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 have a problem to get my head around smoothing and sampling contours in OpenCV (C++ API). Lets say I have got sequence of points retrieved from cv::findContours (for instance applied on this this image:

enter image description here

Ultimately, I want

  1. To smooth a sequence of points using different kernels.
  2. To resize the sequence using different types of interpolations.

After smoothing, I hope to have a result like :

enter image description here

I also considered drawing my contour in a cv::Mat, filtering the Mat (using blur or morphological operations) and re-finding the contours, but is slow and suboptimal. So, ideally, I could do the job using exclusively the point sequence.

I read a few posts on it and naively thought that I could simply convert a std::vector(of cv::Point) to a cv::Mat and then OpenCV functions like blur/resize would do the job for me... but they did not.

Here is what I tried:

int main( int argc, char** argv ){

    cv::Mat conv,ori;
    ori=cv::imread(argv[1]);
    ori.copyTo(conv);
    cv::cvtColor(ori,ori,CV_BGR2GRAY);

    std::vector<std::vector<cv::Point> > contours;
    std::vector<cv::Vec4i > hierarchy;

    cv::findContours(ori, contours,hierarchy, CV_RETR_CCOMP, CV_CHAIN_APPROX_NONE);

    for(int k=0;k<100;k += 2){
        cv::Mat smoothCont;

        smoothCont = cv::Mat(contours[0]);
        std::cout<<smoothCont.rows<<"\t"<<smoothCont.cols<<std::endl;
        /* Try smoothing: no modification of the array*/
//        cv::GaussianBlur(smoothCont, smoothCont, cv::Size(k+1,1),k);
        /* Try sampling: "Assertion failed (func != 0) in resize"*/
//        cv::resize(smoothCont,smoothCont,cv::Size(0,0),1,1);
        std::vector<std::vector<cv::Point> > v(1);
        smoothCont.copyTo(v[0]);
        cv::drawContours(conv,v,0,cv::Scalar(255,0,0),2,CV_AA);
        std::cout<<k<<std::endl;
        cv::imshow("conv", conv);
        cv::waitKey();
    }
    return 1;
}

Could anyone explain how to do this ?

In addition, since I am likely to work with much smaller contours, I was wondering how this approach would deal with border effect (e.g. when smoothing, since contours are circular, the last elements of a sequence must be used to calculate the new value of the first elements...)

Thank you very much for your advices,

Edit:

I also tried cv::approxPolyDP() but, as you can see, it tends to preserve extremal points (which I want to remove):

Epsilon=0

enter image description here

Epsilon=6

enter image description here

Epsilon=12

enter image description here

Epsilon=24

enter image description here

Edit 2: As suggested by Ben, it seems that cv::GaussianBlur() is not supported but cv::blur() is. It looks very much closer to my expectation. Here are my results using it:

k=13

enter image description here

k=53

enter image description here

k=103

enter image description here

To get around the border effect, I did:

    cv::copyMakeBorder(smoothCont,smoothCont, (k-1)/2,(k-1)/2 ,0, 0, cv::BORDER_WRAP);
    cv::blur(smoothCont, result, cv::Size(1,k),cv::Point(-1,-1));
    result.rowRange(cv::Range((k-1)/2,1+result.rows-(k-1)/2)).copyTo(v[0]);

I am still looking for solutions to interpolate/sample my contour.

share|improve this question
    
Any idea with resizing the contour to fixed length? –  Krish Oct 16 '13 at 23:21

4 Answers 4

up vote 2 down vote accepted

Your Gaussian blurring doesn't work because you're blurring in column direction, but there is only one column. Using GaussianBlur() leads to a "feature not implemented" error in OpenCV when trying to copy the vector back to a cv::Mat (that's probably why you have this strange resize() in your code), but everything works fine using cv::blur(), no need to resize(). Try Size(0,41) for example. Using cv::BORDER_WRAP for the border issue doesn't seem to work either, but here is another thread of someone who found a workaround for that.

Oh... one more thing: you said that your contours are likely to be much smaller. Smoothing your contour that way will shrink it. The extreme case is k = size_of_contour, which results in a single point. So don't choose your k too big.

share|improve this answer
    
Thank you very much, I will give that a go now ! The resize is for the 2. "To resize the sequence using different types of interpolations" of my question. For instance, if I have a contour that has 1000 points, I would like to sample it so it has 500 points or 2000 points (using linear interpolation for instance). I thought I could do that applying resize on smoothCont... If not, how do you think I could do. –  Quentin Geissmann Aug 13 '12 at 15:47
    
I implemented your suggestion (see my edit). Blur seems to be "good-enough". If no one comes with a solution to sample sequences of points soon, I will accept you answer. Thank you again :) –  Quentin Geissmann Aug 13 '12 at 17:01
    
Is there any solution for resizing the contour? –  Krish Oct 16 '13 at 23:18

How about approxPolyDP()?

It uses this algorithm to 'smooth' a contour (basically gettig rid of most of the contour's points and leave the ones that represent a good approximation of your contour)

share|improve this answer
    
Thank you, according to the doc, approxPolyDP() is implementing Ramer–Douglas–Peucker algorithm. As far as I am aware, it simplifies the curve by rejecting points which can result in a curve that is actually sharper that the original. –  Quentin Geissmann Aug 13 '12 at 10:14
    
The smoothness depends on the epsilon value. If the value is very big, your contour might degenerate to a triangle. If it is small, you just get rid of the noise and basically keep the contour's shape. I don't know what you need exactly, but if you want it very smooth, you could approximate your contour with approxPoly() and use the remaining points as control points for a bezier curve. –  Ben Aug 13 '12 at 10:29
    
Hey, I just edited my question with pictures to explains why smoothing using this function causes problem to me. –  Quentin Geissmann Aug 13 '12 at 11:26

From 2.1 OpenCV doc section Basic Structures:

template<typename T>
explicit Mat::Mat(const vector<T>& vec, bool copyData=false)

You probably want to set 2nd param to true in:

smoothCont = cv::Mat(contours[0]);

and try again (this way cv::GaussianBlur should be able to modify the data).

share|improve this answer
    
Thank you, I just tried you suggestion, but hard-copying the data from contours[0] did not help. The behaviour is unchanged (no effect of GaussianBlur and cannot resize). –  Quentin Geissmann Aug 13 '12 at 10:22
    
I will get some code running later to see the problem. BTW, for the effect in your image, I think "erosion and dilation" (opening and closing) might work, at least for some case, with good params. (or be used before "approxPolyDP" to remove the artifact of that thin line) –  weidongxu Aug 13 '12 at 12:30
    
I would appreciate this a lot, thank you. As for erosion / dilatation, it would will work, but in my case, I would have to 1: find contours. 2: calculate how much I want to smooth them (from their size, area, perimeter, ...). 3: draw them. 4: perform morphological operations. 5: find them again while I could just calculate a smooth contour directly. –  Quentin Geissmann Aug 13 '12 at 16:11

I know this was written a long time ago, but did you tried a big erode followed by a big dilate (opening), and then find the countours? It looks like a simple and fast solution, but I think it could work, at least to some degree.

share|improve this answer

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.