public ClassificationCompare(ClassificationCompare other) : this(rysyPINVOKE.new_ClassificationCompare__SWIG_1(ClassificationCompare.getCPtr(other)), true)
 {
     if (rysyPINVOKE.SWIGPendingException.Pending)
     {
         throw rysyPINVOKE.SWIGPendingException.Retrieve();
     }
 }
 internal static global::System.Runtime.InteropServices.HandleRef getCPtr(ClassificationCompare obj)
 {
     return((obj == null) ? new global::System.Runtime.InteropServices.HandleRef(null, global::System.IntPtr.Zero) : obj.swigCPtr);
 }
Exemple #3
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        public static void Main(string[] args)
        {
            var dataset_path = "/home/michal/dataset/mnist/";

            //load dataset
            var dataset = new DatasetMnist(dataset_path + "train-images.idx3-ubyte",
                                           dataset_path + "train-labels.idx1-ubyte",
                                           dataset_path + "t10k-images.idx3-ubyte",
                                           dataset_path + "t10k-labels.idx1-ubyte");

            /*
             * create example network
             * 3 convolutional layers, dropout and full connected layer as output
             * C3x3x16 - P2x2 - C3x3x32 - P2x2 - C3x3x32 - FC10
             */

            var cnn = new CNN(dataset.get_input_shape(), dataset.get_output_shape(), (float)0.0025);

            cnn.add_layer("convolution", new Shape(3, 3, 16));
            cnn.add_layer("elu");
            cnn.add_layer("max_pooling", new Shape(2, 2));
            cnn.add_layer("convolution", new Shape(3, 3, 32));
            cnn.add_layer("elu");
            cnn.add_layer("max_pooling", new Shape(2, 2));
            cnn.add_layer("convolution", new Shape(3, 3, 32));
            cnn.add_layer("elu");
            cnn.add_layer("dropout");
            cnn.add_layer("output");

            cnn.print();

            //train network - set epoch count
            uint epoch_count = 1;

            cnn.train(dataset.get_training_output_all(), dataset.get_training_input_all(), epoch_count);


            // test network response on whole testing dataset items

            var compare = new ClassificationCompare(dataset.get_classes_count());

            //neural network output - vector of floats
            var nn_output = rysy.VectorFloatCreate(dataset.get_classes_count());

            //for all testing items
            for (uint item_idx = 0; item_idx < dataset.get_testing_count(); item_idx++)
            {
                //get network response
                cnn.forward(nn_output, dataset.get_testing_input(item_idx));

                //compare with testing dataset
                compare.add(dataset.get_testing_output(item_idx), nn_output);

                if (compare.is_nan_error())
                {
                    Console.WriteLine("NaN error");
                }
            }

            //process computing and print results
            compare.compute();
            Console.WriteLine(compare.asString());

            Console.WriteLine("program done");
        }