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matrix_max
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7a373d5940 |
83
imageInput.c
83
imageInput.c
@ -6,96 +6,17 @@
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#define BUFFER_SIZE 100
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#define BUFFER_SIZE 100
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#define FILE_HEADER_STRING "__info2_image_file_format__"
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#define FILE_HEADER_STRING "__info2_image_file_format__"
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// TODO Implementieren Sie geeignete Hilfsfunktionen für das Lesen der Bildserie aus einer Datei
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// TODO Vervollständigen Sie die Funktion readImages unter Benutzung Ihrer Hilfsfunktionen
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// TODO Vervollständigen Sie die Funktion readImages unter Benutzung Ihrer Hilfsfunktionen
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GrayScaleImageSeries *readImages(const char *path)
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GrayScaleImageSeries *readImages(const char *path)
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{
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{
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// Initialisiert einen Zeiger zur struct und reserviert Speicherplatz
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GrayScaleImageSeries *series = NULL;
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GrayScaleImageSeries *series = malloc(sizeof(GrayScaleImageSeries));
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if(series == NULL){
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printf("Es ist nicht genügend Speicher übrig");
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return NULL;
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}
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FILE * data = fopen(path, "rb");
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if (data == NULL){
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printf("Die Datei konnte nicht gelesen werden");
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return NULL;
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}
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// Überprüfung, ob die Datei einen Header hat
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char header[BUFFER_SIZE];
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fread(header, strlen(FILE_HEADER_STRING), 1, data);
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header[strlen(FILE_HEADER_STRING)] ='\0';
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if(strncmp(header, FILE_HEADER_STRING, strlen(FILE_HEADER_STRING) )!= 0){
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printf("Die Datei hat keinen Header");
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fclose(data);
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return NULL;
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}
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//liest die Anzahl der Bilder aus
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series->count = 0;
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fread(&series->count, sizeof(unsigned short),1, data);
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series->images = malloc(series->count * sizeof(GrayScaleImage));
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if (series->images == NULL){
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printf("Es ist nicht genügend Speicher übrig");
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fclose(data);
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return NULL;
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}
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//liest die Höhe und Breite der Bilder aus
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unsigned short height = 0, width = 0;
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fread(&width, sizeof(unsigned short), 1, data);
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fread(&height, sizeof(unsigned short), 1, data);
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//reserviert Speicher für die Labels, die aber erst nach jedem Bild eingelesen werden
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series->labels = malloc(sizeof(unsigned char) * series->count);
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if (series->labels == NULL){
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printf("Es ist nicht genügend Speicher übrig");
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free(series->images);
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fclose(data);
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return NULL;
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}
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//liest jedes Bild einzeln aus und speichert es in images
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for(int counter_picture = 0 ; counter_picture < series->count; counter_picture++){
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// für jedes Bild muss vorher eine Größe festgelegt werden, die jedoch in diesem Fall immer gleich ist
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series->images[counter_picture].width = width;
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series->images[counter_picture].height =height;
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unsigned int size_picture = height * width;
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//reservieren des Speichers für Buffer, der die einzelnen Pixels speichert
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series->images[counter_picture].buffer = malloc(size_picture* sizeof(GrayScalePixelType));
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if (series->images[counter_picture].buffer == NULL){
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printf("Es ist nicht genügend Speicher übrig");
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free(series->images);
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free(series);
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fclose(data);
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return NULL;
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}
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//einlesen der einzelnen Pixel in buffer
