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# -*- coding: utf-8 -*-
"""SML_Project_base.ipynb
Automatically generated by Colaboratory.
Original file is located at
https://colab.research.google.com/drive/1oplL2-GkPv6xoSwifIlE9cYE7N2aCklP
"""
# Commented out IPython magic to ensure Python compatibility.
# %tensorflow_version 2.x
"""import tensorflow as tf
device_name = tf.test.gpu_device_name()
if device_name != '/device:GPU:0':
raise SystemError('GPU device not found')
print('Found GPU at: {}'.format(device_name))
!pip uninstall opencv-python -y
!pip install opencv-contrib-python==3.4.2.17 --force-reinstall
pip install --upgrade neural_structured_learning
from google.colab import drive
drive.mount('/content/drive')
"""
# #making a directory ciphar_dataset from .tar/gz file
# import tarfile
# with tarfile.open('/content/drive/My Drive/SML_Project_neural_graph_machines/cifar-10-python.tar.gz', 'r:gz') as tar:
# tar.extractall("/content/drive/My Drive/SML_Project_neural_graph_machines/ciphar_dataset")
#importing all library for project
import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
from sklearn.model_selection import train_test_split
from sklearn.ensemble import RandomForestClassifier
import cv2
from sklearn.decomposition import PCA
from collections import Counter
from imblearn.over_sampling import SMOTE
from sklearn.svm import SVC
from xgboost import XGBClassifier
from skimage.feature import hog, local_binary_pattern
import sklearn.preprocessing as prp
from sklearn.feature_selection import SelectKBest
from sklearn.feature_selection import f_classif
import neural_structured_learning as nsl
from collections import Counter
from sklearn.metrics import accuracy_score, precision_score, recall_score, f1_score
#LOAD DATASET CIPHAR10 from directory and return train data,train label,test data,test label and filenames
def unpickle(file):
import pickle
with open(file, 'rb') as fo:
dict = pickle.load(fo, encoding='bytes')
return dict
def load_cifar_10_data(data_dir, negatives=False):
meta_data_dict = unpickle(data_dir + "/batches.meta")
cifar_label_names = meta_data_dict[b'label_names']
cifar_label_names = np.array(cifar_label_names)
# training data
cifar_train_data = None
cifar_train_filenames = []
cifar_train_labels = []
for i in range(1, 6):
cifar_train_data_dict = unpickle(data_dir + "/data_batch_{}".format(i))
if i == 1:
cifar_train_data = cifar_train_data_dict[b'data']
else:
cifar_train_data = np.vstack((cifar_train_data, cifar_train_data_dict[b'data']))
cifar_train_filenames += cifar_train_data_dict[b'filenames']
cifar_train_labels += cifar_train_data_dict[b'labels']
cifar_train_data = cifar_train_data.reshape((len(cifar_train_data), 3, 32, 32))
if negatives:
cifar_train_data = cifar_train_data.transpose(0, 2, 3, 1).astype(np.float32)
else:
cifar_train_data = np.rollaxis(cifar_train_data, 1, 4)
cifar_train_filenames = np.array(cifar_train_filenames)
cifar_train_labels = np.array(cifar_train_labels)
cifar_test_data_dict = unpickle(data_dir + "/test_batch")
cifar_test_data = cifar_test_data_dict[b'data']
cifar_test_filenames = cifar_test_data_dict[b'filenames']
cifar_test_labels = cifar_test_data_dict[b'labels']
cifar_test_data = cifar_test_data.reshape((len(cifar_test_data), 3, 32, 32))
if negatives:
cifar_test_data = cifar_test_data.transpose(0, 2, 3, 1).astype(np.float32)
else:
cifar_test_data = np.rollaxis(cifar_test_data, 1, 4)
