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I am currently working on a project where I am trying to detect a few coins lying on a flat surface (i.e. a desk). The coins do not overlap and are not hidden by other objects. But there might be other objects visible and the lighting conditions may not be perfect... Basically consider yourself filming your desk which has some coins on it.

So each point should be visible as an Ellipse. Since I don't know the position of the camera the shape of the ellipses may vary, from circle (view from top) to flat ellipses depending on the angle the coins are filmed from.

My problem is that I am not sure on how to extract the coins and finally fit ellipses over them (which I am looking for to do further calculations).

For now I have just made a first attempt by setting a threshold value in OpenCV, using findContours() to get the contour lines and fitting an ellipse. Unfortunately the contour lines only rarely give me the shape of the coins (reflections, bad lighting, ...) and this way is also not preferred since I dont want the user to set any threshold.

Another idea was to use a template matching method of an ellipse on that image, but since I don't know the angle of the camera nor the size of the ellipses I don't think this would work well...

So I wanted to ask if anybody could tell me a method that would work in my case...

Is there a fast way to extract the three coins from the image? The calculations should be made in realtime on mobile devices and the method should not be too sensitive for different or changing lights or the color of the background.

Would be great if anybody could give me any tips on which method could work for me...

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1  
Why do you want to "fit ellipses"? Isn't enough to "find ellipses"? –  belisarius Jan 25 '11 at 2:39

3 Answers 3

up vote 32 down vote accepted

Here's some C99 source implementing the traditional approach (based on OpenCV doco):

#include "cv.h"
#include "highgui.h"

#include <stdio.h>

#ifndef M_PI
#define M_PI 3.14159265358979323846
#endif

//
// We need this to be high enough to get rid of things that are too small too
// have a definite shape.  Otherwise, they will end up as ellipse false positives.
//
#define MIN_AREA 100.00    
//
// One way to tell if an object is an ellipse is to look at the relationship
// of its area to its dimensions.  If its actual occupied area can be estimated
// using the well-known area formula Area = PI*A*B, then it has a good chance of
// being an ellipse.
//
// This value is the maximum permissible error between actual and estimated area.
//
#define MAX_TOL  100.00

int main( int argc, char** argv )
{
    IplImage* src;
    // the first command line parameter must be file name of binary (black-n-white) image
    if( argc == 2 && (src=cvLoadImage(argv[1], 0))!= 0)
    {
        IplImage* dst  = cvCreateImage( cvGetSize(src), 8, 3 );
        CvMemStorage* storage = cvCreateMemStorage(0);
        CvSeq* contour = 0;    
        cvThreshold( src, src, 1, 255, CV_THRESH_BINARY );
        //
        // Invert the image such that white is foreground, black is background.
        // Dilate to get rid of noise.
        //
        cvXorS(src, cvScalar(255, 0, 0, 0), src, NULL);
        cvDilate(src, src, NULL, 2);    
        cvFindContours( src, storage, &contour, sizeof(CvContour), CV_RETR_CCOMP, CV_CHAIN_APPROX_SIMPLE, cvPoint(0,0));
        cvZero( dst );

        for( ; contour != 0; contour = contour->h_next )
        {
            double actual_area = fabs(cvContourArea(contour, CV_WHOLE_SEQ, 0));
            if (actual_area < MIN_AREA)
                continue;

            //
            // FIXME:
            // Assuming the axes of the ellipse are vertical/perpendicular.
            //
            CvRect rect = ((CvContour *)contour)->rect;
            int A = rect.width / 2; 
            int B = rect.height / 2;
            double estimated_area = M_PI * A * B;
            double error = fabs(actual_area - estimated_area);    
            if (error > MAX_TOL)
                continue;    
            printf
            (
                 "center x: %d y: %d A: %d B: %d\n",
                 rect.x + A,
                 rect.y + B,
                 A,
                 B
            );

            CvScalar color = CV_RGB( rand() % 255, rand() % 255, rand() % 255 );
            cvDrawContours( dst, contour, color, color, -1, CV_FILLED, 8, cvPoint(0,0));
        }

        cvSaveImage("coins.png", dst, 0);
    }
}

Given the binary image that Carnieri provided, this is the output:

./opencv-contour.out coin-ohtsu.pbm
center x: 291 y: 328 A: 54 B: 42
center x: 286 y: 225 A: 46 B: 32
center x: 471 y: 221 A: 48 B: 33
center x: 140 y: 210 A: 42 B: 28
center x: 419 y: 116 A: 32 B: 19

And this is the output image:

coins

What you could improve on:

  • Handle different ellipse orientations (currently, I assume the axes are perpendicular/horizontal). This would not be hard to do using image moments.
  • Check for object convexity (have a look at cvConvexityDefects)

Your best way of distinguishing coins from other objects is probably going to be by shape. I can't think of any other low-level image features (color is obviously out). So, I can think of two approaches:

Traditional object detection

Your first task is to separate the objects (coins and non-coins) from the background. Ohtsu's method, as suggested by Carnieri, will work well here. You seem to worry about the images being bipartite but I don't think this will be a problem. As long as there is a significant amount of desk visible, you're guaranteed to have one peak in your histogram. And as long as there are a couple of visually distinguishable objects on the desk, you are guaranteed your second peak.

