Esempio n. 1
0
        /// <summary>
        /// Find the pedestrian in the image
        /// </summary>
        /// <param name="image">The image</param>
        /// <returns>The region where pedestrians are detected</returns>
        public Rectangle[] Find(IInputArray image)
        {
            Rectangle[] regions;

            using (InputArray iaImage = image.GetInputArray())
            {
                //if the input array is a GpuMat
                //check if there is a compatible Cuda device to run pedestrian detection
                if (iaImage.Kind == InputArray.Type.CudaGpuMat && _hogCuda != null)
                {
                    //this is the Cuda version
                    using (GpuMat cudaBgra = new GpuMat())
                        using (VectorOfRect vr = new VectorOfRect())
                        {
                            CudaInvoke.CvtColor(image, cudaBgra, ColorConversion.Bgr2Bgra);
                            _hogCuda.DetectMultiScale(cudaBgra, vr);
                            regions = vr.ToArray();
                        }
                }
                else
                {
                    //this is the CPU/OpenCL version
                    MCvObjectDetection[] results = _hog.DetectMultiScale(image);
                    regions = new Rectangle[results.Length];
                    for (int i = 0; i < results.Length; i++)
                    {
                        regions[i] = results[i].Rect;
                    }
                }

                return(regions);
            }
        }
Esempio n. 2
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        public void TestCudaOrbDetector()
        {
            if (!CudaInvoke.HasCuda)
            {
                return;
            }
            using (Image <Bgr, Byte> img = new Image <Bgr, byte>("box.png"))
                using (GpuMat cudaImage = new GpuMat(img))
                    using (GpuMat grayCudaImage = new GpuMat())
                        using (CudaORBDetector detector = new CudaORBDetector(500))
                            using (VectorOfKeyPoint kpts = new VectorOfKeyPoint())
                                using (GpuMat keyPointMat = new GpuMat())
                                    using (GpuMat descriptorMat = new GpuMat())
                                    {
                                        CudaInvoke.CvtColor(cudaImage, grayCudaImage, ColorConversion.Bgr2Gray);
                                        detector.DetectAsync(grayCudaImage, keyPointMat);
                                        detector.Convert(keyPointMat, kpts);
                                        //detector.ComputeRaw(grayCudaImage, null, keyPointMat, descriptorMat);
                                        //detector.DownloadKeypoints(keyPointMat, kpts);

                                        foreach (MKeyPoint kpt in kpts.ToArray())
                                        {
                                            img.Draw(new CircleF(kpt.Point, 3.0f), new Bgr(0, 255, 0), 1);
                                        }

                                        //ImageViewer.Show(img);
                                    }
        }
Esempio n. 3
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        /// <summary>
        /// Find the pedestrian in the image
        /// </summary>
        /// <param name="image">The image</param>
        /// <param name="processingTime">The pedestrian detection time in milliseconds</param>
        /// <returns>The region where pedestrians are detected</returns>
        public static Rectangle[] Find(Mat image, bool tryUseCuda, bool tryUseOpenCL, out long processingTime)
        {
            Stopwatch watch;

            Rectangle[] regions;

#if !(IOS || NETFX_CORE)
            //check if there is a compatible Cuda device to run pedestrian detection
            if (tryUseCuda && CudaInvoke.HasCuda)
            { //this is the Cuda version
                using (CudaHOG des = new CudaHOG(new Size(64, 128), new Size(16, 16), new Size(8, 8), new Size(8, 8)))
                {
                    des.SetSVMDetector(des.GetDefaultPeopleDetector());

                    watch = Stopwatch.StartNew();
                    using (GpuMat cudaBgr = new GpuMat(image))
                        using (GpuMat cudaBgra = new GpuMat())
                            using (VectorOfRect vr = new VectorOfRect())
                            {
                                CudaInvoke.CvtColor(cudaBgr, cudaBgra, ColorConversion.Bgr2Bgra);
                                des.DetectMultiScale(cudaBgra, vr);
                                regions = vr.ToArray();
                            }
                }
            }
            else
#endif
            {
                //Many opencl functions require opencl compatible gpu devices.
                //As of opencv 3.0-alpha, opencv will crash if opencl is enable and only opencv compatible cpu device is presented
                //So we need to call CvInvoke.HaveOpenCLCompatibleGpuDevice instead of CvInvoke.HaveOpenCL (which also returns true on a system that only have cpu opencl devices).
                CvInvoke.UseOpenCL = tryUseOpenCL && CvInvoke.HaveOpenCLCompatibleGpuDevice;

                //this is the CPU/OpenCL version
                using (HOGDescriptor des = new HOGDescriptor())
                {
                    des.SetSVMDetector(HOGDescriptor.GetDefaultPeopleDetector());

