# Adopted from LDM's KL-VAE: https://github.com/CompVis/latent-diffusion import torch import torch.nn as nn import numpy as np def nonlinearity(x): # swish return x * torch.sigmoid(x) def Normalize(in_channels, num_groups=32): return torch.nn.GroupNorm( num_groups=num_groups, num_channels=in_channels, eps=1e-6, affine=True ) class Upsample(nn.Module): def __init__(self, in_channels, with_conv): super().__init__() self.with_conv = with_conv if self.with_conv: self.conv = torch.nn.Conv2d( in_channels, in_channels, kernel_size=3, stride=1, padding=1 ) def forward(self, x): x = torch.nn.functional.interpolate(x, scale_factor=2.0, mode="nearest") if self.with_conv: x = self.conv(x) return x class Downsample(nn.Module): def __init__(self, in_channels, with_conv): super().__init__() self.with_conv = with_conv if self.with_conv: # no asymmetric padding in torch conv, must do it ourselves self.conv = torch.nn.Conv2d( in_channels, in_channels, kernel_size=3, stride=2, padding=0 ) def forward(self, x): if self.with_conv: pad = (0, 1, 0, 1) x = torch.nn.functional.pad(x, pad, mode="constant", value=0) x = self.conv(x) else: x = torch.nn.functional.avg_pool2d(x, kernel_size=2, stride=2) return x class ResnetBlock(nn.Module): def __init__( self, *, in_channels, out_channels=None, conv_shortcut=False, dropout, temb_channels=512, ): super().__init__() self.in_channels = in_channels out_channels = in_channels if out_channels is None else out_channels self.out_channels = out_channels self.use_conv_shortcut = conv_shortcut self.norm1 = Normalize(in_channels) self.conv1 = torch.nn.Conv2d( in_channels, out_channels, kernel_size=3, stride=1, padding=1 ) if temb_channels > 0: self.temb_proj = torch.nn.Linear(temb_channels, out_channels) self.norm2 = Normalize(out_channels) self.dropout = torch.nn.Dropout(dropout) self.conv2 = torch.nn.Conv2d( out_channels, out_channels, kernel_size=3, stride=1, padding=1 ) if self.in_channels != self.out_channels: if self.use_conv_shortcut: self.conv_shortcut = torch.nn.Conv2d( in_channels, out_channels, kernel_size=3, stride=1, padding=1 ) else: self.nin_shortcut = torch.nn.Conv2d( in_channels, out_channels, kernel_size=1, stride=1, padding=0 ) def forward(self, x, temb): h = x h = self.norm1(h) h = nonlinearity(h) h = self.conv1(h) if temb is not None: h = h + self.temb_proj(nonlinearity(temb))[:, :, None, None] h = self.norm2(h) h = nonlinearity(h) h = self.dropout(h) h = self.conv2(h) if self.in_channels != self.out_channels: if self.use_conv_shortcut: x = self.conv_shortcut(x) else: x = self.nin_shortcut(x) return x + h class AttnBlock(nn.Module): def __init__(self, in_channels): super().__init__() self.in_channels = in_channels self.norm = Normalize(in_channels) self.q = torch.nn.Conv2d( in_channels, in_channels, kernel_size=1, stride=1, padding=0 ) self.k = torch.nn.Conv2d( in_channels, in_channels, kernel_size=1, stride=1, padding=0 ) self.v = torch.nn.Conv2d( in_channels, in_channels, kernel_size=1, stride=1, padding=0 ) self.proj_out = torch.nn.Conv2d( in_channels, in_channels, kernel_size=1, stride=1, padding=0 ) def forward(self, x): h_ = x h_ = self.norm(h_) q = self.q(h_) k = self.k(h_) v = self.v(h_) # compute attention b, c, h, w = q.shape q = q.reshape(b, c, h * w) q = q.permute(0, 2, 1) # b,hw,c k = k.reshape(b, c, h * w) # b,c,hw w_ = torch.bmm(q, k) # b,hw,hw w[b,i,j]=sum_c q[b,i,c]k[b,c,j] w_ = w_ * (int(c) ** (-0.5)) w_ = torch.nn.functional.softmax(w_, dim=2) # attend to values v = v.reshape(b, c, h * w) w_ = w_.permute(0, 2, 1) # b,hw,hw (first hw of k, second of q) h_ = torch.bmm(v, w_) # b, c,hw (hw of q) h_[b,c,j] = sum_i v[b,c,i] w_[b,i,j] h_ = h_.reshape(b, c, h, w) h_ = self.proj_out(h_) return x + h_ class Encoder(nn.Module): def __init__( self, *, ch=128, out_ch=3, ch_mult=(1, 1, 2, 2, 4), num_res_blocks=2, attn_resolutions=(16,), dropout=0.0, resamp_with_conv=True, in_channels=3, resolution=256, z_channels=16, double_z=True, **ignore_kwargs, ): super().