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util.py
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util.py
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import numpy as np
import matplotlib.pyplot as plt
from PIL import Image
import torchvision.transforms as transforms
import cv2
import torch
from torch.utils import data
from torch.nn import functional as F
from torch import autograd
from model.stylegan.op import conv2d_gradfix
import random
import math
def visualize(img_arr):
plt.imshow(((img_arr.detach().numpy().transpose(1, 2, 0) + 1.0) * 127.5).astype(np.uint8))
plt.axis('off')
def save_image(img, filename):
tmp = ((img.detach().numpy().transpose(1, 2, 0) + 1.0) * 127.5).astype(np.uint8)
cv2.imwrite(filename, cv2.cvtColor(tmp, cv2.COLOR_RGB2BGR))
def load_image(filename):
transform = transforms.Compose([
transforms.ToTensor(),
transforms.Normalize(mean=[0.5, 0.5, 0.5],std=[0.5,0.5,0.5]),
])
img = Image.open(filename)
img = transform(img)
return img.unsqueeze(dim=0)
def data_sampler(dataset, shuffle, distributed):
if distributed:
return data.distributed.DistributedSampler(dataset, shuffle=shuffle)
if shuffle:
return data.RandomSampler(dataset)
else:
return data.SequentialSampler(dataset)
def requires_grad(model, flag=True):
for p in model.parameters():
p.requires_grad = flag
def accumulate(model1, model2, decay=0.999):
par1 = dict(model1.named_parameters())
par2 = dict(model2.named_parameters())
for k in par1.keys():
par1[k].data.mul_(decay).add_(par2[k].data, alpha=1 - decay)
def sample_data(loader):
while True:
for batch in loader:
yield batch
def d_logistic_loss(real_pred, fake_pred):
real_loss = F.softplus(-real_pred)
fake_loss = F.softplus(fake_pred)
return real_loss.mean() + fake_loss.mean()
def d_r1_loss(real_pred, real_img):
with conv2d_gradfix.no_weight_gradients():
grad_real, = autograd.grad(
outputs=real_pred.sum(), inputs=real_img, create_graph=True
)
grad_penalty = grad_real.pow(2).reshape(grad_real.shape[0], -1).sum(1).mean()
return grad_penalty
def g_nonsaturating_loss(fake_pred):
loss = F.softplus(-fake_pred).mean()
return loss
def g_path_regularize(fake_img, latents, mean_path_length, decay=0.01):
noise = torch.randn_like(fake_img) / math.sqrt(
fake_img.shape[2] * fake_img.shape[3]
)
grad, = autograd.grad(
outputs=(fake_img * noise).sum(), inputs=latents, create_graph=True
)
path_lengths = torch.sqrt(grad.pow(2).sum(2).mean(1))
path_mean = mean_path_length + decay * (path_lengths.mean() - mean_path_length)
path_penalty = (path_lengths - path_mean).pow(2).mean()
return path_penalty, path_mean.detach(), path_lengths
def make_noise(batch, latent_dim, n_noise, device):
if n_noise == 1:
return torch.randn(batch, latent_dim, device=device)
noises = torch.randn(n_noise, batch, latent_dim, device=device).unbind(0)
return noises
def mixing_noise(batch, latent_dim, prob, device):
if prob > 0 and random.random() < prob:
return make_noise(batch, latent_dim, 2, device)
else:
return [make_noise(batch, latent_dim, 1, device)]
def set_grad_none(model, targets):
for n, p in model.named_parameters():
if n in targets:
p.grad = None