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- # this file is copied from CodeFormer repository. Please see comment in modules/codeformer_model.py
- import math
- import torch
- from torch import nn, Tensor
- import torch.nn.functional as F
- from typing import Optional
- from modules.codeformer.vqgan_arch import VQAutoEncoder, ResBlock
- from basicsr.utils.registry import ARCH_REGISTRY
- def calc_mean_std(feat, eps=1e-5):
- """Calculate mean and std for adaptive_instance_normalization.
- Args:
- feat (Tensor): 4D tensor.
- eps (float): A small value added to the variance to avoid
- divide-by-zero. Default: 1e-5.
- """
- size = feat.size()
- assert len(size) == 4, 'The input feature should be 4D tensor.'
- b, c = size[:2]
- feat_var = feat.view(b, c, -1).var(dim=2) + eps
- feat_std = feat_var.sqrt().view(b, c, 1, 1)
- feat_mean = feat.view(b, c, -1).mean(dim=2).view(b, c, 1, 1)
- return feat_mean, feat_std
- def adaptive_instance_normalization(content_feat, style_feat):
- """Adaptive instance normalization.
- Adjust the reference features to have the similar color and illuminations
- as those in the degradate features.
- Args:
- content_feat (Tensor): The reference feature.
- style_feat (Tensor): The degradate features.
- """
- size = content_feat.size()
- style_mean, style_std = calc_mean_std(style_feat)
- content_mean, content_std = calc_mean_std(content_feat)
- normalized_feat = (content_feat - content_mean.expand(size)) / content_std.expand(size)
- return normalized_feat * style_std.expand(size) + style_mean.expand(size)
- class PositionEmbeddingSine(nn.Module):
- """
- This is a more standard version of the position embedding, very similar to the one
- used by the Attention is all you need paper, generalized to work on images.
- """
- def __init__(self, num_pos_feats=64, temperature=10000, normalize=False, scale=None):
- super().__init__()
- self.num_pos_feats = num_pos_feats
- self.temperature = temperature
- self.normalize = normalize
- if scale is not None and normalize is False:
- raise ValueError("normalize should be True if scale is passed")
- if scale is None:
- scale = 2 * math.pi
- self.scale = scale
- def forward(self, x, mask=None):
- if mask is None:
- mask = torch.zeros((x.size(0), x.size(2), x.size(3)), device=x.device, dtype=torch.bool)
- not_mask = ~mask
- y_embed = not_mask.cumsum(1, dtype=torch.float32)
- x_embed = not_mask.cumsum(2, dtype=torch.float32)
- if self.normalize:
- eps = 1e-6
- y_embed = y_embed / (y_embed[:, -1:, :] + eps) * self.scale
- x_embed = x_embed / (x_embed[:, :, -1:] + eps) * self.scale
- dim_t = torch.arange(self.num_pos_feats, dtype=torch.float32, device=x.device)
- dim_t = self.temperature ** (2 * (dim_t // 2) / self.num_pos_feats)
- pos_x = x_embed[:, :, :, None] / dim_t
- pos_y = y_embed[:, :, :, None] / dim_t
- pos_x = torch.stack(
- (pos_x[:, :, :, 0::2].sin(), pos_x[:, :, :, 1::2].cos()), dim=4
- ).flatten(3)
- pos_y = torch.stack(
- (pos_y[:, :, :, 0::2].sin(), pos_y[:, :, :, 1::2].cos()), dim=4
- ).flatten(3)
- pos = torch.cat((pos_y, pos_x), dim=3).permute(0, 3, 1, 2)
- return pos
- def _get_activation_fn(activation):
- """Return an activation function given a string"""
- if activation == "relu":
- return F.relu
- if activation == "gelu":
- return F.gelu
- if activation == "glu":
- return F.glu
- raise RuntimeError(F"activation should be relu/gelu, not {activation}.")