__init__() self.ch = ch self.temb_ch = 0 self.num_resolutions = len(ch_mult) self.num_res_blocks = num_res_blocks self.resolution = resolution self.in_channels = in_channels # downsampling self.conv_in = torch.nn.Conv2d( in_channels, self.ch, kernel_size=3, stride=1, padding=1 ) curr_res = resolution in_ch_mult = (1,) + tuple(ch_mult) self.down = nn.ModuleList() for i_level in range(self.num_resolutions): block = nn.ModuleList() attn = nn.ModuleList() block_in = ch * in_ch_mult[i_level] block_out = ch * ch_mult[i_level] for i_block in range(self.num_res_blocks): block.append( ResnetBlock( in_channels=block_in, out_channels=block_out, temb_channels=self.temb_ch, dropout=dropout, ) ) block_in = block_out if curr_res in attn_resolutions: attn.append(AttnBlock(block_in)) down = nn.Module() down.block = block down.attn = attn if i_level != self.num_resolutions - 1: down.downsample = Downsample(block_in, resamp_with_conv) curr_res = curr_res // 2 self.down.append(down) # middle self.mid = nn.Module() self.mid.block_1 = ResnetBlock( in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout, ) self.mid.attn_1 = AttnBlock(block_in) self.mid.block_2 = ResnetBlock( in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout, ) # end self.norm_out = Normalize(block_in) self.conv_out = torch.nn.Conv2d( block_in, 2 * z_channels if double_z else z_channels, kernel_size=3, stride=1, padding=1, ) def forward(self, x): # assert x.shape[2] == x.shape[3] == self.resolution, "{}, {}, {}".format(x.shape[2], x.shape[3], self.resolution) # timestep embedding temb = None # downsampling hs = [self.conv_in(x)] for i_level in range(self.num_resolutions): for i_block in range(self.num_res_blocks): h = self.down[i_level].block[i_block](hs[-1], temb) if len(self.down[i_level].attn) > 0: h = self.down[i_level].attn[i_block](h) hs.append(h) if i_level != self.num_resolutions - 1: hs.append(self.down[i_level].downsample(hs[-1])) # middle h = hs[-1] h = self.mid.block_1(h, temb) h = self.mid.attn_1(h) h = self.mid.block_2(h, temb) # end h = self.norm_out(h) h = nonlinearity(h) h = self.conv_out(h) return h class Decoder(nn.Module): def __init__( self, *, ch=128, out_ch=3, ch_mult=(1, 1, 2, 2, 4), num_res_blocks=2, attn_resolutions=(), dropout=0.0, resamp_with_conv=True, in_channels=3, resolution=256, z_channels=16, give_pre_end=False, **ignore_kwargs, ): super().__init__() self.ch = ch self.temb_ch = 0 self.num_resolutions = len(ch_mult) self.num_res_blocks = num_res_blocks self.resolution = resolution self.in_channels = in_channels self.give_pre_end = give_pre_end # compute in_ch_mult, block_in and curr_res at lowest res in_ch_mult = (1,) + tuple(ch_mult) block_in = ch * ch_mult[self.num_resolutions - 1] curr_res = resolution // 2 ** (self.num_resolutions - 1) self.z_shape = (1, z_channels, curr_res, curr_res) print( "Working with z of shape {} = {} dimensions.".format( self.z_shape, np.prod(self.z_shape) ) ) # z to block_in self.conv_in = torch.nn.Conv2d( z_channels, block_in, kernel_size=3, stride=1, padding=1 ) # middle self.mid = nn.Module() self.mid.block_1 = ResnetBlock( in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout, ) self.mid.attn_1 = AttnBlock(block_in) self.mid.block_2 = ResnetBlock( in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout, ) # upsampling self.up = nn.ModuleList() for i_level in reversed(range(self.num_resolutions)): block = nn.ModuleList() attn = nn.ModuleList() block_out = ch * ch_mult[i_level] for i_block in