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attack.py
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attack.py
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"""Implementation of sample attack on Inception_v3"""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import os
import numpy as np
from PIL import Image
from scipy.misc import imread, imresize, imsave
from scipy.misc import imresize
import tensorflow as tf
from tensorflow.contrib.slim.nets import inception
slim = tf.contrib.slim
tf.flags.DEFINE_string(
'master', '', 'The address of the TensorFlow master to use.')
tf.flags.DEFINE_string(
'checkpoint_path', '', 'Path to checkpoint for inception network.')
tf.flags.DEFINE_string(
'input_dir', '', 'Input directory with images.')
tf.flags.DEFINE_string(
'output_dir', '', 'Output directory with images.')
tf.flags.DEFINE_integer(
'image_width', 299, 'Width of each input images.')
tf.flags.DEFINE_integer(
'image_height', 299, 'Height of each input images.')
tf.flags.DEFINE_integer(
'image_resize', 330, 'Height of each input images.')
tf.flags.DEFINE_integer(
'batch_size', 10, 'How many images process at one time.')
tf.flags.DEFINE_float(
'max_epsilon', 16.0, 'Maximum size of adversarial perturbation.')
tf.flags.DEFINE_float(
'prob', 0.5, 'probability of using diverse inputs.')
# if momentum = 1, this attack becomes M-DI-2-FGSM
tf.flags.DEFINE_float(
'momentum', 0.0, 'Momentum.')
tf.flags.DEFINE_string(
'GPU_ID', '0', 'which GPU to use.')
FLAGS = tf.flags.FLAGS
print("print all settings\n")
print(FLAGS.master)
print(FLAGS.__dict__)
os.environ['CUDA_DEVICE_ORDER'] = 'PCI_BUS_ID'
os.environ['CUDA_VISIBLE_DEVICES'] = FLAGS.GPU_ID
def load_images(input_dir, output_dir, batch_shape):
"""Read png images from input directory in batches.
Args:
input_dir: input directory
batch_shape: shape of minibatch array, i.e. [batch_size, height, width, 3]
Yields:
filenames: list file names without path of each image
Lenght of this list could be less than batch_size, in this case only
first few images of the result are elements of the minibatch.
images: array with all images from this batch
"""
images = np.zeros(batch_shape)
filenames = []
idx = 0
batch_size = batch_shape[0]
for filepath in tf.gfile.Glob(os.path.join(input_dir, '*.png')):
temp_name = str.split(filepath, '/')
output_name = output_dir + '/'+ temp_name[-1]
# check if the file exist
if os.path.isfile(output_name) == False:
with tf.gfile.Open(filepath) as f:
image = imread(f, mode='RGB').astype(np.float) / 255.0
# Images for inception classifier are normalized to be in [-1, 1] interval.
images[idx, :, :, :] = image * 2.0 - 1.0
filenames.append(os.path.basename(filepath))
idx += 1
if idx == batch_size:
yield filenames, images
filenames = []
images = np.zeros(batch_shape)
idx = 0
if idx > 0:
yield filenames, images
def save_images(images, filenames, output_dir):
"""Saves images to the output directory.
Args:
images: array with minibatch of images
filenames: list of filenames without path
If number of file names in this list less than number of images in
the minibatch then only first len(filenames) images will be saved.
output_dir: directory where to save images
"""
for i, filename in enumerate(filenames):
# Images for inception classifier are normalized to be in [-1, 1] interval,
# so rescale them back to [0, 1].
with tf.gfile.Open(os.path.join(output_dir, filename), 'w') as f:
imsave(f, (images[i, :, :, :] + 1.0) * 0.5 * 255, format='png')
def graph(x, y, i, x_max, x_min, grad):
eps = 2.0 * FLAGS.max_epsilon / 255.0
eps_iter = 2.0 / 255.0
num_classes = 1001
momentum = FLAGS.momentum
with slim.arg_scope(inception.inception_v3_arg_scope()):
logits, end_points = inception.inception_v3(
input_diversity(x), num_classes=num_classes, is_training=False)
pred = tf.argmax(end_points['Predictions'], 1)
# here is the way to stable gt lables
first_round = tf.cast(tf.equal(i, 0), tf.int64)
y = first_round * pred + (1 - first_round) * y
one_hot = tf.one_hot(y, num_classes)
cross_entropy = tf.losses.softmax_cross_entropy(one_hot, logits)
# compute the gradient info
noise = tf.gradients(cross_entropy, x)[0]
noise = noise / tf.reduce_mean(tf.abs(noise), [1,2,3], keep_dims=True)
# accumulate the gradient
noise = momentum * grad + noise
x = x + eps_iter * tf.sign(noise)
x = tf.clip_by_value(x, x_min, x_max)
i = tf.add(i, 1)
return x, y, i, x_max, x_min, noise
def stop(x, y, i, x_max, x_min, grad):
num_iter = int(min(FLAGS.max_epsilon+4, 1.25*FLAGS.max_epsilon))
return tf.less(i, num_iter)
def input_diversity(input_tensor):
rnd = tf.random_uniform((), FLAGS.image_width, FLAGS.image_resize, dtype=tf.int32)
rescaled = tf.image.resize_images(input_tensor, [rnd, rnd], method=tf.image.ResizeMethod.NEAREST_NEIGHBOR)
h_rem = FLAGS.image_resize - rnd
w_rem = FLAGS.image_resize - rnd
pad_top = tf.random_uniform((), 0, h_rem, dtype=tf.int32)
pad_bottom = h_rem - pad_top
pad_left = tf.random_uniform((), 0, w_rem, dtype=tf.int32)
pad_right = w_rem - pad_left
padded = tf.pad(rescaled, [[0, 0], [pad_top, pad_bottom], [pad_left, pad_right], [0, 0]], constant_values=0.)
padded.set_shape((input_tensor.shape[0], FLAGS.image_resize, FLAGS.image_resize, 3))
return tf.cond(tf.random_uniform(shape=[1])[0] < tf.constant(FLAGS.prob), lambda: padded, lambda: input_tensor)
def main(_):
eps = 2.0 * FLAGS.max_epsilon / 255.0
batch_shape = [FLAGS.batch_size, FLAGS.image_height, FLAGS.image_width, 3]
with tf.Graph().as_default():
# Prepare graph
x_input = tf.placeholder(tf.float32, shape=batch_shape)
x_max = tf.clip_by_value(x_input + eps, -1.0, 1.0)
x_min = tf.clip_by_value(x_input - eps, -1.0, 1.0)
y = tf.constant(np.zeros([FLAGS.batch_size]), tf.int64)
i = tf.constant(0)
grad = tf.zeros(shape=batch_shape)
x_adv, _, _, _, _, _ = tf.while_loop(stop, graph, [x_input, y, i, x_max, x_min, grad])
# Run computation
saver = tf.train.Saver()
with tf.Session() as sess:
saver.restore(sess, FLAGS.checkpoint_path)
for filenames, images in load_images(FLAGS.input_dir, FLAGS.output_dir, batch_shape):
adv_images = sess.run(x_adv, feed_dict={x_input: images})
save_images(adv_images, filenames, FLAGS.output_dir)
if __name__ == '__main__':
tf.app.run()