- class TransformerSALayer(nn.Module):
- def __init__(self, embed_dim, nhead=8, dim_mlp=2048, dropout=0.0, activation="gelu"):
- super().__init__()
- self.self_attn = nn.MultiheadAttention(embed_dim, nhead, dropout=dropout)
- # Implementation of Feedforward model - MLP
- self.linear1 = nn.Linear(embed_dim, dim_mlp)
- self.dropout = nn.Dropout(dropout)
- self.linear2 = nn.Linear(dim_mlp, embed_dim)
- self.norm1 = nn.LayerNorm(embed_dim)
- self.norm2 = nn.LayerNorm(embed_dim)
- self.dropout1 = nn.Dropout(dropout)
- self.dropout2 = nn.Dropout(dropout)
- self.activation = _get_activation_fn(activation)
- def with_pos_embed(self, tensor, pos: Optional[Tensor]):
- return tensor if pos is None else tensor + pos
- def forward(self, tgt,
- tgt_mask: Optional[Tensor] = None,
- tgt_key_padding_mask: Optional[Tensor] = None,
- query_pos: Optional[Tensor] = None):
- # self attention
- tgt2 = self.norm1(tgt)
- q = k = self.with_pos_embed(tgt2, query_pos)
- tgt2 = self.self_attn(q, k, value=tgt2, attn_mask=tgt_mask,
- key_padding_mask=tgt_key_padding_mask)[0]
- tgt = tgt + self.dropout1(tgt2)
- # ffn
- tgt2 = self.norm2(tgt)
- tgt2 = self.linear2(self.dropout(self.activation(self.linear1(tgt2))))
- tgt = tgt + self.dropout2(tgt2)
- return tgt
- class Fuse_sft_block(nn.Module):
- def __init__(self, in_ch, out_ch):
- super().__init__()
- self.encode_enc = ResBlock(2*in_ch, out_ch)
- self.scale = nn.Sequential(
- nn.Conv2d(in_ch, out_ch, kernel_size=3, padding=1),
- nn.LeakyReLU(0.2, True),
- nn.Conv2d(out_ch, out_ch, kernel_size=3, padding=1))
- self.shift = nn.Sequential(
- nn.Conv2d(in_ch, out_ch, kernel_size=3, padding=1),
- nn.LeakyReLU(0.2, True),
- nn.Conv2d(out_ch, out_ch, kernel_size=3, padding=1))
- def forward(self, enc_feat, dec_feat, w=1):
- enc_feat = self.encode_enc(torch.cat([enc_feat, dec_feat], dim=1))
- scale = self.scale(enc_feat)
- shift = self.shift(enc_feat)
- residual = w * (dec_feat * scale + shift)
- out = dec_feat + residual
- return out
- @ARCH_REGISTRY.register()
- class CodeFormer(VQAutoEncoder):
- def __init__(self, dim_embd=512, n_head=8, n_layers=9,
- codebook_size=1024, latent_size=256,
- connect_list=('32', '64', '128', '256'),
- fix_modules=('quantize', 'generator')):
- super(CodeFormer, self).__init__(512, 64, [1, 2, 2, 4, 4, 8], 'nearest',2, [16], codebook_size)
- if fix_modules is not None:
- for module in fix_modules:
- for param in getattr(self, module).parameters():
- param.requires_grad = False
- self.connect_list = connect_list
- self.n_layers = n_layers
- self.dim_embd = dim_embd
- self.dim_mlp = dim_embd*2
- self.position_emb = nn.Parameter(torch.zeros(latent_size, self.dim_embd))
- self.feat_emb = nn.Linear(256, self.dim_embd)
- # transformer
- self.ft_layers = nn.Sequential(*[TransformerSALayer(embed_dim=dim_embd, nhead=n_head, dim_mlp=self.dim_mlp, dropout=0.0)
- for _ in range(self.n_layers)])
- # logits_predict head
- self.idx_pred_layer = nn.Sequential(
- nn.LayerNorm(dim_embd),
- nn.Linear(dim_embd, codebook_size, bias=False))
- self.channels = {
- '16': 512,
- '32': 256,
- '64': 256,
- '128': 128,
- '256': 128,
