コード例 #1
0
def predict_class(img_path):

    # prepare image for classification using keras utility functions
    image = load_img(img_path, target_size=target_size)

    image_arr = img_to_array(image)  # convert from PIL Image to NumPy array
    image_arr /= 255

    # to be able to pass it through the network and use batches, we want it with shape (1, 224, 224, 3)
    image_arr = np.expand_dims(image_arr, axis=0)
    # print(image.shape)

    # build the VGG16 network
    model = applications.VGG16(include_top=False, weights='imagenet')

    # get the bottleneck prediction from the pre-trained VGG16 model
    bottleneck_features = model.predict(image_arr)

    # build top model
    model = create_top_model("softmax", bottleneck_features.shape[1:])

    model.load_weights("res/_top_model_weights.h5")

    predicted = model.predict(bottleneck_features)
    # predicted_onehot = to_categorical(predicted, num_classes=num_classes)

    return np.asarray(predicted[0])  # float32
コード例 #2
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                            batch_size=batch_size,
                            class_mode='categorical',
                            shuffle=False) # data is ordered
                            
num_val_samples = len(val_generator.filenames)

# load vgg features
val_data = np.load('res/vgg_val_features.npy')

val_labels = val_generator.classes
val_labels_onehot = to_categorical(val_labels, num_classes=num_classes)

# ---------- CREATE AND TRAIN MODEL ----------

# create the top model to be trained
model = create_top_model("softmax", train_data.shape[1:])
model.compile(optimizer="rmsprop", loss="categorical_crossentropy", metrics=["accuracy"])

# only save the best weights. if the accuracy doesnt improve in 2 epochs, stop.
checkpoint_callback = ModelCheckpoint(
                        "res/top_model_weights.h5", # store weights with this file name
                        monitor='val_accuracy',
                        verbose=1,
                        save_best_only=True,
                        mode='max')

early_stop_callback = EarlyStopping(
                        monitor='val_accuracy',
                        patience=2, # max number of epochs to wait
                        mode='max') 
コード例 #3
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    '../../../dataset/split_data/test/',
    target_size=target_size,
    batch_size=batch_size,
    class_mode='categorical',  # specify categorical
    shuffle=False)  # data is ordered

# load vgg features
test_data = np.load('res/vgg_test_features.npy')

test_labels = test_generator.classes  # actual class number
test_labels_onehot = to_categorical(
    test_labels, num_classes=num_classes)  # class number in onehot

# ---------- TEST MODEL ----------

model = create_top_model("softmax", test_data.shape[1:])
model.load_weights("res/_top_model_weights.h5")

model.compile(optimizer="rmsprop",
              loss="categorical_crossentropy",
              metrics=["accuracy"])

predicted = model.predict_classes(test_data)

# ---------- DISPLAY INFORMATION DEPENDING ON COMMAND LINE FLAGS ----------

if args.acc:
    loss, acc = model.evaluate(test_data,
                               test_labels_onehot,
                               batch_size=batch_size,
                               verbose=1)
コード例 #4
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from keras.preprocessing.image import load_img, img_to_array
from helper import create_top_model, class_labels, target_size, num_classes
import numpy as np
from keras import applications
import operator
import matplotlib.pyplot as plt
from keras.utils.np_utils import to_categorical
import os

# iterate through all testing images
data_path = 'imgs/test'
csv_header = ['img','c0','c1','c2','c3','c4','c5','c6','c7','c8','c9']
all_entries = []
model = applications.VGG16(include_top=False, weights='imagenet')  
model_top = create_top_model("softmax", (7,7,512))
model_top.load_weights("res/top_model_weights_final.h5")

def predict_class(img_path):

    image = load_img(img_path, target_size=target_size)
    image_arr = img_to_array(image) # convert from PIL Image to NumPy array
    image_arr /= 255
    image_arr = np.expand_dims(image_arr, axis=0)
    predicted = model_top.predict(bottleneck_features)
    # predicted_onehot = to_categorical(predicted, num_classes=num_classes)
    return np.asarray(predicted[0]) # float32

for i, file in enumerate(os.listdir(data_path)):
    file_name = os.fsdecode(file)
コード例 #5
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        image_arr = img_to_array(
            image)  # convert from PIL Image to NumPy array
        image_arr /= 255

        # to be able to pass it through the network and use batches, we want it with shape (1, 224, 224, 3)
        image_arr = np.expand_dims(image_arr, axis=0)
        # print(image.shape)

        # build the VGG16 network
        model = applications.VGG16(include_top=False, weights='imagenet')

        # get the bottleneck prediction from the pre-trained VGG16 model
        bottleneck_features = model.predict(image_arr)

        # build top model
        model = create_top_model("softmax", bottleneck_features.shape[1:])

        model.load_weights("res/top_model_weights.h5")

        predicted = model.predict(bottleneck_features)
        decoded_predictions = dict(zip(class_labels, predicted[0]))
        decoded_predictions = sorted(decoded_predictions.items(),
                                     key=operator.itemgetter(1),
                                     reverse=True)

        print()
        x_coor = 5
        y_coor = 10
        count = 1

        for key, value in decoded_predictions[:5]: