Instructions to use gvecchio/MatFuse with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Diffusers
How to use gvecchio/MatFuse with Diffusers:
pip install -U diffusers transformers accelerate
import torch from diffusers import DiffusionPipeline # switch to "mps" for apple devices pipe = DiffusionPipeline.from_pretrained("gvecchio/MatFuse", dtype=torch.bfloat16, device_map="cuda") prompt = "Astronaut in a jungle, cold color palette, muted colors, detailed, 8k" image = pipe(prompt).images[0] - Notebooks
- Google Colab
- Kaggle
- Local Apps
- Draw Things
- DiffusionBee
| """ | |
| MatFuse VQ-VAE Model for diffusers. | |
| This is a custom VQ-VAE that has 4 separate encoders (one for each material map) | |
| and 4 separate quantizers, with a single shared decoder. | |
| """ | |
| import torch | |
| import torch.nn as nn | |
| import torch.nn.functional as F | |
| from typing import Optional, Tuple | |
| from diffusers.configuration_utils import ConfigMixin, register_to_config | |
| from diffusers.models.modeling_utils import ModelMixin | |
| def Normalize(in_channels: int, num_groups: int = 32) -> nn.GroupNorm: | |
| """Group normalization.""" | |
| return nn.GroupNorm( | |
| num_groups=num_groups, num_channels=in_channels, eps=1e-6, affine=True | |
| ) | |
| def nonlinearity(x: torch.Tensor) -> torch.Tensor: | |
| """Swish activation.""" | |
| return x * torch.sigmoid(x) | |
| class Upsample(nn.Module): | |
| """Upsampling layer with optional convolution.""" | |
| def __init__(self, in_channels: int, with_conv: bool = True): | |
| super().__init__() | |
| self.with_conv = with_conv | |
| if self.with_conv: | |
| self.conv = nn.Conv2d( | |
| in_channels, in_channels, kernel_size=3, stride=1, padding=1 | |
| ) | |
| def forward(self, x: torch.Tensor) -> torch.Tensor: | |
| x = F.interpolate(x, scale_factor=2.0, mode="nearest") | |
| if self.with_conv: | |
| x = self.conv(x) | |
| return x | |
| class Downsample(nn.Module): | |
| """Downsampling layer with optional convolution.""" | |
| def __init__(self, in_channels: int, with_conv: bool = True): | |
| super().__init__() | |
| self.with_conv = with_conv | |
| if self.with_conv: | |
| self.conv = nn.Conv2d( | |
| in_channels, in_channels, kernel_size=3, stride=2, padding=0 | |
| ) | |
| def forward(self, x: torch.Tensor) -> torch.Tensor: | |
| if self.with_conv: | |
| pad = (0, 1, 0, 1) | |
| x = F.pad(x, pad, mode="constant", value=0) | |
| x = self.conv(x) | |
| else: | |
| x = F.avg_pool2d(x, kernel_size=2, stride=2) | |
| return x | |
| class ResnetBlock(nn.Module): | |
| """Residual block with optional time embedding.""" | |
| def __init__( | |
| self, | |
| in_channels: int, | |
| out_channels: Optional[int] = None, | |
| conv_shortcut: bool = False, | |
| dropout: float = 0.0, | |
| temb_channels: int = 0, | |
| ): | |
| 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 = nn.Conv2d( | |
| in_channels, out_channels, kernel_size=3, stride=1, padding=1 | |
| ) | |
| if temb_channels > 0: | |
| self.temb_proj = nn.Linear(temb_channels, out_channels) | |
| self.norm2 = Normalize(out_channels) | |
| self.dropout = nn.Dropout(dropout) | |
| self.conv2 = 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 = nn.Conv2d( | |
| in_channels, out_channels, kernel_size=3, stride=1, padding=1 | |
| ) | |
| else: | |
| self.nin_shortcut = nn.Conv2d( | |
| in_channels, out_channels, kernel_size=1, stride=1, padding=0 | |
| ) | |
| def forward( | |
| self, x: torch.Tensor, temb: Optional[torch.Tensor] = None | |
| ) -> torch.Tensor: | |
| h = x | |
| h = self.norm1(h) | |
| h = nonlinearity(h) | |
