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python能用來做什麼有意思的事情-可以用 Python 程式設計語言做哪些神奇好玩的事情?...

from __future__ import print_function

from keras.preprocessing.image import load_img, img_to_array

from scipy.misc import imsave

import numpy as np

from scipy.optimize import fmin_l_bfgs_b

import time

import argparse

from keras.applications import vgg16

from keras import backend as K

parser = argparse.ArgumentParser(description='Neural style transfer with Keras.')

parser.add_argument('base_image_path', metavar='base', type=str,

help='Path to the image to transform.')

parser.add_argument('style_reference_image_path', metavar='ref', type=str,

help='Path to the style reference image.')

parser.add_argument('result_prefix', metavar='res_prefix', type=str,

help='Prefix for the saved results.')

parser.add_argument('--iter', type=int, default=10, required=False,

help='Number of iterations to run.')

parser.add_argument('--content_weight', type=float, default=0.025, required=False,

help='Content weight.')

parser.add_argument('--style_weight', type=float, default=1.0, required=False,

help='Style weight.')

parser.add_argument('--tv_weight', type=float, default=1.0, required=False,

help='Total Variation weight.')

args = parser.parse_args()

base_image_path = args.base_image_path

style_reference_image_path = args.style_reference_image_path

result_prefix = args.result_prefix

iterations = args.iter

# these are the weights of the different loss components

total_variation_weight = args.tv_weight

style_weight = args.style_weight

content_weight = args.content_weight

# dimensions of the generated picture.

width, height = load_img(base_image_path).size

img_nrows = 400

img_ncols = int(width * img_nrows / height)

# util function to open, resize and format pictures into appropriate tensors

def preprocess_image(image_path):

img = load_img(image_path, target_size=(img_nrows, img_ncols))

img = img_to_array(img)

img = np.expand_dims(img, axis=0)

img = vgg16.preprocess_input(img)

return img

# util function to convert a tensor into a valid image

def deprocess_image(x):

if K.image_data_format() == 'channels_first':

x = x.reshape((3, img_nrows, img_ncols))

x = x.transpose((1, 2, 0))

else:

x = x.reshape((img_nrows, img_ncols, 3))

# Remove zero-center by mean pixel

x[:, :, 0] += 103.939

x[:, :, 1] += 116.779

x[:, :, 2] += 123.68

# 'BGR'->'RGB'

x = x[:, :, ::-1]

x = np.clip(x, 0, 255).astype('uint8')

return x

# get tensor representations of our images

base_image = K.variable(preprocess_image(base_image_path))

style_reference_image = K.variable(preprocess_image(style_reference_image_path))

# this will contain our generated image

if K.image_data_format() == 'channels_first':

combination_image = K.placeholder((1, 3, img_nrows, img_ncols))

else:

combination_image = K.placeholder((1, img_nrows, img_ncols, 3))

# combine the 3 images into a single Keras tensor

input_tensor = K.concatenate([base_image,

style_reference_image,

combination_image], axis=0)

# build the VGG16 network with our 3 images as input

# the model will be loaded with pre-trained ImageNet weights

model = vgg16.VGG16(input_tensor=input_tensor,

weights='imagenet', include_top=False)

print('Model loaded.')

# get the symbolic outputs of each "key" layer (we gave them unique names).

outputs_dict = dict([(layer.name, layer.output) for layer in model.layers])

# compute the neural style loss

# first we need to define 4 util functions

# the gram matrix of an image tensor (feature-wise outer product)

def gram_matrix(x):

assert K.ndim(x) == 3

if K.image_data_format() == 'channels_first':

features = K.batch_flatten(x)

else:

features = K.batch_flatten(K.permute_dimensions(x, (2, 0, 1)))

gram = K.dot(features, K.transpose(features))

return gram

# the "style loss" is designed to maintain

# the style of the reference image in the generated image.

# It is based on the gram matrices (which capture style) of

# feature maps from the style reference image

# and from the generated image

def style_loss(style, combination):

assert K.ndim(style) == 3

assert K.ndim(combination) == 3

S = gram_matrix(style)