cifar_test_filenames = np.array(cifar_test_filenames)
cifar_test_labels = np.array(cifar_test_labels)
return cifar_train_data, cifar_train_filenames, cifar_train_labels, \
cifar_test_data, cifar_test_filenames, cifar_test_labels, cifar_label_names
#FEATURE EXTRACTION
#FEATURE EXTRACTION TECHNIQUES such as Color Histogram ,HOG,SURF,SIFT
def get_color_hist(images, name='color_hist'):
histograms = []
for img in images:
histograms.append(cv2.calcHist([img], [0, 1, 2],None, [8, 8, 8], [0, 256, 0, 256, 0, 256]).flatten())
result = np.array(histograms)
return result
def get_hog(train_images_temp,test_images_temp,name='hog'):
hog_features_train=[]
hog_features_test=[]
for i in range(0,len(train_images_temp)):
fd = hog(train_images_temp[i],block_norm='L2')
hog_features_train.append(fd)
for i in range(0,len(test_images_temp)):
fd = hog(test_images_temp[i],block_norm='L2')
hog_features_test.append(fd)
hog_features_train=np.array(hog_features_train)
hog_features_test=np.array(hog_features_test)
return hog_features_train,hog_features_test
def get_surf(images, name='surf', save=False):
# SURF descriptor for 1 image
def get_image_surf(image, vector_size=8):
alg = cv2.xfeatures2d.SURF_create()
kps = alg.detect(image, None)
kps = sorted(kps, key=lambda x: -x.response)[:vector_size]
# Making descriptor of same size
# Descriptor vector size is 64
needed_size = (vector_size * 64)
if len(kps) == 0:
return np.zeros(needed_size)
kps, dsc = alg.compute(image, kps)
dsc = dsc.flatten()
if dsc.size < needed_size:
# if we have less than 32 descriptors then just adding zeros at the
# end of our feature vector
dsc = np.concatenate([dsc, np.zeros(needed_size - dsc.size)])
return dsc
# SURF descriptor for all images
features = []
for i, img in enumerate(images):
dsc = get_image_surf(img)
features.append(dsc)
result = np.array(features)
return result
def get_sift(images, name='sift'):
# SIFT descriptor for 1 image
def get_image_sift(image, vector_size=8):
alg = cv2.xfeatures2d.SIFT_create()
kps = alg.detect(image, None)
kps = sorted(kps, key=lambda x: -x.response)[:vector_size]
# Making descriptor of same size
# Descriptor vector size is 128
needed_size = (vector_size * 128)
if len(kps) == 0:
return np.zeros(needed_size)
kps, dsc = alg.compute(image, kps)
dsc = dsc.flatten()
if dsc.size < needed_size:
# if we have less than 32 descriptors then just adding zeros at the
# end of our feature vector
dsc = np.concatenate([dsc, np.zeros(needed_size - dsc.size)])
return dsc
# SIFT descriptor for all images
features = []
for i, img in enumerate(images):
dsc = get_image_sift(img)
features.append(dsc)
result = np.array(features)
return result
#Load Data and Visualization and Preprocessing
cifar_10_dir = dataset
train_data, train_filenames, train_labels, test_data, test_filenames, test_labels, label_names = load_cifar_10_data(cifar_10_dir)
train_data_gray=[cv2.cvtColor(img,cv2.COLOR_BGR2GRAY) for img in train_data]
test_data_gray=[cv2.cvtColor(img,cv2.COLOR_BGR2GRAY) for img in test_data]
train_data_flatten=train_data.reshape(train_data.shape[0],train_data.shape[1]*train_data.shape[2]*train_data.shape[3])
test_data_flatten=test_data.reshape(test_data.shape[0],test_data.shape[1]*test_data.shape[2]*test_data.shape[3])
train_data_gray=np.array(train_data_gray)
test_data_gray=np.array(test_data_gray)
print(train_data_gray.shape)
plt.imshow(train_data_gray[1])
print(train_data_flatten.shape)
