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July 21, 2015 12:14
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DeepDreamのコード
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# imports and basic notebook setup | |
from cStringIO import StringIO | |
import numpy as np | |
import scipy.ndimage as nd | |
import PIL.Image | |
from IPython.display import clear_output, Image, display | |
from google.protobuf import text_format | |
import caffe | |
def showarray(a, fmt='jpeg'): | |
a = np.uint8(np.clip(a, 0, 255)) | |
f = StringIO() | |
PIL.Image.fromarray(a).save(f, fmt) | |
display(Image(data=f.getvalue())) | |
model_path = '../caffe/models/bvlc_googlenet/' # substitute your path here | |
net_fn = model_path + 'deploy.prototxt' | |
param_fn = model_path + 'bvlc_googlenet.caffemodel' | |
# Patching model to be able to compute gradients. | |
# Note that you can also manually add "force_backward: true" line to "deploy.prototxt". | |
model = caffe.io.caffe_pb2.NetParameter() | |
text_format.Merge(open(net_fn).read(), model) | |
model.force_backward = True | |
open('tmp.prototxt', 'w').write(str(model)) | |
net = caffe.Classifier('tmp.prototxt', param_fn, | |
mean = np.float32([104.0, 116.0, 122.0]), # ImageNet mean, training set dependent | |
channel_swap = (2,1,0)) # the reference model has channels in BGR order instead of RGB | |
# a couple of utility functions for converting to and from Caffe's input image layout | |
def preprocess(net, img): | |
return np.float32(np.rollaxis(img, 2)[::-1]) - net.transformer.mean['data'] | |
def deprocess(net, img): | |
return np.dstack((img + net.transformer.mean['data'])[::-1]) | |
def make_step(net, step_size=1.5, end='inception_4c/output', jitter=32, clip=True): | |
'''Basic gradient ascent step.''' | |
src = net.blobs['data'] # input image is stored in Net's 'data' blob | |
dst = net.blobs[end] | |
ox, oy = np.random.randint(-jitter, jitter+1, 2) | |
src.data[0] = np.roll(np.roll(src.data[0], ox, -1), oy, -2) # apply jitter shift | |
net.forward(end=end) | |
dst.diff[:] = dst.data # specify the optimization objective | |
net.backward(start=end) | |
g = src.diff[0] | |
# apply normalized ascent step to the input image | |
src.data[:] += step_size/np.abs(g).mean() * g | |
src.data[0] = np.roll(np.roll(src.data[0], -ox, -1), -oy, -2) # unshift image | |
if clip: | |
bias = net.transformer.mean['data'] | |
src.data[:] = np.clip(src.data, -bias, 255-bias) | |
def deepdream(net, base_img, iter_n=10, octave_n=4, octave_scale=1.4, end='inception_4c/output', clip=True, **step_params): | |
# prepare base images for all octaves | |
octaves = [preprocess(net, base_img)] | |
for i in xrange(octave_n-1): | |
octaves.append(nd.zoom(octaves[-1], (1, 1.0/octave_scale,1.0/octave_scale), order=1)) | |
src = net.blobs['data'] | |
detail = np.zeros_like(octaves[-1]) # allocate image for network-produced details | |
for octave, octave_base in enumerate(octaves[::-1]): | |
h, w = octave_base.shape[-2:] | |
if octave > 0: | |
# upscale details from the previous octave | |
h1, w1 = detail.shape[-2:] | |
detail = nd.zoom(detail, (1, 1.0*h/h1,1.0*w/w1), order=1) | |
src.reshape(1,3,h,w) # resize the network's input image size | |
src.data[0] = octave_base+detail | |
for i in xrange(iter_n): | |
make_step(net, end=end, clip=clip, **step_params) | |
# visualization | |
vis = deprocess(net, src.data[0]) | |
if not clip: # adjust image contrast if clipping is disabled | |
vis = vis*(255.0/np.percentile(vis, 99.98)) | |
showarray(vis) | |
print octave, i, end, vis.shape | |
clear_output(wait=True) | |
# extract details produced on the current octave | |
detail = src.data[0]-octave_base | |
# returning the resulting image | |
return deprocess(net, src.data[0]) | |
img = np.float32(PIL.Image.open('hoge.jpg')) | |
showarray(img) | |
_=deepdream(net, img) |
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