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I want process image so each pixel value will be mean of its value and 4 neighbours.

Created two different functions:

Mat meanImage(cv::Mat& inputImage)
{
    Mat output;
    Mat kernel(3,3,CV_32F,0.0);
    kernel.at<float>(0,1) = 0.2;
    kernel.at<float>(1,0) = 0.2;
    kernel.at<float>(1,1) = 0.2;
    kernel.at<float>(1,2) = 0.2;
    kernel.at<float>(2,1) = 0.2;
    filter2D(inputImage,output,-1,kernel);
    return output;
}

and:

Mat meanImage2(Mat& inputImage)
{
    Mat temp;
    Mat output(inputImage.rows,inputImage.cols,inputImage.type());
    copyMakeBorder(inputImage,temp,1,1,1,1,BORDER_REPLICATE);
    CV_Assert(output.isContinuous());
    CV_Assert(temp.isContinuous());
    const int len = output.rows * output.cols * output.channels();
    const int rowLenTemp = temp.cols * temp.channels();
    const int twoRowLenTemp = 2 * rowLenTemp;
    const int rowLen = output.cols * output.channels();
    uchar* outPtr = output.ptr<uchar>(0);
    uchar* tempPtr = temp.ptr<uchar>(0);
    for(int i = 0; i < len; ++i)
    {
        const int a = 6 * (i / rowLen) + 3;
        outPtr[i] = (tempPtr[i+rowLenTemp+a] + tempPtr[i+a] + 
                    tempPtr[i+rowLenTemp+a+3] + tempPtr[i+rowLenTemp+a-3] +   
                    tempPtr[i+twoRowLenTemp+a]) / 5;
    }
    return output;
}

I've assumed that the result will be the same. So I've compared images:

Mat diff;
compare(meanImg1,meanImg2,diff,CMP_NE);
printf("Difference: %d\n",countNonZero(diff));
imshow("diff",diff);

And get a lot off differences. What is the difference between this functions?

Edit: Difference for lena image taken from Lena

Lena_diff

share|improve this question
    
What is the type of your images ? –  cedrou Mar 1 '13 at 16:23
    
Type is CV_UC3. –  krzych Mar 1 '13 at 17:07
    
you mean CV_**8**UC3 ? –  cedrou Mar 1 '13 at 21:41
    
Yes should be CV_8UC3. –  krzych Mar 2 '13 at 14:49

1 Answer 1

Beware that when you do the sum of pixels, you add unsigned chars and you may overflow.

Test your code by casting these pixels values to int.

outPtr[i] = ((int)tempPtr[i+rowLenTemp+a] + (int)tempPtr[i+a] + 
             (int)tempPtr[i+rowLenTemp+a+3] + (int)tempPtr[i+rowLenTemp+a-3] +   
             (int)tempPtr[i+twoRowLenTemp+a]) / 5;

Edit: I'd rather code this like (assuming image type is uchar and it has 3 channels)

for (int r = 0; r < output.rows; r++)
{
  uchar* previousRow = temp.ptr<uchar>(r) + 3; 
  uchar* currentRow = temp.ptr<uchar>(r+1) + 3; 
  uchar* nextRow = temp.ptr<uchar>(r+2) + 3; 

  uchar* outRow = output.ptr<uchar>(r);

  for (int c = 0; c < 3*output.cols; c++)
  {
    int value =              (int)previousRow[c] +  
      (int)currentRow[c-3] + (int)currentRow [c] + (int)currentRow[c+3] + 
                             (int)nextRow    [c];

    outRow[c] = value / 5;
  }
}
share|improve this answer
    
Thanks for optimization suggestion. It's faster than my implementation. I've also applied suggestion of casting to int and see the possiblitity of overflow. Wired thing is that it makes no difference and I've tested it for different images. This answer does not answered my question. Result of your implementation is the same as with my implementation and still differs to meanImage with cv::filter2D. –  krzych Mar 1 '13 at 17:33
    
It should be also currentRow[c-3] and currentRow[c+3] I've suggested edit. –  krzych Mar 1 '13 at 17:49
    
yes you're right... I edit it. –  cedrou Mar 1 '13 at 21:34
    
can you post a screenshot of the differences you observe, it may help us to solve your problem –  cedrou Mar 1 '13 at 21:36
    
Screenshot of difference added to question. –  krzych Mar 2 '13 at 14:54

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