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for(int counter_pixels = 0; counter_pixels < size_picture; counter_pixels++){
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fread(&series->images[counter_picture].buffer[counter_pixels], sizeof(unsigned char), 1, data);
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}
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//einlesen der Labels
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fread(&series->labels[counter_picture], sizeof(unsigned char), 1, data);
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}
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fclose(data);
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return series;
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return series;
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}
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}
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// TODO Vervollständigen Sie die Funktion clearSeries, welche eine Bildserie vollständig aus dem Speicher freigibt
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// TODO Vervollständigen Sie die Funktion clearSeries, welche eine Bildserie vollständig aus dem Speicher freigibt
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void clearSeries(GrayScaleImageSeries *series)
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void clearSeries(GrayScaleImageSeries *series)
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{
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{
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//erst den Speicherplatz der Pixel freigeben
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for(int number= 0; number < series->count; number++){
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free(series->images[number].buffer);
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}
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// dann die Bilder freigeben
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free(series-> images);
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free(series);
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}
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}
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@ -123,8 +123,7 @@ void setUp(void) {
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// Falls notwendig, kann hier Vorbereitungsarbeit gemacht werden
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// Falls notwendig, kann hier Vorbereitungsarbeit gemacht werden
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}
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}
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void tearDown(void)
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void tearDown(void) {
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{
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// Hier kann Bereinigungsarbeit nach jedem Test durchgeführt werden
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// Hier kann Bereinigungsarbeit nach jedem Test durchgeführt werden
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}
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}
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@ -5,49 +5,10 @@
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#include "unity.h"
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#include "unity.h"
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#include "neuralNetwork.h"
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#include "neuralNetwork.h"
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static void prepareNeuralNetworkFile(const char *path, const NeuralNetwork nn)
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static void prepareNeuralNetworkFile(const char *path, const NeuralNetwork nn)
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{
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{
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FILE *file = fopen(path, "wb");
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// TODO
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if (!file)
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return;
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const char *tag = "__info2_neural_network_file_format__";
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fwrite(tag, 1, strlen(tag), file);
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// Überprüfung, ob es Layer gibt
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if (nn.numberOfLayers == 0)
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{
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fclose(file);
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return;
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}
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// Schreibe die Eingabe- und Ausgabegrößen des Netzwerks
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int input = nn.layers[0].weights.cols;
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int output = nn.layers[0].weights.rows;
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fwrite(&input, sizeof(int), 1, file);
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fwrite(&output, sizeof(int), 1, file);
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// Schreibe die Layer-Daten
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for (int i = 0; i < nn.numberOfLayers; i++)
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{
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const Layer *layer = &nn.layers[i];
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int out = layer->weights.rows;
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int in = layer->weights.cols;
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fwrite(layer->weights.buffer, sizeof(MatrixType), out * in, file);
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fwrite(layer->biases.buffer, sizeof(MatrixType), out * 1, file);
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if (i + 1 < nn.numberOfLayers)
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{
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int nextOut = nn.layers[i + 1].weights.rows;
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fwrite(&nextOut, sizeof(int), 1, file);
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}
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}
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fclose(file);