C = gram_matrix(combination)

channels = 3

size = img_nrows * img_ncols

return K.sum(K.square(S - C)) / (4. * (channels ** 2) * (size ** 2))

# an auxiliary loss function

# designed to maintain the "content" of the

# base image in the generated image

def content_loss(base, combination):

return K.sum(K.square(combination - base))

# the 3rd loss function, total variation loss,

# designed to keep the generated image locally coherent

def total_variation_loss(x):

assert K.ndim(x) == 4

if K.image_data_format() == 'channels_first':

a = K.square(x[:, :, :img_nrows - 1, :img_ncols - 1] - x[:, :, 1:, :img_ncols - 1])

b = K.square(x[:, :, :img_nrows - 1, :img_ncols - 1] - x[:, :, :img_nrows - 1, 1:])

else:

a = K.square(x[:, :img_nrows - 1, :img_ncols - 1, :] - x[:, 1:, :img_ncols - 1, :])

b = K.square(x[:, :img_nrows - 1, :img_ncols - 1, :] - x[:, :img_nrows - 1, 1:, :])

return K.sum(K.pow(a + b, 1.25))

# combine these loss functions into a single scalar

loss = K.variable(0.)

layer_features = outputs_dict['block4_conv2']

base_image_features = layer_features[0, :, :, :]

combination_features = layer_features[2, :, :, :]

loss += content_weight * content_loss(base_image_features,

combination_features)

feature_layers = ['block1_conv1', 'block2_conv1',

'block3_conv1', 'block4_conv1',

'block5_conv1']

for layer_name in feature_layers:

layer_features = outputs_dict[layer_name]

style_reference_features = layer_features[1, :, :, :]

combination_features = layer_features[2, :, :, :]

sl = style_loss(style_reference_features, combination_features)

loss += (style_weight / len(feature_layers)) * sl

loss += total_variation_weight * total_variation_loss(combination_image)

# get the gradients of the generated image wrt the loss

grads = K.gradients(loss, combination_image)

outputs = [loss]

if isinstance(grads, (list, tuple)):

outputs += grads

else:

outputs.append(grads)

f_outputs = K.function([combination_image], outputs)

def eval_loss_and_grads(x):

if K.image_data_format() == 'channels_first':

x = x.reshape((1, 3, img_nrows, img_ncols))

else:

x = x.reshape((1, img_nrows, img_ncols, 3))

outs = f_outputs([x])

loss_value = outs[0]

if len(outs[1:]) == 1:

grad_values = outs[1].flatten().astype('float64')

else:

grad_values = np.array(outs[1:]).flatten().astype('float64')

return loss_value, grad_values

# this Evaluator class makes it possible

# to compute loss and gradients in one pass

# while retrieving them via two separate functions,

# "loss" and "grads". This is done because scipy.optimize

# requires separate functions for loss and gradients,

# but computing them separately would be inefficient.

class Evaluator(object):

def __init__(self):

self.loss_value = None

self.grads_values = None

def loss(self, x):

assert self.loss_value is None

loss_value, grad_values = eval_loss_and_grads(x)

self.loss_value = loss_value

self.grad_values = grad_values

return self.loss_value

def grads(self, x):

assert self.loss_value is not None

grad_values = np.copy(self.grad_values)

self.loss_value = None

self.grad_values = None

return grad_values

evaluator = Evaluator()

# run scipy-based optimization (L-BFGS) over the pixels of the generated image

# so as to minimize the neural style loss

if K.image_data_format() == 'channels_first':

x = np.random.uniform(0, 255, (1, 3, img_nrows, img_ncols)) - 128.

else:

x = np.random.uniform(0, 255, (1, img_nrows, img_ncols, 3)) - 128.

for i in range(iterations):

print('Start of iteration', i)

start_time = time.time()

x, min_val, info = fmin_l_bfgs_b(evaluator.loss, x.flatten(),

fprime=evaluator.grads, maxfun=20)

print('Current loss value:', min_val)

# save current generated image

img = deprocess_image(x.copy())

fname = result_prefix + '_at_iteration_%d.png' % i

imsave(fname, img)

end_time = time.time()

print('Image saved as', fname)

print('Iteration%dcompleted in%ds' % (i, end_time - start_time))