print(label_names)
train_data=train_data.astype('float32')
test_data=test_data.astype('float32')
train_data=train_data/255.0
test_data=test_data/255.0
print((label_names[0]))
#Data Visualization
w=10
h=10
fig=plt.figure(figsize=(10, 8))
columns = 4
rows = 3
for i in range(1, columns*rows +1):
img = train_data[i]
fig.add_subplot(rows, columns, i)
plt.imshow(img)
plt.show()
counter=Counter(train_labels)
print(counter)
#Shapes of all data (training,testing,labels)
print("Train data: ", train_data.shape)
print("Train filenames: ", train_filenames.shape)
print("Train labels: ", train_labels.shape)
print("Test data: ", test_data.shape)
print("Test filenames: ", test_filenames.shape)
print("Test labels: ", test_labels.shape)
print("Label names: ", label_names.shape)
print(train_labels[:])
train_data_hist=get_color_hist(train_data)
test_data_hist=get_color_hist(test_data)
train_data_hog,test_data_hog=get_hog(train_data_gray,test_data_gray)
train_data_sift=get_sift(train_data_gray)
test_data_sift=get_sift(test_data_gray)
train_data_surf=get_sift(train_data_gray)
test_data_surf=get_sift(test_data_gray)
print(train_data_hist.shape)
print(train_data_hog.shape)
print(train_data_sift.shape)
print(train_data_surf.shape)
plt.imshow(train_data_sift[1].reshape(32,32))
plt.imshow(train_data_surf[1].reshape(32,32))
X_train,X_test,y_train,y_test=train_test_split(train_data,train_labels,test_size=0.2,random_state=42)
model=RandomForestClassifier()
model.fit(train_data_hist,train_labels)
print(model.score(test_data_hist,test_labels))
model=RandomForestClassifier()
model.fit(train_data_hog,train_labels)
print(model.score(test_data_hog,test_labels))
model=RandomForestClassifier()
model.fit(train_data_sift,train_labels)
print(model.score(test_data_sift,test_labels))
model=RandomForestClassifier()
model.fit(train_data_surf,train_labels)
print(model.score(test_data_surf,test_labels))
model=SVC()
model.fit(X_train,y_train)
print(model.score(X_test,y_test))
# model=RandomForestClassifier()
# model.fit(train_data.reshape(50000,3072),train_labels)
print(model.score(test_data.reshape(10000,3072),test_labels))
#history=model.fit(train_data,train_labels,validation_data=(test_data,test_labels),epochs=15)
def convert_to_tuples(features):
return features[IMAGE_INPUT_NAME], features[LABEL_INPUT_NAME]
def convert_to_dictionaries(image, label):
return {IMAGE_INPUT_NAME: image, LABEL_INPUT_NAME: label}
IMAGE_INPUT_NAME = 'image'
LABEL_INPUT_NAME = 'label'
import sys
import tensorflow as tf
from matplotlib import pyplot
from keras.datasets import cifar10
from keras.utils import to_categorical
from keras.models import Sequential
from keras.layers import Conv2D
from keras.layers import MaxPooling2D
from keras.layers import Dense
from keras.layers import Flatten
from keras.optimizers import SGD
train_labels_cat=to_categorical(train_labels)
test_labels_cat=to_categorical(test_labels)
import tensorflow as tf
from tensorflow import keras
from tensorflow.keras import layers
#1VGG BLOCK
def base_model_func1():
inputs=keras.Input(shape=(32,32,3),dtype=tf.float32,name=IMAGE_INPUT_NAME)
x=inputs
x=keras.layers.Conv2D(32,(3,3),activation='relu')(x)
x=keras.layers.Conv2D(32,(3,3),activation='relu')(x)
x=keras.layers.MaxPooling2D((2,2))(x)
x=keras.layers.Flatten()(x)
x=keras.layers.Dense(128,activation='relu')(x)
output=keras.layers.Dense(10,activation='softmax')(x)
