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01.train_CNN.py
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01.train_CNN.py
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from keras.preprocessing.image import ImageDataGenerator
from keras.layers.pooling import GlobalAveragePooling2D
from keras.layers.core import Dropout, Dense
from keras.models import Model
from keras.optimizers import Nadam
from keras.callbacks import ModelCheckpoint, EarlyStopping
from keras.callbacks import CSVLogger
from sklearn.model_selection import train_test_split
from keras.applications.xception import Xception
from keras.applications.resnet50 import ResNet50
from keras.applications.inception_v3 import InceptionV3
from keras.applications.inception_resnet_v2 import InceptionResNetV2
from keras.applications.nasnet import NASNetLarge
from keras_efficientnets import EfficientNetB5, EfficientNetB0
from matplotlib import pyplot as plt
from keras import backend as K
import numpy as np
import time
import argparse
from os.path import exists
from os import makedirs
def cnn_model(model_name, img_size):
"""
Model definition using Xception net architecture
"""
input_size = (img_size, img_size, 3)
if model_name == "xception":
baseModel = Xception(
weights="imagenet",
include_top=False,
input_shape=(img_size, img_size, 3)
)
elif model_name == "iv3":
baseModel = InceptionV3(
weights="imagenet",
include_top=False,
input_shape=(img_size, img_size, 3)
)
elif model_name == "irv2":
baseModel = InceptionResNetV2(
weights="imagenet",
include_top=False,
input_shape=(img_size, img_size, 3)
)
elif model_name == "resnet":
baseModel = ResNet50(
weights="imagenet",
include_top=False,
input_shape=(img_size, img_size, 3)
)
elif model_name == "nasnet":
baseModel = NASNetLarge(
weights="imagenet",
include_top=False,
input_shape=(img_size, img_size, 3)
)
elif model_name == "ef0":
baseModel = EfficientNetB0(
input_size,
weights="imagenet",
include_top=False
)
elif model_name == "ef5":
baseModel = EfficientNetB5(
input_size,
weights="imagenet",
include_top=False
)
headModel = baseModel.output
headModel = GlobalAveragePooling2D()(headModel)
headModel = Dense(512, activation="relu", kernel_initializer="he_uniform")(
headModel
)
headModel = Dropout(0.4)(headModel)
# headModel = Dense(512, activation="relu", kernel_initializer="he_uniform")(
# headModel
# )
# headModel = Dropout(0.5)(headModel)
headModel = Dropout(0.5)(headModel)
predictions = Dense(
2,
activation="softmax",
kernel_initializer="he_uniform")(
headModel
)
model = Model(inputs=baseModel.input, outputs=predictions)
for layer in baseModel.layers:
layer.trainable = True
optimizer = Nadam(
lr=0.002, beta_1=0.9, beta_2=0.999, epsilon=1e-08, schedule_decay=0.004
)
model.compile(
loss="categorical_crossentropy",
optimizer=optimizer,
metrics=["accuracy"]
)
return model
def main():
start = time.time()
ap = argparse.ArgumentParser()
ap.add_argument(
"-e", "--epochs", required=True, type=int,
help="Number of epochs", default=25
)
ap.add_argument(
"-m", "--model_name", required=True, type=str,
help="Imagenet model to train", default="xception"
)
ap.add_argument(
"-w",
"--weights_save_name",
required=True,
type=str,
help="Model wieghts name"
)
ap.add_argument(
"-b", "--batch_size", required=True, type=int,
help="Batch size", default=32
)
ap.add_argument(
"-im_size",
"--image_size",
required=True,
type=int,
help="Batch size",
default=224,
)
args = ap.parse_args()
# Training dataset loading
train_data = np.load("train_data.npy")
train_label = np.load("train_label.npy")
print("Dataset Loaded...")
# Train and validation split
trainX, valX, trainY, valY = train_test_split(
train_data, train_label, test_size=0.1, shuffle=False
)
print(trainX.shape, valX.shape, trainY.shape, valY.shape)
# Train nad validation image data generator
trainAug = ImageDataGenerator(
rescale=1.0 / 255.0,
rotation_range=30,
zoom_range=0.15,
width_shift_range=0.2,
height_shift_range=0.2,
shear_range=0.15,
horizontal_flip=True,
fill_mode="nearest",
)
valAug = ImageDataGenerator(rescale=1.0 / 255.0)
model = cnn_model(args.model_name, img_size=args.image_size)
# Number of trainable and non-trainable parameters
trainable_count = int(
np.sum([K.count_params(p) for p in set(model.trainable_weights)])
)
non_trainable_count = int(
np.sum([K.count_params(p) for p in set(model.non_trainable_weights)])
)
print("Total params: {:,}".format(trainable_count + non_trainable_count))
print("Trainable params: {:,}".format(trainable_count))
print("Non-trainable params: {:,}".format(non_trainable_count))
if not exists("./trained_wts"):
makedirs("./trained_wts")
if not exists("./training_logs"):
makedirs("./training_logs")
if not exists("./plots"):
makedirs("./plots")
# Keras backend
model_checkpoint = ModelCheckpoint(
"trained_wts/" + args.weights_save_name + ".hdf5",
monitor="val_loss",
verbose=1,
save_best_only=True,
save_weights_only=True,
)
stopping = EarlyStopping(monitor="val_loss", patience=10, verbose=0)
csv_logger = CSVLogger(
"training_logs/xception.log",
separator=",",
append=True,
)
print("Training is going to start in 3... 2... 1... ")
# Model Training
H = model.fit_generator(
trainAug.flow(trainX, trainY, batch_size=args.batch_size),
steps_per_epoch=len(trainX) // args.batch_size,
validation_data=valAug.flow(valX, valY),
validation_steps=len(valX) // args.batch_size,
epochs=args.epochs,
callbacks=[model_checkpoint, stopping, csv_logger],
)
# plot the training loss and accuracy
plt.style.use("ggplot")
plt.figure()
N = stopping.stopped_epoch + 1
plt.plot(np.arange(0, N), H.history["loss"], label="train_loss")
plt.plot(np.arange(0, N), H.history["val_loss"], label="val_loss")
plt.plot(np.arange(0, N), H.history["accuracy"], label="train_acc")
plt.plot(np.arange(0, N), H.history["val_accuracy"], label="val_acc")
plt.title("Training Loss and Accuracy")
plt.xlabel("Epoch #")
plt.ylabel("Loss/Accuracy")
plt.legend(loc="lower left")
plt.savefig("plots/training_plot.png")
end = time.time()
dur = end - start
if dur < 60:
print("Execution Time:", dur, "seconds")
elif dur > 60 and dur < 3600:
dur = dur / 60
print("Execution Time:", dur, "minutes")
else:
dur = dur / (60 * 60)
print("Execution Time:", dur, "hours")
if __name__ == "__main__":
main()