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}
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}
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void test_loadModelReturnsCorrectNumberOfLayers(void)
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void test_loadModelReturnsCorrectNumberOfLayers(void)
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@ -55,15 +16,15 @@ void test_loadModelReturnsCorrectNumberOfLayers(void)
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const char *path = "some__nn_test_file.info2";
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const char *path = "some__nn_test_file.info2";
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MatrixType buffer1[] = {1, 2, 3, 4, 5, 6};
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MatrixType buffer1[] = {1, 2, 3, 4, 5, 6};
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MatrixType buffer2[] = {1, 2, 3, 4, 5, 6};
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MatrixType buffer2[] = {1, 2, 3, 4, 5, 6};
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Matrix weights1 = {.buffer = buffer1, .rows = 3, .cols = 2};
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Matrix weights1 = {.buffer=buffer1, .rows=3, .cols=2};
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Matrix weights2 = {.buffer = buffer2, .rows = 2, .cols = 3};
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Matrix weights2 = {.buffer=buffer2, .rows=2, .cols=3};
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MatrixType buffer3[] = {1, 2, 3};
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MatrixType buffer3[] = {1, 2, 3};
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MatrixType buffer4[] = {1, 2};
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MatrixType buffer4[] = {1, 2};
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Matrix biases1 = {.buffer = buffer3, .rows = 3, .cols = 1};
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Matrix biases1 = {.buffer=buffer3, .rows=3, .cols=1};
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Matrix biases2 = {.buffer = buffer4, .rows = 2, .cols = 1};
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Matrix biases2 = {.buffer=buffer4, .rows=2, .cols=1};
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Layer layers[] = {{.weights = weights1, .biases = biases1}, {.weights = weights2, .biases = biases2}};
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Layer layers[] = {{.weights=weights1, .biases=biases1}, {.weights=weights2, .biases=biases2}};
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NeuralNetwork expectedNet = {.layers = layers, .numberOfLayers = 2};
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NeuralNetwork expectedNet = {.layers=layers, .numberOfLayers=2};
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NeuralNetwork netUnderTest;
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NeuralNetwork netUnderTest;
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prepareNeuralNetworkFile(path, expectedNet);
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prepareNeuralNetworkFile(path, expectedNet);
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@ -79,12 +40,12 @@ void test_loadModelReturnsCorrectWeightDimensions(void)
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{
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{
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const char *path = "some__nn_test_file.info2";
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const char *path = "some__nn_test_file.info2";
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
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Matrix weights = {.buffer = weightBuffer, .rows = 3, .cols = 2};
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Matrix weights = {.buffer=weightBuffer, .rows=3, .cols=2};
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MatrixType biasBuffer[] = {7, 8, 9};
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MatrixType biasBuffer[] = {7, 8, 9};
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Matrix biases = {.buffer = biasBuffer, .rows = 3, .cols = 1};
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Matrix biases = {.buffer=biasBuffer, .rows=3, .cols=1};
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Layer layers[] = {{.weights = weights, .biases = biases}};
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Layer layers[] = {{.weights=weights, .biases=biases}};
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NeuralNetwork expectedNet = {.layers = layers, .numberOfLayers = 1};
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NeuralNetwork expectedNet = {.layers=layers, .numberOfLayers=1};
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NeuralNetwork netUnderTest;
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NeuralNetwork netUnderTest;
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prepareNeuralNetworkFile(path, expectedNet);
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prepareNeuralNetworkFile(path, expectedNet);
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@ -102,12 +63,12 @@ void test_loadModelReturnsCorrectBiasDimensions(void)
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{
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{
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const char *path = "some__nn_test_file.info2";
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const char *path = "some__nn_test_file.info2";
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
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Matrix weights = {.buffer = weightBuffer, .rows = 3, .cols = 2};
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Matrix weights = {.buffer=weightBuffer, .rows=3, .cols=2};
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MatrixType biasBuffer[] = {7, 8, 9};
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MatrixType biasBuffer[] = {7, 8, 9};
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Matrix biases = {.buffer = biasBuffer, .rows = 3, .cols = 1};
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Matrix biases = {.buffer=biasBuffer, .rows=3, .cols=1};
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Layer layers[] = {{.weights = weights, .biases = biases}};
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Layer layers[] = {{.weights=weights, .biases=biases}};
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NeuralNetwork expectedNet = {.layers = layers, .numberOfLayers = 1};
