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I'm fairly new to OpenCV, and very excited to learn more. I've been toying with the idea of outlining edges, shapes.

I've come across this code (running on an iOS device), which uses Canny. I'd like to be able to render this in color, and circle each shape. Can someone point me in the right direction?

Thanks!

IplImage *grayImage = cvCreateImage(cvGetSize(iplImage), IPL_DEPTH_8U, 1);
cvCvtColor(iplImage, grayImage, CV_BGRA2GRAY);
cvReleaseImage(&iplImage);

IplImage* img_blur = cvCreateImage( cvGetSize( grayImage ), grayImage->depth, 1);
cvSmooth(grayImage, img_blur, CV_BLUR, 3, 0, 0, 0);
cvReleaseImage(&grayImage);

IplImage* img_canny = cvCreateImage( cvGetSize( img_blur ), img_blur->depth, 1);
cvCanny( img_blur, img_canny, 10, 100, 3 );
cvReleaseImage(&img_blur);

cvNot(img_canny, img_canny);

And example might be these burger patties. OpenCV would detect the patty, and outline it.enter image description here

Original Image:

enter image description here

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    Use findContours to determine the outlines of all of the shapes: docs.opencv.org/modules/imgproc/doc/… - Next, use drawContours to draw each of the outlines in whatever colour you desire: docs.opencv.org/modules/imgproc/doc/… . I can't really say much more until I see what the images you're trying to process look like.
    – rayryeng
    Mar 19, 2015 at 22:27
  • @rayryeng added an image for reference. Thanks for your help
    – Jeff
    Mar 19, 2015 at 22:35
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    No problem! Would it be possible to show the raw image of that without the red contour? Once I get that, I have some ideas I'd like to try and when I have something, I'll post something to help you out!
    – rayryeng
    Mar 19, 2015 at 22:39
  • just added the original image.
    – Jeff
    Mar 20, 2015 at 1:25
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    please dont use the C api (cvCanny and such things) but switch to the c++ api if possible, which is much less error prone and much easier to learn/use!!
    – Micka
    Mar 20, 2015 at 9:06

1 Answer 1

95

Color information is often handled by conversion to HSV color space which handles "color" directly instead of dividing color into R/G/B components which makes it easier to handle same colors with different brightness etc.

if you convert your image to HSV you'll get this:

cv::Mat hsv;
cv::cvtColor(input,hsv,CV_BGR2HSV);

std::vector<cv::Mat> channels;
cv::split(hsv, channels);

cv::Mat H = channels[0];
cv::Mat S = channels[1];
cv::Mat V = channels[2];

Hue channel:

enter image description here

Saturation channel:

enter image description here

Value channel:

enter image description here

typically, the hue channel is the first one to look at if you are interested in segmenting "color" (e.g. all red objects). One problem is, that hue is a circular/angular value which means that the highest values are very similar to the lowest values, which results in the bright artifacts at the border of the patties. To overcome this for a particular value, you can shift the whole hue space. If shifted by 50° you'll get something like this instead:

cv::Mat shiftedH = H.clone();
int shift = 25; // in openCV hue values go from 0 to 180 (so have to be doubled to get to 0 .. 360) because of byte range from 0 to 255
for(int j=0; j<shiftedH.rows; ++j)
    for(int i=0; i<shiftedH.cols; ++i)
    {
        shiftedH.at<unsigned char>(j,i) = (shiftedH.at<unsigned char>(j,i) + shift)%180;
    }

enter image description here

now you can use a simple canny edge detection to find edges in the hue channel:

cv::Mat cannyH;
cv::Canny(shiftedH, cannyH, 100, 50);

enter image description here

You can see that the regions are a little bigger than the real patties, that might be because of the tiny reflections on the ground around the patties, but I'm not sure about that. Maybe it's just because of jpeg compression artifacts ;)

If you instead use the saturation channel to extract edges, you'll end up with something like this:

cv::Mat cannyS;
cv::Canny(S, cannyS, 200, 100);

enter image description here

where the contours aren't completely closed. Maybe you can combine hue and saturation within preprocessing to extract edges in the hue channel but only where saturation is high enough.

At this stage you have edges. Regard that edges aren't contours yet. If you directly extract contours from edges they might not be closed/separated etc:

// extract contours of the canny image:
std::vector<std::vector<cv::Point> > contoursH;
std::vector<cv::Vec4i> hierarchyH;
cv::findContours(cannyH,contoursH, hierarchyH, CV_RETR_TREE , CV_CHAIN_APPROX_SIMPLE);

// draw the contours to a copy of the input image:
cv::Mat outputH = input.clone();
for( int i = 0; i< contoursH.size(); i++ )
 {
   cv::drawContours( outputH, contoursH, i, cv::Scalar(0,0,255), 2, 8, hierarchyH, 0);
 }

enter image description here

you can remove those small contours by checking cv::contourArea(contoursH[i]) > someThreshold before drawing. But you see the two patties on the left to be connected? Here comes the hardest part... use some heuristics to "improve" your result.

cv::dilate(cannyH, cannyH, cv::Mat());
cv::dilate(cannyH, cannyH, cv::Mat());
cv::dilate(cannyH, cannyH, cv::Mat());

Dilation before contour extraction will "close" the gaps between different objects but increase the object size too.

enter image description here

if you extract contours from that it will look like this:

enter image description here

If you instead choose only the "inner" contours it is exactly what you like:

cv::Mat outputH = input.clone();
for( int i = 0; i< contoursH.size(); i++ )
 {
    if(cv::contourArea(contoursH[i]) < 20) continue; // ignore contours that are too small to be a patty
    if(hierarchyH[i][3] < 0) continue;  // ignore "outer" contours

    cv::drawContours( outputH, contoursH, i, cv::Scalar(0,0,255), 2, 8, hierarchyH, 0);
 }

enter image description here

mind that the dilation and inner contour stuff is a little fuzzy, so it might not work for different images and if the initial edges are placed better around the object border it might 1. not be necessary to do the dilate and inner contour thing and 2. if it is still necessary, the dilate will make the object smaller in this scenario (which luckily is great for the given sample image.).

EDIT: Some important information about HSV: The hue channel will give every pixel a color of the spectrum, even if the saturation is very low ( = gray/white) or if the color is very low (value) so often it is desired to threshold the saturation and value channels to find some specific color! This might be much easier and much more stavle to handle than the dilation I've used in my code.

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    This answer is incredible. -- I'm just nitpicking at this point, but how do i overlay the contours on a color image?
    – Jeff
    Mar 20, 2015 at 12:32
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    Exactly what I was going to do. Didn't get time last night. Nice job! Btw I lol at your C api comment. Btw a beautiful answer. Reminds me of my style!
    – rayryeng
    Mar 20, 2015 at 14:09
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    What's the reasoning behind shifting by 50? Is that simply because the colors that you're looking for (and the bright artifacts) happen to be close to the 0 / 360 border? And 50 is a good number to make all reds contiguous? Presumably if you're looking for another color (like blue, which is around 240) then shifting is completely unnecessary?
    – James S
    May 18, 2018 at 22:24
  • yes, if you are looking for a hue range that does not go below 0 or beyond 360 (or 180 in opencv) shifting does not bring anything. Instead of shifting (if range below 0 or beyond 360/180) you could evaluate 0 regions to get the same result.
    – Micka
    May 18, 2018 at 22:46

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