prediff_code / models /vae /losses /contperceptual.py
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"""
Code is adopted from `LPIPSWithDiscriminator` in https://github.com/CompVis/stable-diffusion/blob/21f890f9da3cfbeaba8e2ac3c425ee9e998d5229/ldm/modules/losses/contperceptual.py.
Enable `channels != 3`.
"""
import torch
import torch.nn as nn
from torch.nn import functional as F
from .lpips import LPIPS
from .model import NLayerDiscriminator, weights_init
def adopt_weight(weight, global_step, threshold=0, value=0.):
if global_step < threshold:
weight = value
return weight
def hinge_d_loss(logits_real, logits_fake):
loss_real = torch.mean(F.relu(1. - logits_real))
loss_fake = torch.mean(F.relu(1. + logits_fake))
d_loss = 0.5 * (loss_real + loss_fake)
return d_loss
def vanilla_d_loss(logits_real, logits_fake):
d_loss = 0.5 * (
torch.mean(torch.nn.functional.softplus(-logits_real)) +
torch.mean(torch.nn.functional.softplus(logits_fake)))
return d_loss
class LPIPSWithDiscriminator(nn.Module):
def __init__(self, disc_start, logvar_init=0.0, kl_weight=1.0, pixelloss_weight=1.0,
disc_num_layers=3, disc_in_channels=3, disc_factor=1.0, disc_weight=1.0,
perceptual_weight=1.0, use_actnorm=False, disc_conditional=False,
disc_loss="hinge"):
super().__init__()
assert disc_loss in ["hinge", "vanilla"]
self.kl_weight = kl_weight
self.pixel_weight = pixelloss_weight
self.perceptual_loss = LPIPS().eval()
self.perceptual_weight = perceptual_weight
# output log variance
self.logvar = nn.Parameter(torch.ones(size=()) * logvar_init)
self.discriminator = NLayerDiscriminator(input_nc=disc_in_channels,
n_layers=disc_num_layers,
use_actnorm=use_actnorm
).apply(weights_init)
self.discriminator_iter_start = disc_start
self.disc_loss = hinge_d_loss if disc_loss == "hinge" else vanilla_d_loss
self.disc_factor = disc_factor
self.discriminator_weight = disc_weight
self.disc_conditional = disc_conditional
def calculate_adaptive_weight(self, nll_loss, g_loss, last_layer=None):
if last_layer is not None:
nll_grads = torch.autograd.grad(nll_loss, last_layer, retain_graph=True)[0]
g_grads = torch.autograd.grad(g_loss, last_layer, retain_graph=True)[0]
else:
nll_grads = torch.autograd.grad(nll_loss, self.last_layer[0], retain_graph=True)[0]
g_grads = torch.autograd.grad(g_loss, self.last_layer[0], retain_graph=True)[0]
d_weight = torch.norm(nll_grads) / (torch.norm(g_grads) + 1e-4)
d_weight = torch.clamp(d_weight, 0.0, 1e4).detach()
d_weight = d_weight * self.discriminator_weight
return d_weight
def forward(self, inputs, reconstructions, posteriors, optimizer_idx,
global_step, mask=None, last_layer=None, cond=None, split="train",
weights=None):
r"""
Changes compared with original implementation:
1. use `inputs = inputs.contiguous()` and `reconstructions = reconstructions.contiguous()` to avoid later duplicated `.contiguous()`.
2. only feed RGB channels into `self.perceptual_loss()`.
3. add `mask`
Parameters
----------
inputs, reconstructions: torch.Tensor
shape = (b, c, h, w)
channels should be ["red", "green", "blue", ...]
mask: torch.Tensor
shape = (b, 1, h, w)
1 for non-masking, 0 for masking
Returns
-------
loss, log
"""
batch_size = inputs.shape[0]
inputs = inputs.contiguous()
reconstructions = reconstructions.contiguous()
if mask is not None:
# TODO: how to handle corrupted pixels? E.g. recons without mask?
inputs = inputs * mask
reconstructions = reconstructions * mask
rec_loss = torch.abs(inputs - reconstructions)
if self.perceptual_weight > 0:
# Only RGB channels
p_loss = self.perceptual_loss(inputs[:, :3, ...], reconstructions[:, :3, ...])
rec_loss = rec_loss + self.perceptual_weight * p_loss
nll_loss = rec_loss / torch.exp(self.logvar) + self.logvar
weighted_nll_loss = nll_loss
if weights is not None:
weighted_nll_loss = weights*nll_loss
weighted_nll_loss = torch.sum(weighted_nll_loss) / batch_size
nll_loss = torch.sum(nll_loss) / batch_size
kl_loss = posteriors.kl()
kl_loss = torch.sum(kl_loss) / batch_size
device = inputs.device # Use input's device as canonical
# now the GAN part
if optimizer_idx == 0:
# generator update
if cond is None:
assert not self.disc_conditional
logits_fake = self.discriminator(reconstructions)
else:
assert self.disc_conditional
logits_fake = self.discriminator(torch.cat((reconstructions, cond), dim=1))
g_loss = -torch.mean(logits_fake)
if self.disc_factor > 0.0:
try:
d_weight = self.calculate_adaptive_weight(nll_loss, g_loss, last_layer=last_layer)
except RuntimeError:
assert not self.training
d_weight = torch.tensor(0.0)
else:
d_weight = torch.tensor(0.0)
disc_factor = adopt_weight(self.disc_factor, global_step, threshold=self.discriminator_iter_start)
loss = weighted_nll_loss + self.kl_weight * kl_loss + d_weight * disc_factor * g_loss
log = {
f"{split}/total_loss": loss.clone().detach().mean().to(device),
f"{split}/logvar": self.logvar.detach().to(device),
f"{split}/kl_loss": kl_loss.detach().mean().to(device),
f"{split}/nll_loss": nll_loss.detach().mean().to(device),
f"{split}/rec_loss": rec_loss.detach().mean().to(device),
f"{split}/d_weight": d_weight.detach().to(device),
f"{split}/disc_factor": torch.tensor(disc_factor, device=device), # key fix
f"{split}/g_loss": g_loss.detach().mean().to(device),
}
return loss, log
if optimizer_idx == 1:
# second pass for discriminator update
if cond is None:
logits_real = self.discriminator(inputs.detach())
logits_fake = self.discriminator(reconstructions.detach())
else:
logits_real = self.discriminator(torch.cat((inputs.detach(), cond), dim=1))
logits_fake = self.discriminator(torch.cat((reconstructions.detach(), cond), dim=1))
disc_factor = adopt_weight(self.disc_factor, global_step, threshold=self.discriminator_iter_start)
d_loss = disc_factor * self.disc_loss(logits_real, logits_fake)
log = {
f"{split}/disc_loss": d_loss.clone().detach().mean().to(device),
f"{split}/logits_real": logits_real.detach().mean().to(device),
f"{split}/logits_fake": logits_fake.detach().mean().to(device),
}
return d_loss, log