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dualgan.py
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dualgan.py
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import argparse
import os
import numpy as np
import math
import itertools
import scipy
import sys
import time
import datetime
import torchvision.transforms as transforms
from torchvision.utils import save_image
from torch.utils.data import DataLoader
from torchvision import datasets
from torch.autograd import Variable
import torch.autograd as autograd
from datasets import *
from models import *
import torch.nn as nn
import torch.nn.functional as F
import torch
os.makedirs("images", exist_ok=True)
parser = argparse.ArgumentParser()
parser.add_argument("--epoch", type=int, default=0, help="epoch to start training from")
parser.add_argument("--n_epochs", type=int, default=200, help="number of epochs of training")
parser.add_argument("--batch_size", type=int, default=8, help="size of the batches")
parser.add_argument("--dataset_name", type=str, default="edges2shoes", help="name of the dataset")
parser.add_argument("--lr", type=float, default=0.0002, help="adam: learning rate")
parser.add_argument("--b1", type=float, default=0.5, help="adam: decay of first order momentum of gradient")
parser.add_argument("--b2", type=float, default=0.999, help="adam: decay of first order momentum of gradient")
parser.add_argument("--n_cpu", type=int, default=8, help="number of cpu threads to use during batch generation")
parser.add_argument("--img_size", type=int, default=128, help="size of each image dimension")
parser.add_argument("--channels", type=int, default=3, help="number of image channels")
parser.add_argument("--n_critic", type=int, default=5, help="number of training steps for discriminator per iter")
parser.add_argument("--sample_interval", type=int, default=200, help="interval betwen image samples")
parser.add_argument("--checkpoint_interval", type=int, default=-1, help="interval between model checkpoints")
opt = parser.parse_args()
print(opt)
os.makedirs("images/%s" % opt.dataset_name, exist_ok=True)
os.makedirs("saved_models/%s" % opt.dataset_name, exist_ok=True)
img_shape = (opt.channels, opt.img_size, opt.img_size)
cuda = True if torch.cuda.is_available() else False
# Loss function
cycle_loss = torch.nn.L1Loss()
# Loss weights
lambda_adv = 1
lambda_cycle = 10
lambda_gp = 10
# Initialize generator and discriminator
G_AB = Generator()
G_BA = Generator()
D_A = Discriminator()
D_B = Discriminator()
if cuda:
G_AB.cuda()
G_BA.cuda()
D_A.cuda()
D_B.cuda()
cycle_loss.cuda()
if opt.epoch != 0:
# Load pretrained models
G_AB.load_state_dict(torch.load("saved_models/%s/G_AB_%d.pth" % (opt.dataset_name, opt.epoch)))
G_BA.load_state_dict(torch.load("saved_models/%s/G_BA_%d.pth" % (opt.dataset_name, opt.epoch)))
D_A.load_state_dict(torch.load("saved_models/%s/D_A_%d.pth" % (opt.dataset_name, opt.epoch)))
D_B.load_state_dict(torch.load("saved_models/%s/D_B_%d.pth" % (opt.dataset_name, opt.epoch)))
else:
# Initialize weights
G_AB.apply(weights_init_normal)
G_BA.apply(weights_init_normal)
D_A.apply(weights_init_normal)
D_B.apply(weights_init_normal)
# Configure data loader
transforms_ = [
transforms.Resize((opt.img_size, opt.img_size), Image.BICUBIC),
transforms.ToTensor(),
transforms.Normalize((0.5, 0.5, 0.5), (0.5, 0.5, 0.5)),
]
dataloader = DataLoader(
ImageDataset("../../data/%s" % opt.dataset_name, transforms_=transforms_),
batch_size=opt.batch_size,
shuffle=True,
num_workers=opt.n_cpu,
)
val_dataloader = DataLoader(
ImageDataset("../../data/%s" % opt.dataset_name, mode="val", transforms_=transforms_),
batch_size=16,
shuffle=True,
num_workers=1,
)
# Optimizers
optimizer_G = torch.optim.Adam(
itertools.chain(G_AB.parameters(), G_BA.parameters()), lr=opt.lr, betas=(opt.b1, opt.b2)
)
optimizer_D_A = torch.optim.Adam(D_A.parameters(), lr=opt.lr, betas=(opt.b1, opt.b2))
optimizer_D_B = torch.optim.Adam(D_B.parameters(), lr=opt.lr, betas=(opt.b1, opt.b2))
FloatTensor = torch.cuda.FloatTensor if cuda else torch.FloatTensor