range(self.num_res_blocks + 1): block.append( ResnetBlock( in_channels=block_in, out_channels=block_out, temb_channels=self.temb_ch, dropout=dropout, ) ) block_in = block_out if curr_res in attn_resolutions: attn.append(AttnBlock(block_in)) up = nn.Module() up.block = block up.attn = attn if i_level != 0: up.upsample = Upsample(block_in, resamp_with_conv) curr_res = curr_res * 2 self.up.insert(0, up) # prepend to get consistent order # end self.norm_out = Normalize(block_in) self.conv_out = torch.nn.Conv2d( block_in, out_ch, kernel_size=3, stride=1, padding=1 ) def forward(self, z): # assert z.shape[1:] == self.z_shape[1:] self.last_z_shape = z.shape # timestep embedding temb = None # z to block_in h = self.conv_in(z) # middle h = self.mid.block_1(h, temb) h = self.mid.attn_1(h) h = self.mid.block_2(h, temb) # upsampling for i_level in reversed(range(self.num_resolutions)): for i_block in range(self.num_res_blocks + 1): h = self.up[i_level].block[i_block](h, temb) if len(self.up[i_level].attn) > 0: h = self.up[i_level].attn[i_block](h) if i_level != 0: h = self.up[i_level].upsample(h) # end if self.give_pre_end: return h h = self.norm_out(h) h = nonlinearity(h) h = self.conv_out(h) return h class DiagonalGaussianDistribution(object): def __init__(self, parameters, deterministic=False): self.parameters = parameters self.mean, self.logvar = torch.chunk(parameters, 2, dim=1) self.logvar = torch.clamp(self.logvar, -30.0, 20.0) self.deterministic = deterministic self.std = torch.exp(0.5 * self.logvar) self.var = torch.exp(self.logvar) if self.deterministic: self.var = self.std = torch.zeros_like(self.mean).to( device=self.parameters.device ) def sample(self): x = self.mean + self.std * torch.randn(self.mean.shape).to( device=self.parameters.device ) return x def kl(self, other=None): if self.deterministic: return torch.Tensor([0.0]) else: if other is None: return 0.5 * torch.sum( torch.pow(self.mean, 2) + self.var - 1.0 - self.logvar, dim=[1, 2, 3], ) else: return 0.5 * torch.sum( torch.pow(self.mean - other.mean, 2) / other.var + self.var / other.var - 1.0 - self.logvar + other.logvar, dim=[1, 2, 3], ) def nll(self, sample, dims=[1, 2, 3]): if self.deterministic: return torch.Tensor([0.0]) logtwopi = np.log(2.0 * np.pi) return 0.5 * torch.sum( logtwopi + self.logvar + torch.pow(sample - self.mean, 2) / self.var, dim=dims, ) def mode(self): return self.mean class AutoencoderKL(nn.Module): def __init__(self, embed_dim, ch_mult, use_variational=True, ckpt_path=None): super().__init__() self.encoder = Encoder(ch_mult=ch_mult, z_channels=embed_dim) self.decoder = Decoder(ch_mult=ch_mult, z_channels=embed_dim) self.use_variational = use_variational mult = 2 if self.use_variational else 1 self.quant_conv = torch.nn.Conv2d(2 * embed_dim, mult * embed_dim, 1) self.post_quant_conv = torch.nn.Conv2d(embed_dim, embed_dim, 1) self.embed_dim = embed_dim if ckpt_path is not None: self.init_from_ckpt(ckpt_path) def init_from_ckpt(self, path): sd = torch.load(path, map_location="cpu")["model"] msg = self.load_state_dict(sd, strict=False) print("Loading pre-trained KL-VAE") print("Missing keys:") print(msg.missing_keys) print("Unexpected keys:") print(msg.unexpected_keys) print(f"Restored from {path}") def encode(self, x): h = self.encoder(x) moments = self.quant_conv(h) if not self.use_variational: moments = torch.cat((moments, torch.ones_like(moments)), 1) posterior = DiagonalGaussianDistribution(moments) return posterior def decode(self, z): z = self.post_quant_conv(z) dec = self.decoder(z) return dec def forward(self, inputs, disable=True, train=True, optimizer_idx=0): if train: return self.training_step(inputs, disable, optimizer_idx) else: return self.validation_step(inputs, disable)