- '512': 64,
- }
- # after second residual block for > 16, before attn layer for ==16
- self.fuse_encoder_block = {'512':2, '256':5, '128':8, '64':11, '32':14, '16':18}
- # after first residual block for > 16, before attn layer for ==16
- self.fuse_generator_block = {'16':6, '32': 9, '64':12, '128':15, '256':18, '512':21}
- # fuse_convs_dict
- self.fuse_convs_dict = nn.ModuleDict()
- for f_size in self.connect_list:
- in_ch = self.channels[f_size]
- self.fuse_convs_dict[f_size] = Fuse_sft_block(in_ch, in_ch)
- def _init_weights(self, module):
- if isinstance(module, (nn.Linear, nn.Embedding)):
- module.weight.data.normal_(mean=0.0, std=0.02)
- if isinstance(module, nn.Linear) and module.bias is not None:
- module.bias.data.zero_()
- elif isinstance(module, nn.LayerNorm):
- module.bias.data.zero_()
- module.weight.data.fill_(1.0)
- def forward(self, x, w=0, detach_16=True, code_only=False, adain=False):
- # ################### Encoder #####################
- enc_feat_dict = {}
- out_list = [self.fuse_encoder_block[f_size] for f_size in self.connect_list]
- for i, block in enumerate(self.encoder.blocks):
- x = block(x)
- if i in out_list:
- enc_feat_dict[str(x.shape[-1])] = x.clone()
- lq_feat = x
- # ################# Transformer ###################
- # quant_feat, codebook_loss, quant_stats = self.quantize(lq_feat)
- pos_emb = self.position_emb.unsqueeze(1).repeat(1,x.shape[0],1)
- # BCHW -> BC(HW) -> (HW)BC
- feat_emb = self.feat_emb(lq_feat.flatten(2).permute(2,0,1))
- query_emb = feat_emb
- # Transformer encoder
- for layer in self.ft_layers:
- query_emb = layer(query_emb, query_pos=pos_emb)
- # output logits
- logits = self.idx_pred_layer(query_emb) # (hw)bn
- logits = logits.permute(1,0,2) # (hw)bn -> b(hw)n
- if code_only: # for training stage II
- # logits doesn't need softmax before cross_entropy loss
- return logits, lq_feat
- # ################# Quantization ###################
- # if self.training:
- # quant_feat = torch.einsum('btn,nc->btc', [soft_one_hot, self.quantize.embedding.weight])
- # # b(hw)c -> bc(hw) -> bchw
- # quant_feat = quant_feat.permute(0,2,1).view(lq_feat.shape)
- # ------------
- soft_one_hot = F.softmax(logits, dim=2)
- _, top_idx = torch.topk(soft_one_hot, 1, dim=2)
- quant_feat = self.quantize.get_codebook_feat(top_idx, shape=[x.shape[0],16,16,256])
- # preserve gradients
- # quant_feat = lq_feat + (quant_feat - lq_feat).detach()
- if detach_16:
- quant_feat = quant_feat.detach() # for training stage III
- if adain:
- quant_feat = adaptive_instance_normalization(quant_feat, lq_feat)
- # ################## Generator ####################
- x = quant_feat
- fuse_list = [self.fuse_generator_block[f_size] for f_size in self.connect_list]
- for i, block in enumerate(self.generator.blocks):
- x = block(x)
- if i in fuse_list: # fuse after i-th block
- f_size = str(x.shape[-1])
- if w>0:
- x = self.fuse_convs_dict[f_size](enc_feat_dict[f_size].detach(), x, w)
- out = x
- # logits doesn't need softmax before cross_entropy loss
- return out, logits, lq_feat
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