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 am new on EMGU CV. I would like to SURF detect more than one patterns with using cam. Like this video. But now, i try to develop this just one pattern for starting point.

I examined EMGUCV's SURF example. When i try to implement this codes to cam capture's example, error turns on run time. I searched more but did not find any code example.

So, do you suggest me a code snippet or tutorial which is explained good.

Thank very much already now.

Codes are below which i am working on;

...........................................
FrameRaw = capture.QueryFrame();
                    CamImageBox.Image = FrameRaw;
        Run(FrameRaw);
...........................................    

     private void Run(Image<Bgr, byte> TempImage)
            {

                Image<Gray, Byte> modelImage = new Image<Gray, byte>("sample.jpg");
                Image<Gray, Byte> observedImage = TempImage.Convert<Gray, Byte>();
                // Image<Gray, Byte> observedImage = new Image<Gray,byte>("box_in_scene.png");

                Stopwatch watch;
                HomographyMatrix homography = null;

                SURFDetector surfCPU = new SURFDetector(500, false);

                VectorOfKeyPoint modelKeyPoints;
                VectorOfKeyPoint observedKeyPoints;
                Matrix<int> indices;
                Matrix<float> dist;
                Matrix<byte> mask;

                if (GpuInvoke.HasCuda)
                {
                    GpuSURFDetector surfGPU = new GpuSURFDetector(surfCPU.SURFParams, 0.01f);
                    using (GpuImage<Gray, Byte> gpuModelImage = new GpuImage<Gray, byte>(modelImage))
                    //extract features from the object image
                    using (GpuMat<float> gpuModelKeyPoints = surfGPU.DetectKeyPointsRaw(gpuModelImage, null))
                    using (GpuMat<float> gpuModelDescriptors = surfGPU.ComputeDescriptorsRaw(gpuModelImage, null, gpuModelKeyPoints))
                    using (GpuBruteForceMatcher matcher = new GpuBruteForceMatcher(GpuBruteForceMatcher.DistanceType.L2))
                    {
                        modelKeyPoints = new VectorOfKeyPoint();
                        surfGPU.DownloadKeypoints(gpuModelKeyPoints, modelKeyPoints);
                        watch = Stopwatch.StartNew();

                        // extract features from the observed image
                        using (GpuImage<Gray, Byte> gpuObservedImage = new GpuImage<Gray, byte>(observedImage))
                        using (GpuMat<float> gpuObservedKeyPoints = surfGPU.DetectKeyPointsRaw(gpuObservedImage, null))
                        using (GpuMat<float> gpuObservedDescriptors = surfGPU.ComputeDescriptorsRaw(gpuObservedImage, null, gpuObservedKeyPoints))
                        using (GpuMat<int> gpuMatchIndices = new GpuMat<int>(gpuObservedDescriptors.Size.Height, 2, 1))
                        using (GpuMat<float> gpuMatchDist = new GpuMat<float>(gpuMatchIndices.Size, 1))
                        {
                            observedKeyPoints = new VectorOfKeyPoint();
                            surfGPU.DownloadKeypoints(gpuObservedKeyPoints, observedKeyPoints);

                            matcher.KnnMatch(gpuObservedDescriptors, gpuModelDescriptors, gpuMatchIndices, gpuMatchDist, 2, null);

                            indices = new Matrix<int>(gpuMatchIndices.Size);
                            dist = new Matrix<float>(indices.Size);
                            gpuMatchIndices.Download(indices);
                            gpuMatchDist.Download(dist);

                            mask = new Matrix<byte>(dist.Rows, 1);

                            mask.SetValue(255);

                            Features2DTracker.VoteForUniqueness(dist, 0.8, mask);

                            int nonZeroCount = CvInvoke.cvCountNonZero(mask);
                            if (nonZeroCount >= 4)
                            {
                                nonZeroCount = Features2DTracker.VoteForSizeAndOrientation(modelKeyPoints, observedKeyPoints, indices, mask, 1.5, 20);
                                if (nonZeroCount >= 4)
                                    homography = Features2DTracker.GetHomographyMatrixFromMatchedFeatures(modelKeyPoints, observedKeyPoints, indices, mask, 3);
                            }

