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from PIL import Image
import numpy as np
import cv2
import torchvision.transforms as transforms
import torch
import io
import os
import functools
class DataLoader():
def __init__(self, opt, cv_img):
super(DataLoader, self).__init__()
self.dataset = Dataset()
self.dataset.initialize(opt, cv_img)
self.dataloader = torch.utils.data.DataLoader(
self.dataset,
batch_size=opt.batchSize,
shuffle=not opt.serial_batches,
num_workers=int(opt.nThreads))
def load_data(self):
return self.dataloader
def __len__(self):
return 1
class Dataset(torch.utils.data.Dataset):
def __init__(self):
super(Dataset, self).__init__()
def initialize(self, opt, cv_img):
self.opt = opt
self.root = opt.dataroot
self.A = Image.fromarray(cv2.cvtColor(cv_img, cv2.COLOR_BGR2RGB))
self.dataset_size = 1
def __getitem__(self, index):
transform_A = get_transform(self.opt)
A_tensor = transform_A(self.A.convert('RGB'))
B_tensor = inst_tensor = feat_tensor = 0
input_dict = {'label': A_tensor, 'inst': inst_tensor, 'image': B_tensor,
'feat': feat_tensor, 'path': ""}
return input_dict
def __len__(self):
return 1
class DeepModel(torch.nn.Module):
def initialize(self, opt):
torch.cuda.empty_cache()
self.opt = opt
self.gpu_ids = [] #FIX CPU
self.netG = self.__define_G(opt.input_nc, opt.output_nc, opt.ngf, opt.netG,
opt.n_downsample_global, opt.n_blocks_global, opt.n_local_enhancers,
opt.n_blocks_local, opt.norm, self.gpu_ids)
# load networks
self.__load_network(self.netG)
def inference(self, label, inst):
# Encode Inputs
input_label, inst_map, _, _ = self.__encode_input(label, inst, infer=True)
# Fake Generation
input_concat = input_label
with torch.no_grad():
fake_image = self.netG.forward(input_concat)
return fake_image
# helper loading function that can be used by subclasses
def __load_network(self, network):
save_path = os.path.join(self.opt.checkpoints_dir)
network.load_state_dict(torch.load(save_path))
def __encode_input(self, label_map, inst_map=None, real_image=None, feat_map=None, infer=False):
if (len(self.gpu_ids) > 0):
input_label = label_map.data.cuda() #GPU
else:
input_label = label_map.data #CPU
return input_label, inst_map, real_image, feat_map
def __weights_init(self, m):
classname = m.__class__.__name__
if classname.find('Conv') != -1:
m.weight.data.normal_(0.0, 0.02)
elif classname.find('BatchNorm2d') != -1:
m.weight.data.normal_(1.0, 0.02)
m.bias.data.fill_(0)
def __define_G(self, input_nc, output_nc, ngf, netG, n_downsample_global=3, n_blocks_global=9, n_local_enhancers=1,
n_blocks_local=3, norm='instance', gpu_ids=[]):
norm_layer = self.__get_norm_layer(norm_type=norm)
netG = GlobalGenerator(input_nc, output_nc, ngf, n_downsample_global, n_blocks_global, norm_layer)
if len(gpu_ids) > 0:
netG.cuda(gpu_ids[0])
netG.apply(self.__weights_init)
return netG
def __get_norm_layer(self, norm_type='instance'):
norm_layer = functools.partial(torch.nn.InstanceNorm2d, affine=False)
return norm_layer
##############################################################################
# Generator
##############################################################################
class GlobalGenerator(torch.nn.Module):
def __init__(self, input_nc, output_nc, ngf=64, n_downsampling=3, n_blocks=9, norm_layer=torch.nn.BatchNorm2d,
padding_type='reflect'):
assert(n_blocks >= 0)
super(GlobalGenerator, self).__init__()
activation = torch.nn.ReLU(True)
model = [torch.nn.ReflectionPad2d(3), torch.nn.Conv2d(input_nc, ngf, kernel_size=7, padding=0), norm_layer(ngf), activation]
