFT() to do the Gaussian blur which is similar to the GaussianBlur() in openCV api. But as i compare the effects between by function and GaussianBlur() api, i find that the former is not as "blurred" as the latter and i don't know why.

this is the "correct" one this is the "correct" one

this is the result using my Conv2ByFFT() this is the result using my Conv2ByFFT()

here's some code

void Conv2ByFFT(const Mat& f,const Mat& g,Mat& result)
{
result.create(abs(f.rows-g.rows)+1,abs(f.cols-g.cols)+1,f.type());

//pad the images and get optimal FFT size
Size dftSize;
dftSize.width = getOptimalDFTSize(f.cols + g.cols - 1);
dftSize.height = getOptimalDFTSize(f.rows + g.cols - 1);

Mat tmpF(dftSize,f.type(),Scalar::all(0));
Mat tmpG(dftSize,g.type(),Scalar::all(0));

Mat roiF(tmpF, Rect(0,0,f.cols,f.rows));
f.copyTo(roiF);
Mat roiG(tmpG, Rect(0,0,g.cols,g.rows));
g.copyTo(roiG);

//perform Fourier Transform
dft(tmpF,tmpF,0,f.rows);
dft(tmpG,tmpG,0,g.rows);

//perform per-element multiplication of two Fourier spectrums
mulSpectrums(tmpF,tmpG,tmpF,0);

//perform inverse Fourier Transform
dft(tmpF,tmpF,DFT_INVERSE+DFT_SCALE,result.rows);

tmpF(Rect(0,0,result.cols,result.rows)).copyTo(result);
}

int main()
{
//read image
const char* imagename = "c:\\lena.bmp";
Mat img = imread(imagename);

//check image
if(img.empty())
{  fprintf(stderr, "Can not load image %s\n", imagename);
return -1;
} 
if( !img.data )
    return -1;

Mat src;

//convert the rgbimage into grayimage
cvtColor(img,src,CV_BGR2GRAY);

//save the grayimage
imwrite("lenagray.bmp",src);

//convert the image into float type 
src.convertTo(src,CV_64FC1);


//******************************************************************************
//                    use GaussianBlur() in openCV
//******************************************************************************

//use Gaussian filter to blur the image
Mat dst = src.clone();
GaussianBlur(src,dst,Size(11,11),2);

//show and save the result
dst.convertTo(dst,CV_8U);
imshow("image",dst);
imwrite("lenablur.bmp",dst);

//******************************************************************************
//                    use GaussianBlur() in openCV
//******************************************************************************




//******************************************************************************
//                    use self-defining Conv2ByFFT()
//******************************************************************************

Mat result;

Mat gaussianFilter = getGaussianKernel(11,2,CV_64FC1);

//do the convolution to blur the image
Conv2ByFFT(src,gaussianFilter,result);

//show and save the result
result.convertTo(result,CV_8U);
//imshow("image1",result);
imwrite("lenablur1.bmp",result);

//******************************************************************************
//                    use self-defining Conv2ByFFT()
//******************************************************************************


cvWaitKey();
return 0;
}
share|improve this question
    
The problem is likely to be in your conv2byfft function, not the code you've posted. Please edit the question to show the algorithm you are using within that function (don't just post the whole code, explain what you are trying to achieve, step by step). And if possible post links to images showing the difference between your implementation and the "correct" one. –  Martin Thompson Oct 12 '11 at 9:11
    
@MartinThompson:thanks for your advice,I have edited the question linking the images and the conv2byfft function with some comments. –  yvetterowe Oct 12 '11 at 9:34
    
did u succeed with the coding? can you share the corrected version of your code? –  Abhishek Thakur Dec 19 '12 at 15:38

1 Answer 1

up vote 5 down vote accepted

getGaussianKernel returns a vector of coefficients, not a 2-d kernel.

As the 2-d Gaussian kernel is separable, in the convolution method, this vector is applied in both directions which has the same effect as applying the full kernel all at once.

Your FFT function merely convolves the vector with the image. I think if you look carefully, the blur is only in one direction.

You need to create a full 2-d gaussian kernel, and apply that. Alternatively, I think you can make use of the separability and apply the vector twice.

share|improve this answer
    
ok thanks,i'll have a try =D –  yvetterowe Oct 12 '11 at 15:44

Your Answer

 
discard

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.