model=keras.Model(inputs=inputs,outputs=output,name='cifar10_basemodel_1VGG')
return model
#2VGG BLOCK
def base_model_func2():
inputs=keras.Input(shape=(32,32,3),dtype=tf.float32,name=IMAGE_INPUT_NAME)
x=inputs
x=keras.layers.Conv2D(32,(3,3),activation='relu')(x)
x=keras.layers.Conv2D(32,(3,3),activation='relu')(x)
x=keras.layers.MaxPooling2D((2,2))(x)
x=keras.layers.Conv2D(64,(3,3),activation='relu')(x)
x=keras.layers.Conv2D(64,(3,3),activation='relu')(x)
x=keras.layers.MaxPooling2D((2,2))(x)
x=keras.layers.Flatten()(x)
x=keras.layers.Dense(128,activation='relu')(x)
output=keras.layers.Dense(10,activation='softmax')(x)
model=keras.Model(inputs=inputs,outputs=output,name='cifar10_basemodel_2VGG')
return model
#3VGG BLOCK
def base_model_func3():
inputs=keras.Input(shape=(32,32,3),dtype=tf.float32,name=IMAGE_INPUT_NAME)
x=inputs
x=keras.layers.Conv2D(32,(3,3),activation='relu')(x)
x=keras.layers.Conv2D(32,(3,3),activation='relu')(x)
x=keras.layers.MaxPooling2D((2,2))(x)
x=keras.layers.Dropout(0.2)(x)
x=keras.layers.Conv2D(64,(3,3),activation='relu')(x)
x=keras.layers.Conv2D(64,(3,3),activation='relu')(x)
x=keras.layers.MaxPooling2D((2,2))(x)
x=keras.layers.Dropout(0.2)(x)
x=keras.layers.Conv2D(128,(3,3),activation='relu')(x)
x=keras.layers.Conv2D(128,(3,3),activation='relu')(x)
x=keras.layers.Dropout(0.2)(x)
#x=keras.layers.MaxPooling2D((2,2))(x)
x=keras.layers.Flatten()(x)
x=keras.layers.Dense(128,activation='relu')(x)
x=keras.layers.Dropout(0.2)(x)
output=keras.layers.Dense(10,activation='softmax')(x)
model=keras.Model(inputs=inputs,outputs=output,name='cifar10_basemodel_3VGG')
return model
# base_model = build_base_model(HPARAMS)
# base_model.summary()
base_model=base_model_func3()
base_model.summary()
#opt = SGD(lr=0.001, momentum=0.9)
es=tf.keras.callbacks.EarlyStopping(monitor='val_loss',mode='min',verbose=1,patience=18)#early stopping
mc = tf.keras.callbacks.ModelCheckpoint('best_model.h5', monitor='val_accuracy', mode='max', verbose=1, save_best_only=True)#saving best model
base_model.compile(optimizer='sgd', loss='categorical_crossentropy',
metrics=['accuracy'])
first_nn_fitted=base_model.fit(train_data,train_labels_cat,validation_data=(test_data,test_labels_cat), epochs=100,verbose=1,callbacks=[es,mc])
# base_model.compile(optimizer='adam', loss='sparse_categorical_crossentropy', metrics=['accuracy'])
# history=base_model.fit(train_data,train_labels,validation_data=(test_data,test_labels),epochs=5,verbose=1)
# predict probabilities for test set
yhat_probs = base_adv_model.predict(test_data, verbose=0)
# predict crisp classes for test set
yhat_classes=np.argmax(yhat_probs,axis=1)
#yhat_classes = base_model.predict_classes(test_data, verbose=0)
test_labels_temp = np.array(test_labels, dtype=np.int)
precision = precision_score(test_labels_temp.flatten(), yhat_classes.flatten(),average='macro')
print('Precision: %f' % precision)
# recall: tp / (tp + fn)
recall = recall_score(test_labels_temp.flatten(), yhat_classes.flatten(),average='macro')
print('Recall: %f' % recall)
# f1: 2 tp / (2 tp + fp + fn)
f1 = f1_score(test_labels_temp.flatten(), yhat_classes.flatten(),average='macro')
print('F1 score: %f' % f1)
#NEURAL GRAPH MACHINES USING NSL Framework
adv_config = nsl.configs.make_adv_reg_config(
multiplier=0.2,
adv_step_size=0.01
)
#defined config of graph network
base_adv_model = base_model_func3()
#base_adv_model = build_base_model(HPARAMS)
adv_model = nsl.keras.AdversarialRegularization(