### downsample
for i in range(n_downsampling):
mult = 2**i
model += [torch.nn.Conv2d(ngf * mult, ngf * mult * 2, kernel_size=3, stride=2, padding=1),
norm_layer(ngf * mult * 2), activation]
### resnet blocks
mult = 2**n_downsampling
for i in range(n_blocks):
model += [ResnetBlock(ngf * mult, padding_type=padding_type, activation=activation, norm_layer=norm_layer)]
### upsample
for i in range(n_downsampling):
mult = 2**(n_downsampling - i)
model += [torch.nn.ConvTranspose2d(ngf * mult, int(ngf * mult / 2), kernel_size=3, stride=2, padding=1, output_padding=1),
norm_layer(int(ngf * mult / 2)), activation]
model += [torch.nn.ReflectionPad2d(3), torch.nn.Conv2d(ngf, output_nc, kernel_size=7, padding=0), torch.nn.Tanh()]
self.model = torch.nn.Sequential(*model)
def forward(self, input):
return self.model(input)
# Define a resnet block
class ResnetBlock(torch.nn.Module):
def __init__(self, dim, padding_type, norm_layer, activation=torch.nn.ReLU(True), use_dropout=False):
super(ResnetBlock, self).__init__()
self.conv_block = self.__build_conv_block(dim, padding_type, norm_layer, activation, use_dropout)
def __build_conv_block(self, dim, padding_type, norm_layer, activation, use_dropout):
conv_block = []
p = 0
if padding_type == 'reflect':
conv_block += [torch.nn.ReflectionPad2d(1)]
elif padding_type == 'replicate':
conv_block += [torch.nn.ReplicationPad2d(1)]
elif padding_type == 'zero':
p = 1
else:
raise NotImplementedError('padding [%s] is not implemented' % padding_type)
conv_block += [torch.nn.Conv2d(dim, dim, kernel_size=3, padding=p),
norm_layer(dim),
activation]
if use_dropout:
conv_block += [torch.nn.Dropout(0.5)]
p = 0
if padding_type == 'reflect':
conv_block += [torch.nn.ReflectionPad2d(1)]
elif padding_type == 'replicate':
conv_block += [torch.nn.ReplicationPad2d(1)]
elif padding_type == 'zero':
p = 1
else:
raise NotImplementedError('padding [%s] is not implemented' % padding_type)
conv_block += [torch.nn.Conv2d(dim, dim, kernel_size=3, padding=p),
norm_layer(dim)]
return torch.nn.Sequential(*conv_block)
def forward(self, x):
out = x + self.conv_block(x)
return out
# Data utils:
def get_transform(opt, method=Image.BICUBIC, normalize=True):
transform_list = []
base = float(2 ** opt.n_downsample_global)
if opt.netG == 'local':
base *= (2 ** opt.n_local_enhancers)
transform_list.append(transforms.Lambda(lambda img: __make_power_2(img, base, method)))
transform_list += [transforms.ToTensor()]
if normalize:
transform_list += [transforms.Normalize((0.5, 0.5, 0.5),
(0.5, 0.5, 0.5))]
return transforms.Compose(transform_list)
def __make_power_2(img, base, method=Image.BICUBIC):
ow, oh = img.size
h = int(round(oh / base) * base)
w = int(round(ow / base) * base)
if (h == oh) and (w == ow):
return img
return img.resize((w, h), method)
# Converts a Tensor into a Numpy array
# |imtype|: the desired type of the converted numpy array
def tensor2im(image_tensor, imtype=np.uint8, normalize=True):
if isinstance(image_tensor, list):
image_numpy = []
for i in range(len(image_tensor)):
image_numpy.append(tensor2im(image_tensor[i], imtype, normalize))
return image_numpy
image_numpy = image_tensor.cpu().float().numpy()
if normalize:
image_numpy = (np.transpose(image_numpy, (1, 2, 0)) + 1) / 2.0 * 255.0
else:
image_numpy = np.transpose(image_numpy, (1, 2, 0)) * 255.0
image_numpy = np.clip(image_numpy, 0, 255)
if image_numpy.shape[2] == 1 or image_numpy.shape[2] > 3:
image_numpy = image_numpy[:,:,0]
return image_numpy.astype(imtype) |