                    //load the image to umat so it will automatically use opencl is available
                    UMat umat = image.ToUMat(AccessType.Read);

                    watch = Stopwatch.StartNew();

                    MCvObjectDetection[] results = des.DetectMultiScale(umat);
                    regions = new Rectangle[results.Length];
                    for (int i = 0; i < results.Length; i++)
                    {
                        regions[i] = results[i].Rect;
                    }
                    watch.Stop();
                }
            }

            processingTime = watch.ElapsedMilliseconds;

            return(regions);
        }
Esempio n. 4
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        public Rectangle[] FindBodyHOG(Mat image, out double[] confidence)
        {
            // If can't use Cuda then go for Without cuda implementation
            if (!Global.canRunCuda)
            {
                confidence = null;
                return(FindBodyHOG_WithoutGpu(image));
            }
            if (des == null)
            {
                InitalizeBodyTracker();
            }



            List <Rectangle> regions  = new List <Rectangle>();
            VectorOfRect     rects    = new VectorOfRect();
            VectorOfDouble   confColl = new VectorOfDouble();

            confidence = new double[0];
            try
            {
                des.SetSVMDetector(des.GetDefaultPeopleDetector());

                des.GroupThreshold = 1;
                des.HitThreshold   = 0;
                des.NumLevels      = 15;
                des.ScaleFactor    = 1.05;


                using (GpuMat cudaBgr = new GpuMat(image))
                    using (GpuMat cudaBgra = new GpuMat())
                    {
                        CudaInvoke.CvtColor(cudaBgr, cudaBgra, ColorConversion.Bgr2Bgra);
                        //des.DetectMultiScale(cudaBgra, rects, confColl);
                        des.DetectMultiScale(cudaBgra, rects, null);
                    }


                //confidence = confColl.ToArray();

                for (int i = 0; i < rects.ToArray().Length; i++)
                {
                    //if (confidence[i] > 0.5)
                    regions.Add(rects[i]);
                }
            }
            catch (Exception ex)
            {
                MessageBox.Show(ex.Message);
            }

            return(regions.ToArray());//rects.ToArray();
        }
        /// <summary>
        /// Find the pedestrian in the image
        /// </summary>
        /// <param name="image">The image</param>
        /// <param name="processingTime">The pedestrian detection time in milliseconds</param>
        /// <returns>The region where pedestrians are detected</returns>
        public static Rectangle[] Find(Mat image, bool tryUseCuda, out long processingTime)
        {
            Stopwatch watch;

            Rectangle[] regions;

#if !(__IOS__ || NETFX_CORE)
            //check if there is a compatible Cuda device to run pedestrian detection
            if (tryUseCuda && CudaInvoke.HasCuda)
            { //this is the Cuda version
                using (CudaHOG des = new CudaHOG(new Size(64, 128), new Size(16, 16), new Size(8, 8), new Size(8, 8)))
                {
                    des.SetSVMDetector(des.GetDefaultPeopleDetector());

                    watch = Stopwatch.StartNew();
                    using (GpuMat cudaBgr = new GpuMat(image))
                        using (GpuMat cudaBgra = new GpuMat())
                            using (VectorOfRect vr = new VectorOfRect())
                            {
                                CudaInvoke.CvtColor(cudaBgr, cudaBgra, ColorConversion.Bgr2Bgra);
                                des.DetectMultiScale(cudaBgra, vr);
                                regions = vr.ToArray();
                            }
                }
            }
            else
#endif
            {
                //this is the CPU/OpenCL version
                using (HOGDescriptor des = new HOGDescriptor())
                {
                    des.SetSVMDetector(HOGDescriptor.GetDefaultPeopleDetector());

                    //load the image to umat so it will automatically use opencl is available
                    UMat umat = image.ToUMat(AccessType.Read);

                    watch = Stopwatch.StartNew();

                    MCvObjectDetection[] results = des.DetectMultiScale(umat);
                    regions = new Rectangle[results.Length];
                    for (int i = 0; i < results.Length; i++)
                    {
                        regions[i] = results[i].Rect;
                    }
                    watch.Stop();
                }
            }

            processingTime = watch.ElapsedMilliseconds;

            return(regions);
        }
Esempio n. 6
0
        /// <summary>
        /// Find the pedestrian in the image
        /// </summary>
        /// <param name="image">The image</param>
        /// <param name="processingTime">The processing time in milliseconds</param>
        /// <returns>The region where pedestrians are detected</returns>
        public static Rectangle[] Find(IInputArray image, out long processingTime)
        {
            Stopwatch watch;

