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.

am working with the EmguCV Library using the SURF Algorithm to extract the features from two images

enter code here
static void Run()
  {
      Image<Gray, Byte> modelImage = new Image<Gray, byte>("HatersGonnaHate.png");
     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));
  }

}

}

and I want to calculate the position (x,y) of the matched features from both images.

Hope I can find help..

Thanks!!!

share|improve this question
    

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.