LongTensor = torch.cuda.LongTensor if cuda else torch.LongTensor
def compute_gradient_penalty(D, real_samples, fake_samples):
"""Calculates the gradient penalty loss for WGAN GP"""
# Random weight term for interpolation between real and fake samples
alpha = FloatTensor(np.random.random((real_samples.size(0), 1, 1, 1)))
# Get random interpolation between real and fake samples
interpolates = (alpha * real_samples + ((1 - alpha) * fake_samples)).requires_grad_(True)
validity = D(interpolates)
fake = Variable(FloatTensor(np.ones(validity.shape)), requires_grad=False)
# Get gradient w.r.t. interpolates
gradients = autograd.grad(
outputs=validity,
inputs=interpolates,
grad_outputs=fake,
create_graph=True,
retain_graph=True,
only_inputs=True,
)[0]
gradients = gradients.view(gradients.size(0), -1)
gradient_penalty = ((gradients.norm(2, dim=1) - 1) ** 2).mean()
return gradient_penalty
def sample_images(batches_done):
"""Saves a generated sample from the test set"""
imgs = next(iter(val_dataloader))
real_A = Variable(imgs["A"].type(FloatTensor))
fake_B = G_AB(real_A)
AB = torch.cat((real_A.data, fake_B.data), -2)
real_B = Variable(imgs["B"].type(FloatTensor))
fake_A = G_BA(real_B)
BA = torch.cat((real_B.data, fake_A.data), -2)
img_sample = torch.cat((AB, BA), 0)
save_image(img_sample, "images/%s/%s.png" % (opt.dataset_name, batches_done), nrow=8, normalize=True)
# ----------
# Training
# ----------
batches_done = 0
prev_time = time.time()
for epoch in range(opt.n_epochs):
for i, batch in enumerate(dataloader):
# Configure input
imgs_A = Variable(batch["A"].type(FloatTensor))
imgs_B = Variable(batch["B"].type(FloatTensor))
# ----------------------
# Train Discriminators
# ----------------------
optimizer_D_A.zero_grad()
optimizer_D_B.zero_grad()
# Generate a batch of images
fake_A = G_BA(imgs_B).detach()
fake_B = G_AB(imgs_A).detach()
# ----------
# Domain A
# ----------
# Compute gradient penalty for improved wasserstein training
gp_A = compute_gradient_penalty(D_A, imgs_A.data, fake_A.data)
# Adversarial loss
D_A_loss = -torch.mean(D_A(imgs_A)) + torch.mean(D_A(fake_A)) + lambda_gp * gp_A
# ----------
# Domain B
# ----------
# Compute gradient penalty for improved wasserstein training
gp_B = compute_gradient_penalty(D_B, imgs_B.data, fake_B.data)
# Adversarial loss
D_B_loss = -torch.mean(D_B(imgs_B)) + torch.mean(D_B(fake_B)) + lambda_gp * gp_B
# Total loss
D_loss = D_A_loss + D_B_loss
D_loss.backward()
optimizer_D_A.step()
optimizer_D_B.step()
if i % opt.n_critic == 0:
# ------------------
# Train Generators
# ------------------
optimizer_G.zero_grad()
# Translate images to opposite domain
fake_A = G_BA(imgs_B)
fake_B = G_AB(imgs_A)
# Reconstruct images
recov_A = G_BA(fake_B)
recov_B = G_AB(fake_A)
# Adversarial loss
G_adv = -torch.mean(D_A(fake_A)) - torch.mean(D_B(fake_B))
# Cycle loss
G_cycle = cycle_loss(recov_A, imgs_A) + cycle_loss(recov_B, imgs_B)
# Total loss
G_loss = lambda_adv * G_adv + lambda_cycle * G_cycle
G_loss.backward()
optimizer_G.step()
# --------------
# Log Progress
# --------------
# Determine approximate time left
batches_left = opt.n_epochs * len(dataloader) - batches_done
time_left = datetime.timedelta(seconds=batches_left * (time.time() - prev_time) / opt.n_critic)
prev_time = time.time()
sys.stdout.write(
"\r[Epoch %d/%d] [Batch %d/%d] [D loss: %f] [G loss: %f, cycle: %f] ETA: %s"
% (
epoch,
opt.n_epochs,
i,
len(dataloader),
D_loss.item(),
G_adv.data.item(),
G_cycle.item(),
time_left,
)
)
# Check sample interval => save sample if there
if batches_done % opt.sample_interval == 0:
sample_images(batches_done)
batches_done += 1
if opt.checkpoint_interval != -1 and epoch % opt.checkpoint_interval == 0:
# Save model checkpoints
torch.save(G_AB.state_dict(), "saved_models/%s/G_AB_%d.pth" % (opt.dataset_name, epoch))
torch.save(G_BA.state_dict(), "saved_models/%s/G_BA_%d.pth" % (opt.dataset_name, epoch))
torch.save(D_A.state_dict(), "saved_models/%s/D_A_%d.pth" % (opt.dataset_name, epoch))
torch.save(D_B.state_dict(), "saved_models/%s/D_B_%d.pth" % (opt.dataset_name, epoch))