            Rectangle[] regions;

            using (InputArray iaImage = image.GetInputArray())
            {
#if !(__IOS__ || NETFX_CORE)
                //if the input array is a GpuMat
                //check if there is a compatible Cuda device to run pedestrian detection
                if (iaImage.Kind == InputArray.Type.CudaGpuMat)
                {
                    //this is the Cuda version
                    using (CudaHOG des = new CudaHOG(new Size(64, 128), new Size(16, 16), new Size(8, 8), new Size(8, 8)))
                    {
                        des.SetSVMDetector(des.GetDefaultPeopleDetector());

                        watch = Stopwatch.StartNew();
                        using (GpuMat cudaBgra = new GpuMat())
                            using (VectorOfRect vr = new VectorOfRect())
                            {
                                CudaInvoke.CvtColor(image, cudaBgra, ColorConversion.Bgr2Bgra);
                                des.DetectMultiScale(cudaBgra, vr);
                                regions = vr.ToArray();
                            }
                    }
                }
                else
#endif
                {
                    //this is the CPU/OpenCL version
                    using (HOGDescriptor des = new HOGDescriptor())
                    {
                        des.SetSVMDetector(HOGDescriptor.GetDefaultPeopleDetector());
                        watch = Stopwatch.StartNew();

                        MCvObjectDetection[] results = des.DetectMultiScale(image);
                        regions = new Rectangle[results.Length];
                        for (int i = 0; i < results.Length; i++)
                        {
                            regions[i] = results[i].Rect;
                        }
                        watch.Stop();
                    }
                }

                processingTime = watch.ElapsedMilliseconds;

                return(regions);
            }
        }
Esempio n. 7
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        public List <IImage> ProcessFrame(IImage original)
        {
            Rectangle[] peopleRegion;

            using (InputArray iaImage = original.GetInputArray())
            {
#if !(__IOS__ || NETFX_CORE)
                //if the input array is a GpuMat
                //check if there is a compatible Cuda device to run pedestrian detection
                if (iaImage.Kind == InputArray.Type.CudaGpuMat)
                {
                    //this is the Cuda version
                    using (CudaHOG des = new CudaHOG(new Size(64, 128), new Size(16, 16), new Size(8, 8), new Size(8, 8)))
                    {
                        des.SetSVMDetector(des.GetDefaultPeopleDetector());

                        using (GpuMat cudaBgra = new GpuMat())
                            using (VectorOfRect vr = new VectorOfRect())
                            {
                                CudaInvoke.CvtColor(original, cudaBgra, ColorConversion.Bgr2Bgra);
                                des.DetectMultiScale(cudaBgra, vr);
                                peopleRegion = vr.ToArray();
                            }
                    }
                }
                else
#endif
                {
                    //this is the CPU/OpenCL version
                    using (HOGDescriptor peopleDescriptor = new HOGDescriptor())
                    {
                        peopleDescriptor.SetSVMDetector(HOGDescriptor.GetDefaultPeopleDetector());

                        MCvObjectDetection[] peopleFound = peopleDescriptor
                                                           .DetectMultiScale(original, 0, default(Size), default(Size), AdjustableParameters["Scale"].CurrentValue, AdjustableParameters["SimilarityThreshold"].CurrentValue, AdjustableParameters["MeanShiftGrouping"].CurrentValue == 1);
                        peopleRegion = new Rectangle[peopleFound.Length];
                        for (int i = 0; i < peopleFound.Length; i++)
                        {
                            peopleRegion[i] = peopleFound[i].Rect;
                        }
                    }
                }

                IImage copy = CopyAndDraw(original, peopleRegion);
                return(new List <IImage> {
                    copy
                });
            }
        }
Esempio n. 8
0
        /// <summary>
        /// Find the pedestrian in the image
        /// </summary>
        /// <param name="image">The image</param>
        /// <returns>The region where pedestrians are detected</returns>
        public static Rectangle[] Find(IInputArray image, HOGDescriptor hog, CudaHOG hogCuda = null)
        {
            //Stopwatch watch;
            Rectangle[] regions;

            using (InputArray iaImage = image.GetInputArray())
            {
                //if the input array is a GpuMat
                //check if there is a compatible Cuda device to run pedestrian detection
                if (iaImage.Kind == InputArray.Type.CudaGpuMat && hogCuda != null)
                {
                    //this is the Cuda version



                    //watch = Stopwatch.StartNew();
                    using (GpuMat cudaBgra = new GpuMat())
                        using (VectorOfRect vr = new VectorOfRect())
                        {
                            CudaInvoke.CvtColor(image, cudaBgra, ColorConversion.Bgr2Bgra);
                            hogCuda.DetectMultiScale(cudaBgra, vr);
                            regions = vr.ToArray();
                        }
                }
                else
                {
                    //this is the CPU/OpenCL version


                    //watch = Stopwatch.StartNew();

                    MCvObjectDetection[] results = hog.DetectMultiScale(image);
                    regions = new Rectangle[results.Length];
                    for (int i = 0; i < results.Length; i++)
                    {
                        regions[i] = results[i].Rect;
                    }
                    //watch.Stop();
                }