base_adv_model,
label_keys=[LABEL_INPUT_NAME],
adv_config=adv_config
)
#building adversarial nework using base and graphs
train_set_for_adv_model = convert_to_dictionaries(train_data,train_labels_cat)
test_set_for_adv_model = convert_to_dictionaries(test_data,test_labels_cat)
print(len(train_set_for_adv_model[IMAGE_INPUT_NAME]))
#print((test_set_for_adv_model))
#Training adversarial network
# adv_model.compile(optimizer='adam', loss='sparse_categorical_crossentropy',
# metrics=['acc'])
es=tf.keras.callbacks.EarlyStopping(monitor='val_loss',mode='min',verbose=1,patience=18)
mc = tf.keras.callbacks.ModelCheckpoint('best_model.h5', monitor='val_categorical_accuracy', mode='max', verbose=1, save_best_only=True)
adv_model.compile(optimizer='sgd', loss='categorical_crossentropy', metrics=['accuracy'])
second_nn_fitted=adv_model.fit(train_set_for_adv_model,validation_data=test_set_for_adv_model, epochs=100,callbacks=[es,mc])
# train_labels_cat=np.array(train_labels_cat,dtype='float32')
# adv_model.compile(optimizer='adam',loss='categorical_crossentropy',metrics=['acc'])
# new_model=adv_model.fit({'feature':train_data,'label':train_labels_cat},epochs=10,verbose=1)
results = adv_model.evaluate(test_set_for_adv_model)
named_results = dict(zip(adv_model.metrics_names, results))
print('\naccuracy:', named_results['categorical_accuracy'])
from sklearn.metrics import accuracy_score, precision_score, recall_score, f1_score
base_model.evaluate(test_data,test_labels_cat)
#PLOTTING EPOCHS VS LOSS AND ACCURCY FOR BASE MODELS
fig, (ax1, ax2) = plt.subplots(2, 1)
ax1.plot(range(len(first_nn_fitted.history['loss'])), first_nn_fitted.history['loss'],linestyle='-', color='blue',label='Training', lw=2)
ax1.plot(range(len(first_nn_fitted.history['val_loss'])), first_nn_fitted.history['val_loss'], linestyle='-', color='green',label='Test', lw=2)
ax2.plot(range(len(first_nn_fitted.history['accuracy'])), first_nn_fitted.history['accuracy'],linestyle='-', color='blue',label='Training', lw=2)
ax2.plot(range(len(first_nn_fitted.history['val_accuracy'])), first_nn_fitted.history['val_accuracy'], linestyle='-', color='green',label='Test', lw=2)
leg = ax1.legend(bbox_to_anchor=(0.7, 0.9), loc=2, borderaxespad=0.,fontsize=13)
ax1.set_xticklabels('')
#ax1.set_yscale('log')
ax2.set_xlabel('# Epochs',fontsize=14)
ax1.set_ylabel('Loss',fontsize=14)
ax2.set_ylabel('Accuracy',fontsize=14)
plt.show()
#PLOTTING EPOCHS VS LOSS AND ACCURCY FOR NEURAL GRAPH MACHINES MODELS
fig, (ax1, ax2) = plt.subplots(2, 1)
ax1.plot(range(len(second_nn_fitted.history['loss'])), second_nn_fitted.history['loss'],linestyle='-', color='blue',label='Training', lw=2)
ax1.plot(range(len(second_nn_fitted.history['val_loss'])), second_nn_fitted.history['val_loss'], linestyle='-', color='green',label='Test', lw=2)
ax2.plot(range(len(second_nn_fitted.history['categorical_accuracy'])), second_nn_fitted.history['categorical_accuracy'],linestyle='-', color='blue',label='Training', lw=2)
ax2.plot(range(len(second_nn_fitted.history['val_categorical_accuracy'])), second_nn_fitted.history['val_categorical_accuracy'], linestyle='-', color='green',label='Test', lw=2)
leg = ax1.legend(bbox_to_anchor=(0.7, 0.9), loc=2, borderaxespad=0.,fontsize=13)
ax1.set_xticklabels('')
#ax1.set_yscale('log')
ax2.set_xlabel('# Epochs',fontsize=14)
ax1.set_ylabel('Loss',fontsize=14)
ax2.set_ylabel('Accuracy',fontsize=14)
plt.show()