11

I am trying to smooth output image edges using opencv framework, I am trying following steps. Steps took from here https://stackoverflow.com/a/17175381/790842

int lowThreshold = 10.0;
int ratio = 3;
int kernel_size = 3;

Mat src_gray,detected_edges,dst,blurred;

/// Convert the image to grayscale
cvtColor( result, src_gray, CV_BGR2GRAY );

/// Reduce noise with a kernel 3x3
cv::blur( src_gray, detected_edges, cv::Size(5,5) );

/// Canny detector
cv::Canny( detected_edges, detected_edges, lowThreshold, lowThreshold*ratio, kernel_size );

//Works fine upto here I am getting perfect edge mask    

cv::dilate(detected_edges, blurred, result);

//I get Assertion failed (src.channels() == 1 && func != 0) in countNonZero ERROR while doing dilate

result.copyTo(blurred, blurred);

cv::blur(blurred, blurred, cv::Size(3.0,3.0));

blurred.copyTo(result, detected_edges);

UIImage *image = [UIImageCVMatConverter UIImageFromCVMat:result];

I want help whether if I am going in right way, or what am I missing?

Thanks for any suggestion and help.

Updated:

I have got an image like below got from grabcut algorithm, now I want to apply edge smoothening to the image, as you can see the image is not smooth. enter image description here

22

Do you want to get something like this?

enter image description here

If yes, then here is the code:

#include <iostream>
#include <vector>
#include <string>
#include <fstream>
#include <opencv2/opencv.hpp>

using namespace cv;
using namespace std;

int main(int argc, char **argv)
{
    cv::namedWindow("result");
    Mat img=imread("TestImg.png");
    Mat whole_image=imread("D:\\ImagesForTest\\lena.jpg");
    whole_image.convertTo(whole_image,CV_32FC3,1.0/255.0);
    cv::resize(whole_image,whole_image,img.size());
    img.convertTo(img,CV_32FC3,1.0/255.0);

    Mat bg=Mat(img.size(),CV_32FC3);
    bg=Scalar(1.0,1.0,1.0);

    // Prepare mask
    Mat mask;
    Mat img_gray;
    cv::cvtColor(img,img_gray,cv::COLOR_BGR2GRAY);
    img_gray.convertTo(mask,CV_32FC1);
    threshold(1.0-mask,mask,0.9,1.0,cv::THRESH_BINARY_INV);

    cv::GaussianBlur(mask,mask,Size(21,21),11.0);
    imshow("result",mask);
    cv::waitKey(0);


        // Reget the image fragment with smoothed mask
    Mat res;

    vector<Mat> ch_img(3);
    vector<Mat> ch_bg(3);
    cv::split(whole_image,ch_img);
    cv::split(bg,ch_bg);
    ch_img[0]=ch_img[0].mul(mask)+ch_bg[0].mul(1.0-mask);
    ch_img[1]=ch_img[1].mul(mask)+ch_bg[1].mul(1.0-mask);
    ch_img[2]=ch_img[2].mul(mask)+ch_bg[2].mul(1.0-mask);
    cv::merge(ch_img,res);
    cv::merge(ch_bg,bg);

    imshow("result",res);
    cv::waitKey(0);
    cv::destroyAllWindows();
}

And I think this link will be interestiong for you too: Poisson Blending

  • Thanks for the answer, but I don't want output like this, I have updated my question, see if you can help please, thanks. – iphonic Feb 15 '14 at 18:12
  • I've changed my answer. Hope you'll catch the idea. – Andrey Smorodov Feb 15 '14 at 18:40
  • Great, I will give a try.. Thanks :-) – iphonic Feb 15 '14 at 18:54
  • WHen I try to implement the above logic, I get something like this i.imgur.com/ClXXpbQ.png?1, it seems its doing things correctly but output is very different.. Any Idea.? – iphonic Feb 17 '14 at 6:20
  • It looks like a problem with CV_8UC3/CV_8UC1 and CV_32FC3/CV_32FC1 image types. The range for the first 0-255, range for the second one is 0-1. Try convert images you work with to CV_32FC3/CV_32FC1 type and scale it by factor 1.0/255.0 . I suspect that the values in mask image you used are in 0-255 range instead of 0-1. – Andrey Smorodov Feb 17 '14 at 7:35
3

I have followed the following steps to smooth the edges of the Foreground I got from GrabCut.

  1. Create a binary image from the mask I got from GrabCut.
  2. Find the contour of the binary image.
  3. Create an Edge Mask by drawing the contour points. It gives the boundary edges of the Foreground image I got from GrabCut.
  4. Then follow the steps define in https://stackoverflow.com/a/17175381/790842

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