                //processingTime = watch.ElapsedMilliseconds;

                return(regions);
            }
        }
Esempio n. 9
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        public void TestHOG2()
        {
            if (CudaInvoke.HasCuda)
            {
                using (CudaHOGDescriptor hog = new CudaHOGDescriptor(
                           new Size(48, 96), //winSize
                           new Size(16, 16), //blockSize
                           new Size(8, 8),   //blockStride
                           new Size(8, 8),   //cellSize
                           9,                //nbins
                           -1,               //winSigma
                           0.2,              //L2HysThreshold
                           true,             //gammaCorrection
                           64                //nLevels
                           ))
                    using (Image <Bgr, Byte> image = new Image <Bgr, byte>("pedestrian.png"))
                    {
                        float[] pedestrianDescriptor = CudaHOGDescriptor.GetPeopleDetector48x96();
                        hog.SetSVMDetector(pedestrianDescriptor);

                        Stopwatch   watch = Stopwatch.StartNew();
                        Rectangle[] rects;
                        using (GpuMat cudaImage = new GpuMat(image))
                            using (GpuMat gpuBgra = new GpuMat())
                            {
                                CudaInvoke.CvtColor(cudaImage, gpuBgra, ColorConversion.Bgr2Bgra);
                                rects = hog.DetectMultiScale(gpuBgra);
                            }
                        watch.Stop();

                        //Assert.AreEqual(1, rects.Length);

                        foreach (Rectangle rect in rects)
                        {
                            image.Draw(rect, new Bgr(Color.Red), 1);
                        }
                        Trace.WriteLine(String.Format("HOG detection time: {0} ms", watch.ElapsedMilliseconds));

                        //ImageViewer.Show(image, String.Format("Detection Time: {0}ms", watch.ElapsedMilliseconds));
                    }
            }
        }
Esempio n. 10
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        public (List <Rectangle>, List <Rectangle>) Detect(IInputArray image)
        {
            var faces = new List <Rectangle>();
            var eyes  = new List <Rectangle>();

            using (var ugray = new GpuMat())
            {
                CudaInvoke.CvtColor(image, ugray, Emgu.CV.CvEnum.ColorConversion.Bgr2Gray);

                //normalizes brightness and increases contrast of the image
                CudaInvoke.EqualizeHist(ugray, ugray);

                //Detect the faces  from the gray scale image and store the locations as rectangle
                //The first dimensional is the channel
                //The second dimension is the index of the rectangle in the specific channel

                var facesDetected = GetRectangles(faceClassifier, ugray);
                faces.AddRange(facesDetected);

                foreach (var f in facesDetected)
                {
                    //Get the region of interest on the faces
                    using (var faceRegion = new GpuMat(ugray, new Range(f.Bottom, f.Top), new Range(f.Left, f.Right)))
                    {
                        var eyesDetected = GetRectangles(eyeClassifier, faceRegion);

                        foreach (var e in eyesDetected)
                        {
                            var eyeRect = e;
                            eyeRect.Offset(f.X, f.Y);
                            eyes.Add(eyeRect);
                        }
                    }
                }
            }

            return(faces, eyes);
        }
Esempio n. 11
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        public void TestCudaImageAsyncOps()
        {
            if (CudaInvoke.HasCuda)
            {
                int       counter = 0;
                Stopwatch watch   = Stopwatch.StartNew();
                using (GpuMat img1 = new GpuMat(3000, 2000, DepthType.Cv8U, 3))
                    using (GpuMat img2 = new GpuMat(3000, 2000, DepthType.Cv8U, 3))
                        using (GpuMat img3 = new GpuMat())
                            using (Stream stream = new Stream())
                                using (GpuMat mat1 = new GpuMat())
                                {
                                    img1.ConvertTo(mat1, DepthType.Cv8U, 1, 0, stream);
                                    while (!stream.Completed)
                                    {
                                        if (counter <= int.MaxValue)
                                        {
                                            counter++;
                                        }
                                    }
                                    Trace.WriteLine(String.Format("Counter has been incremented {0} times", counter));

                                    counter = 0;
                                    CudaInvoke.CvtColor(img2, img3, CvToolbox.GetColorCvtCode(typeof(Bgr), typeof(Gray)), 1, stream);
                                    while (!stream.Completed)
                                    {
                                        if (counter <= int.MaxValue)
                                        {
                                            counter++;
                                        }
                                    }
                                    Trace.WriteLine(String.Format("Counter has been incremented {0} times", counter));
                                }
                watch.Stop();
                Trace.WriteLine(String.Format("Total time: {0} milliseconds", watch.ElapsedMilliseconds));
            }
        }