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NeuralNetwork expectedNet = {.layers=layers, .numberOfLayers=1};
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NeuralNetwork netUnderTest;
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NeuralNetwork netUnderTest;
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prepareNeuralNetworkFile(path, expectedNet);
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prepareNeuralNetworkFile(path, expectedNet);
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@ -125,12 +86,12 @@ void test_loadModelReturnsCorrectWeights(void)
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{
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{
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const char *path = "some__nn_test_file.info2";
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const char *path = "some__nn_test_file.info2";
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
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Matrix weights = {.buffer = weightBuffer, .rows = 3, .cols = 2};
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Matrix weights = {.buffer=weightBuffer, .rows=3, .cols=2};
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MatrixType biasBuffer[] = {7, 8, 9};
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MatrixType biasBuffer[] = {7, 8, 9};
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Matrix biases = {.buffer = biasBuffer, .rows = 3, .cols = 1};
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Matrix biases = {.buffer=biasBuffer, .rows=3, .cols=1};
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Layer layers[] = {{.weights = weights, .biases = biases}};
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Layer layers[] = {{.weights=weights, .biases=biases}};
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NeuralNetwork expectedNet = {.layers = layers, .numberOfLayers = 1};
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NeuralNetwork expectedNet = {.layers=layers, .numberOfLayers=1};
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NeuralNetwork netUnderTest;
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NeuralNetwork netUnderTest;
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prepareNeuralNetworkFile(path, expectedNet);
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prepareNeuralNetworkFile(path, expectedNet);
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@ -150,12 +111,12 @@ void test_loadModelReturnsCorrectBiases(void)
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{
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{
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const char *path = "some__nn_test_file.info2";
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const char *path = "some__nn_test_file.info2";
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
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Matrix weights = {.buffer = weightBuffer, .rows = 3, .cols = 2};
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Matrix weights = {.buffer=weightBuffer, .rows=3, .cols=2};
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MatrixType biasBuffer[] = {7, 8, 9};
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MatrixType biasBuffer[] = {7, 8, 9};
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Matrix biases = {.buffer = biasBuffer, .rows = 3, .cols = 1};
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Matrix biases = {.buffer=biasBuffer, .rows=3, .cols=1};
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Layer layers[] = {{.weights = weights, .biases = biases}};
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Layer layers[] = {{.weights=weights, .biases=biases}};
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NeuralNetwork expectedNet = {.layers = layers, .numberOfLayers = 1};
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NeuralNetwork expectedNet = {.layers=layers, .numberOfLayers=1};
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NeuralNetwork netUnderTest;
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NeuralNetwork netUnderTest;
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prepareNeuralNetworkFile(path, expectedNet);
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prepareNeuralNetworkFile(path, expectedNet);
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@ -177,7 +138,7 @@ void test_loadModelFailsOnWrongFileTag(void)
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NeuralNetwork netUnderTest;
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NeuralNetwork netUnderTest;
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FILE *file = fopen(path, "wb");
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FILE *file = fopen(path, "wb");
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if (file != NULL)
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if(file != NULL)
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{
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{
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const char *fileTag = "info2_neural_network_file_format";
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const char *fileTag = "info2_neural_network_file_format";
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@ -198,12 +159,12 @@ void test_clearModelSetsMembersToNull(void)
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{
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{
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const char *path = "some__nn_test_file.info2";
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const char *path = "some__nn_test_file.info2";
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
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MatrixType weightBuffer[] = {1, 2, 3, 4, 5, 6};
|
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Matrix weights = {.buffer = weightBuffer, .rows = 3, .cols = 2};
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Matrix weights = {.buffer=weightBuffer, .rows=3, .cols=2};
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MatrixType biasBuffer[] = {7, 8, 9};
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MatrixType biasBuffer[] = {7, 8, 9};
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Matrix biases = {.buffer = biasBuffer, .rows = 3, .cols = 1};
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Matrix biases = {.buffer=biasBuffer, .rows=3, .cols=1};
