Exemple #1
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def extract_lbp_features(X, P=8, R=5):

    F = []  # Features are stored here

    N = X.shape[0]
    for k in range(N):

        print("Processing image {}/{}".format(k + 1, N))

        image = X[k, ...]
        lbp = local_binary_pattern(image, P, R)
        hist = np.histogram(lbp, bins=range(257))[0]
        F.append(hist)

    return np.array(F)
Exemple #2
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def extract_lbp_features(X, P=8, R=5):
    """
    Extract LBP features from all input samples.
    - R is radius parameter
    - P is the number of angles for LBP
    """

    F = []  # Features are stored here

    N = X.shape[0]
    for k in range(N):

        print("Processing image {}/{}".format(k + 1, N))

        image = X[k, ...]
        lbp = local_binary_pattern(image, P, R)
        hist = np.histogram(lbp, bins=range(257))[0]
        F.append(hist)

    return np.array(F)
Exemple #3
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class_1_path = './GTSRB_subset/class1/'
class_2_path = './GTSRB_subset/class2/'

# Load the images
for filepath in os.listdir(class_1_path):
    images.append(mpimg.imread(class_1_path + filepath))
    labels.append(0)

for filepath in os.listdir(class_1_path):
    images.append(mpimg.imread(class_1_path + filepath))
    labels.append(1)

# Extract features
for image in images:
    features.append(local_binary_pattern(image))

features = np.array(features)
features = features.reshape(features.shape[0],
                            features.shape[1] * features.shape[2])

X_train, X_test, y_train, y_test = train_test_split(features, labels)

## Training with different classifiers
# Nearest neighbor
neigh = KNeighborsClassifier(n_neighbors=3)
scores_neigh = cross_val_score(neigh, features, labels, cv=5)
print("Neigh score:")
print(scores_neigh)
neigh.fit(X_train, y_train)
neigh_score = accuracy_score(y_test, neigh.predict(X_test))
    R = 5

    # histograms and corresponding classes
    X = []
    y = []

    # class folders
    class_folders = sorted(glob.glob('GTSRB_subset/*'))
    
    for i,folder in enumerate(class_folders):
        # images in class folder
        name_list = glob.glob(folder+'/*')
        for name in name_list:
            image = plt.imread(name)
            # histogram of lbp
            lbp = local_binary_pattern(image, P, R)
            hist = np.histogram(lbp, bins=range(257))[0]
            X.append(hist)
            # corresponding class
            y.append(i)

    # convert to numpy
    X = np.array(X)
    print(X.shape)
    y = np.array(y)

    '''
    Question 5
    '''
    
    # split train and test
Exemple #5
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def extract_features(img):
    lbp1 = local_binary_pattern(img, 8, 5)
    feature = np.histogram(lbp1, bins=range(257))[0]
    feature = np.reshape(feature, [1, 256])
    return feature