Dilate your binary image a couple of times to get rid of noise left by thresholding. The coins are relatively big so they should survive this morphological operation.

Group the white pixels into objects using region growing -- just iteratively connect adjacent foreground pixels. At the end of this operation you will have a list of disjoint objects, and you will know which pixels each object occupies.

From this information, you will know the width and the height of the object (from the previous step). So, now you can estimate the size of the ellipse that would surround the object, and then see how well this particular object matches the ellipse. It may be easier just to use width vs height ratio.

Alternatively, you can then use moments to determine the shape of the object in a more precise way.

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This sounds really good! I am going to try the first method to see how well it works... If the results arent sufficient I'm going to try another approach... so by template matching do you mean scaling the image vertically and hope the ellipses turn to circles where I could try a template match or maybe even a Hough transformation on circles... thanks so far! –  evident Jan 25 '11 at 8:59
    
thanks for your code... the example you posted looks fantastic... I'll try it that way... axes are only horizontal/vertical if the camera is held straight... but maybe I can get that from the phone sensors... thank you! –  evident Jan 25 '11 at 9:06
    
You're welcome. I deleted the image pyramid part of my explanation because I thought the contour detection will work better. But yeah, the general idea is scale in hope of turning your ellipses into circles, then template match. Not sure about using the Hough transform -- it may take more time than its worth. –  misha Jan 25 '11 at 9:10
    
Fantastic answer! One of the great things about computer vision is that we can easily visualize the results, as your output image shows. One thing: I agree with evident that the orientation of the ellipses will always be approximately the same, since they're on the same flat surface. However, perspective distortions might be significant depending on the distance between camera and coins. –  carnieri Jan 25 '11 at 14:48
    
Right they should mostly be aligned... since the coins aren't too far apart from each other and the camera neither I think perspective distortions might be acceptable. Only counterpoint for now is when the camera is tilted, but I might correct this from using the phone sensors. Thanks everybody! –  evident Jan 25 '11 at 15:40

I don't know what the best method for your problem is. About thresholding specifically, however, you can use Otsu's method, which automatically finds the optimal threshold value based on an analysis of the image histogram. Use OpenCV's threshold method with the parameter ThresholdType equal to THRESH_OTSU.

Be aware, though, that Otsu's method work well only in images with bimodal histograms (for instance, images with bright objects on a dark background).

You've probably seen this, but there is also a method for fitting an ellipse around a set of 2D points (for instance, a connected component).

EDIT: Otsu's method applied to a sample image:

Grayscale image: grayscale image

Result of applying Otsu's method: Otsu image

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Ahh right, I've heard of Otsu's method. This looks good, but like you said it'll only work on bipartite histograms and in most cases I wont have that since there mostly are other objects visible. I've tried a watershed algorithm on this picture which worked fine, but the counterpoint would be tracking the coins then. I can have the user select coins and desk in the beginning but then it should automatically detect the coins. So tracking the marked spots with a Kalman filter or particle filter will probably not work since movements might be unsteady. Do you have any other ideas or tips in mind? –  evident Jan 24 '11 at 23:55
    
You hadn't mentioned tracking before. Do you need to track them because they're moving or because the camera is moving? I guess the latter. Try blobtrack_sample.cpp that comes with OpenCV. I got good results tracking moving vehicles, but in that case there are plenty of good features (corners) to track, with coins it might be more difficult. –  carnieri Jan 25 '11 at 0:38
    
tracking was just an idea if I used a watershed algorithm. The user selects the coins first and they are then tracked so that I can use watershed algorithm to segment the coins each time step. But since the camera is moving unsteady I doubt that it'll work well with tracking. I'd still prefer a method without tracking if it worked well... –  evident Jan 25 '11 at 8:52

If anyone else comes along with this problem in the future as I did, but using C++:

Once you have used findContours to find the contours (as in Misha's answer above), you can easily fit ellipses using fitEllipse, eg

    vector<vector<Point> > contours;

    findContours(img, contours, CV_RETR_TREE, CV_CHAIN_APPROX_SIMPLE, Point(0,0));

    RotatedRect rotRecs[contours.size()];

    for (int i = 0; i < contours.size(); i++) {
        rotRecs[i] = fitEllipse(contours[i]);
    }
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