| h = self.conv1(h) | |
| if temb is not None and hasattr(self, "temb_proj"): | |
| 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): | |
| """Self-attention block.""" | |
| def __init__(self, in_channels: int): | |
| super().__init__() | |
| self.in_channels = in_channels | |
| self.norm = Normalize(in_channels) | |
| self.q = nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0) | |
| self.k = nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0) | |
| self.v = nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0) | |
| self.proj_out = nn.Conv2d( | |
| in_channels, in_channels, kernel_size=1, stride=1, padding=0 | |
| ) | |
| def forward(self, x: torch.Tensor) -> torch.Tensor: | |
| 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_ = w_ * (int(c) ** (-0.5)) | |
| w_ = F.softmax(w_, dim=2) | |
| # Attend to values | |
| v = v.reshape(b, c, h * w) | |
| w_ = w_.permute(0, 2, 1) # b, hw, hw | |
| h_ = torch.bmm(v, w_) # b, c, hw | |
| h_ = h_.reshape(b, c, h, w) | |
| h_ = self.proj_out(h_) | |
| return x + h_ | |
| class Encoder(nn.Module): | |
| """Encoder module for VQ-VAE.""" | |
| def __init__( | |
| self, | |
| ch: int = 128, | |
| ch_mult: Tuple[int, ...] = (1, 1, 2, 4), | |
| num_res_blocks: int = 2, | |
| attn_resolutions: Tuple[int, ...] = (), | |
| dropout: float = 0.0, | |
| in_channels: int = 3, | |
| resolution: int = 256, | |
| z_channels: int = 256, | |
| double_z: bool = 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 | |
| # Downsampling | |
| self.conv_in = 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, with_conv=True) | |
| 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) | |
| out_channels = 2 * z_channels if double_z else z_channels | |
| self.conv_out = nn.Conv2d( | |
| block_in, out_channels, kernel_size=3, stride=1, padding=1 | |
| ) | |
| def forward(self, x: torch.Tensor) -> torch.Tensor: | |
| # Downsampling | |
| h = 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](h, None) | |
| if len(self.down[i_level].attn) > 0: | |
| h = self.down[i_level].attn[i_block](h) | |
| if hasattr(self.down[i_level], "downsample"): | |
| h = self.down[i_level].downsample(h) | |
| # Middle | |
| h = self.mid.block_1(h, None) | |
| h = self.mid.attn_1(h) | |
| h = self.mid.block_2(h, None) | |
| # End | |
| h = self.norm_out(h) | |
| h = nonlinearity(h) | |
| h = self.conv_out(h) | |
| return h | |
| class Decoder(nn.Module): | |
| """Decoder module for VQ-VAE.""" | |
| def __init__( | |
| self, | |
| ch: int = 128, | |
| out_ch: int = 12, | |
| ch_mult: Tuple[int, ...] = (1, 1, 2, 4), | |
| num_res_blocks: int = 2, | |
| attn_resolutions: Tuple[int, ...] = (), | |
| dropout: float = 0.0, | |
| in_channels: int = 3, | |
| resolution: int = 256, | |
| z_channels: int = 256, | |
| give_pre_end: bool = 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 and block_in | |
| block_in = ch * ch_mult[self.num_resolutions - 1] | |
| curr_res = resolution // (2 ** (self.num_resolutions - 1)) | |
| # z to block_in | |
| self.conv_in = 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, with_conv=True) | |
| curr_res = curr_res * 2 | |
| self.up.insert(0, up) | |
| # End | |
| self.norm_out = Normalize(block_in) | |
| self.conv_out = nn.Conv2d(block_in, out_ch, kernel_size=3, stride=1, padding=1) | |
| def forward(self, z: torch.Tensor) -> torch.Tensor: | |
| # z to block_in | |
| h = self.conv_in(z) | |
| # Middle | |
| h = self.mid.block_1(h, None) | |
| h = self.mid.attn_1(h) | |
| h = self.mid.block_2(h, None) | |
| # 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, None) | |