                            watch.Stop();
                        }
                    }
                }
                else
                {
                    //extract features from the object image
                    modelKeyPoints = surfCPU.DetectKeyPointsRaw(modelImage, null);
                    //MKeyPoint[] kpts = modelKeyPoints.ToArray();
                    Matrix<float> modelDescriptors = surfCPU.ComputeDescriptorsRaw(modelImage, null, modelKeyPoints);

                    watch = Stopwatch.StartNew();

                    // extract features from the observed image
                    observedKeyPoints = surfCPU.DetectKeyPointsRaw(observedImage, null);
                    Matrix<float> observedDescriptors = surfCPU.ComputeDescriptorsRaw(observedImage, null, observedKeyPoints);

                    BruteForceMatcher matcher = new BruteForceMatcher(BruteForceMatcher.DistanceType.L2F32);
                    matcher.Add(modelDescriptors);
                    int k = 2;
                    indices = new Matrix<int>(observedDescriptors.Rows, k);
                    dist = new Matrix<float>(observedDescriptors.Rows, k);
                    matcher.KnnMatch(observedDescriptors, indices, dist, k, null);

                    mask = new Matrix<byte>(dist.Rows, 1);

                    mask.SetValue(255);

                    Features2DTracker.VoteForUniqueness(dist, 0.8, mask);

                    int nonZeroCount = CvInvoke.cvCountNonZero(mask);
                    if (nonZeroCount >= 4)
                    {
                        nonZeroCount = Features2DTracker.VoteForSizeAndOrientation(modelKeyPoints, observedKeyPoints, indices, mask, 1.5, 20);
                        if (nonZeroCount >= 4)
                            homography = Features2DTracker.GetHomographyMatrixFromMatchedFeatures(modelKeyPoints, observedKeyPoints, indices, mask, 3);
                    }

                    watch.Stop();
                }

                //Draw the matched keypoints
                Image<Bgr, Byte> result = Features2DTracker.DrawMatches(modelImage, modelKeyPoints, observedImage, observedKeyPoints,
                   indices, new Bgr(255, 255, 255), new Bgr(255, 255, 255), mask, Features2DTracker.KeypointDrawType.NOT_DRAW_SINGLE_POINTS);

                #region draw the projected region on the image
                if (homography != null)
                {  //draw a rectangle along the projected model
                    Rectangle rect = modelImage.ROI;
                    PointF[] pts = new PointF[] { 
                   new PointF(rect.Left, rect.Bottom),
                   new PointF(rect.Right, rect.Bottom),
                   new PointF(rect.Right, rect.Top),
                   new PointF(rect.Left, rect.Top)};
                    homography.ProjectPoints(pts);

                    result.DrawPolyline(Array.ConvertAll<PointF, Point>(pts, Point.Round), true, new Bgr(Color.Red), 5);
                }
                #endregion

               // ImageViewer.Show(result, String.Format("Matched using {0} in {1} milliseconds", GpuInvoke.HasCuda ? "GPU" : "CPU", watch.ElapsedMilliseconds));
            }
share|improve this question

1 Answer 1

I found the SURF tutorial you used, but I don't see why it should cause an error. Have you been able to execute the tutorial code by itself, without the GPU acceleration complication? Moreover, what error occurred?

share|improve this answer
    
Yes, this tutorial not turn error with static images. When i try to implement this tutorials to cam capture's example as above, error turns. –  Kerberos Mar 31 '12 at 19:47
    
Which error? What is the name of the exception class? The details? Or was it a compile-time error, such as for mismatched types? –  GGulati Mar 31 '12 at 19:52
    
Error turn in this row: "Image<Gray, Byte> observedImage = TempImage.Convert<Gray, Byte>();" Error message is "Parameter is not valid." If i use this code "Image<Gray, Byte> observedImage = new Image<Gray,byte>("box_in_scene.png"); " instead of that that row, no error occur. But i can't use this method with cam capture. –  Kerberos Mar 31 '12 at 20:33
    
You have to extract an image from your camera, save to disk, then load it. Or find an alternative way to create an Image<Gray, Byte> using your camera stream. –  GGulati Apr 1 '12 at 0:53
    
OK, thank you for your help. –  Kerberos Apr 1 '12 at 9:36

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.