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Layer layers[] = {{.weights = weights, .biases = biases}};
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Layer layers[] = {{.weights=weights, .biases=biases}};
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NeuralNetwork expectedNet = {.layers = layers, .numberOfLayers = 1};
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NeuralNetwork expectedNet = {.layers=layers, .numberOfLayers=1};
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NeuralNetwork netUnderTest;
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NeuralNetwork netUnderTest;
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prepareNeuralNetworkFile(path, expectedNet);
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prepareNeuralNetworkFile(path, expectedNet);
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@ -220,7 +181,7 @@ void test_clearModelSetsMembersToNull(void)
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static void someActivation(Matrix *matrix)
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static void someActivation(Matrix *matrix)
|
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{
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{
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for (int i = 0; i < matrix->rows * matrix->cols; i++)
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for(int i = 0; i < matrix->rows * matrix->cols; i++)
|
||||||
{
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{
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matrix->buffer[i] = fabs(matrix->buffer[i]);
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matrix->buffer[i] = fabs(matrix->buffer[i]);
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}
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}
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@ -231,23 +192,23 @@ void test_predictReturnsCorrectLabels(void)
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const unsigned char expectedLabels[] = {4, 2};
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const unsigned char expectedLabels[] = {4, 2};
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GrayScalePixelType imageBuffer1[] = {10, 30, 25, 17};
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GrayScalePixelType imageBuffer1[] = {10, 30, 25, 17};
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GrayScalePixelType imageBuffer2[] = {20, 40, 10, 128};
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GrayScalePixelType imageBuffer2[] = {20, 40, 10, 128};
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GrayScaleImage inputImages[] = {{.buffer = imageBuffer1, .width = 2, .height = 2}, {.buffer = imageBuffer2, .width = 2, .height = 2}};
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GrayScaleImage inputImages[] = {{.buffer=imageBuffer1, .width=2, .height=2}, {.buffer=imageBuffer2, .width=2, .height=2}};
|
||||||
MatrixType weightsBuffer1[] = {1, -2, 3, -4, 5, -6, 7, -8};
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MatrixType weightsBuffer1[] = {1, -2, 3, -4, 5, -6, 7, -8};
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||||||
MatrixType weightsBuffer2[] = {-9, 10, 11, 12, 13, 14};
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MatrixType weightsBuffer2[] = {-9, 10, 11, 12, 13, 14};
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||||||
MatrixType weightsBuffer3[] = {-15, 16, 17, 18, -19, 20, 21, 22, 23, -24, 25, 26, 27, -28, -29};
|
MatrixType weightsBuffer3[] = {-15, 16, 17, 18, -19, 20, 21, 22, 23, -24, 25, 26, 27, -28, -29};
|
||||||
Matrix weights1 = {.buffer = weightsBuffer1, .rows = 2, .cols = 4};
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Matrix weights1 = {.buffer=weightsBuffer1, .rows=2, .cols=4};
|
||||||
Matrix weights2 = {.buffer = weightsBuffer2, .rows = 3, .cols = 2};
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Matrix weights2 = {.buffer=weightsBuffer2, .rows=3, .cols=2};
|
||||||
Matrix weights3 = {.buffer = weightsBuffer3, .rows = 5, .cols = 3};
|
Matrix weights3 = {.buffer=weightsBuffer3, .rows=5, .cols=3};
|
||||||
MatrixType biasBuffer1[] = {200, 0};
|
MatrixType biasBuffer1[] = {200, 0};
|
||||||
MatrixType biasBuffer2[] = {0, -100, 0};
|
MatrixType biasBuffer2[] = {0, -100, 0};
|
||||||
MatrixType biasBuffer3[] = {0, -1000, 0, 2000, 0};
|
MatrixType biasBuffer3[] = {0, -1000, 0, 2000, 0};
|
||||||
Matrix biases1 = {.buffer = biasBuffer1, .rows = 2, .cols = 1};
|
Matrix biases1 = {.buffer=biasBuffer1, .rows=2, .cols=1};
|
||||||
Matrix biases2 = {.buffer = biasBuffer2, .rows = 3, .cols = 1};
|
Matrix biases2 = {.buffer=biasBuffer2, .rows=3, .cols=1};
|
||||||
Matrix biases3 = {.buffer = biasBuffer3, .rows = 5, .cols = 1};
|
Matrix biases3 = {.buffer=biasBuffer3, .rows=5, .cols=1};
|
||||||
Layer layers[] = {{.weights = weights1, .biases = biases1, .activation = someActivation},
|
Layer layers[] = {{.weights=weights1, .biases=biases1, .activation=someActivation}, \
|
||||||
{.weights = weights2, .biases = biases2, .activation = someActivation},
|
{.weights=weights2, .biases=biases2, .activation=someActivation}, \
|
||||||
{.weights = weights3, .biases = biases3, .activation = someActivation}};
|
{.weights=weights3, .biases=biases3, .activation=someActivation}};
|
||||||
NeuralNetwork netUnderTest = {.layers = layers, .numberOfLayers = 3};
|
NeuralNetwork netUnderTest = {.layers=layers, .numberOfLayers=3};
|
||||||
unsigned char *predictedLabels = predict(netUnderTest, inputImages, 2);
|
unsigned char *predictedLabels = predict(netUnderTest, inputImages, 2);
|
||||||
TEST_ASSERT_NOT_NULL(predictedLabels);
|
TEST_ASSERT_NOT_NULL(predictedLabels);
|
||||||
int n = (int)(sizeof(expectedLabels) / sizeof(expectedLabels[0]));
|
int n = (int)(sizeof(expectedLabels) / sizeof(expectedLabels[0]));
|
||||||
@ -255,13 +216,11 @@ void test_predictReturnsCorrectLabels(void)
|
|||||||
free(predictedLabels);
|
free(predictedLabels);
|
||||||
}
|
}
|
||||||
|
|
||||||
void setUp(void)
|
void setUp(void) {
|
||||||
{
|
|
||||||
// Falls notwendig, kann hier Vorbereitungsarbeit gemacht werden
|
// Falls notwendig, kann hier Vorbereitungsarbeit gemacht werden
|
||||||
}
|
}
|
||||||
|
|
||||||
void tearDown(void)
|
void tearDown(void) {
|
||||||
{
|
|
||||||
// Hier kann Bereinigungsarbeit nach jedem Test durchgeführt werden
|
// Hier kann Bereinigungsarbeit nach jedem Test durchgeführt werden
|
||||||
}
|
}
|
||||||
|
|
||||||
|
|||||||
Loading…
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Reference in New Issue
Block a user