| if len(self.up[i_level].attn) > 0: | |
| h = self.up[i_level].attn[i_block](h) | |
| if hasattr(self.up[i_level], "upsample"): | |
| 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 VectorQuantizer(nn.Module): | |
| """ | |
| Vector Quantizer module. | |
| Discretizes the input vectors using a learned codebook. | |
| """ | |
| def __init__( | |
| self, | |
| n_embed: int, | |
| embed_dim: int, | |
| beta: float = 0.25, | |
| ): | |
| super().__init__() | |
| self.n_embed = n_embed | |
| self.embed_dim = embed_dim | |
| self.beta = beta | |
| self.embedding = nn.Embedding(self.n_embed, self.embed_dim) | |
| self.embedding.weight.data.uniform_(-1.0 / self.n_embed, 1.0 / self.n_embed) | |
| def forward(self, z: torch.Tensor) -> Tuple[torch.Tensor, torch.Tensor, Tuple]: | |
| # Reshape z -> (batch, height, width, channel) and flatten | |
| z = z.permute(0, 2, 3, 1).contiguous() | |
| z_flattened = z.view(-1, self.embed_dim) | |
| # Distances from z to embeddings e_j (z - e)^2 = z^2 + e^2 - 2 e * z | |
| d = ( | |
| torch.sum(z_flattened**2, dim=1, keepdim=True) | |
| + torch.sum(self.embedding.weight**2, dim=1) | |
| - 2 * torch.einsum("bd,dn->bn", z_flattened, self.embedding.weight.t()) | |
| ) | |
| min_encoding_indices = torch.argmin(d, dim=1) | |
| z_q = self.embedding(min_encoding_indices).view(z.shape) | |
| # Compute loss for embedding | |
| loss = self.beta * torch.mean((z_q.detach() - z) ** 2) + torch.mean( | |
| (z_q - z.detach()) ** 2 | |
| ) | |
| # Preserve gradients | |
| z_q = z + (z_q - z).detach() | |
| # Reshape back to match original input shape | |
| z_q = z_q.permute(0, 3, 1, 2).contiguous() | |
| return z_q, loss, (None, None, min_encoding_indices) | |
| def get_codebook_entry( | |
| self, indices: torch.Tensor, shape: Optional[Tuple] = None | |
| ) -> torch.Tensor: | |
| # Get quantized latent vectors | |
| z_q = self.embedding(indices) | |
| if shape is not None: | |
| z_q = z_q.view(shape) | |
| # Reshape back to match original input shape | |
| z_q = z_q.permute(0, 3, 1, 2).contiguous() | |
| return z_q | |
| class MatFuseVQModel(ModelMixin, ConfigMixin): | |
| """ | |
| MatFuse VQ-VAE Model. | |
| This model has 4 separate encoders for each material map (diffuse, normal, roughness, specular) | |
| and 4 separate VQ quantizers, with a single shared decoder that outputs 12 channels. | |
| """ | |
| def __init__( | |
| self, | |
| ch: int = 128, | |
| ch_mult: Tuple[int, ...] = (1, 1, 2, 4), | |
| num_res_blocks: int = 2, | |
| attn_resolutions: Tuple[int, ...] = (), | |
| dropout: float = 0.0, | |
| in_channels: int = 3, | |
| out_channels: int = 12, | |
| resolution: int = 256, | |
| z_channels: int = 256, | |
| n_embed: int = 4096, | |
| embed_dim: int = 3, | |
| scaling_factor: float = 1.0, | |
| ): | |
| super().__init__() | |
| self.scaling_factor = scaling_factor | |
| self.embed_dim = embed_dim | |
| ddconfig = dict( | |
| ch=ch, | |
| ch_mult=ch_mult, | |
| num_res_blocks=num_res_blocks, | |
| attn_resolutions=attn_resolutions, | |
| dropout=dropout, | |
| in_channels=in_channels, | |
| resolution=resolution, | |
| z_channels=z_channels, | |
| double_z=False, | |
| ) | |
| # 4 separate encoders for each material map | |
| self.encoder_0 = Encoder(**ddconfig) | |
| self.encoder_1 = Encoder(**ddconfig) | |
| self.encoder_2 = Encoder(**ddconfig) | |
| self.encoder_3 = Encoder(**ddconfig) | |
| # Single decoder | |
| decoder_config = dict( | |
| ch=ch, | |
| out_ch=out_channels, | |
| ch_mult=ch_mult, | |
| num_res_blocks=num_res_blocks, | |
| attn_resolutions=attn_resolutions, | |
| dropout=dropout, | |
| in_channels=in_channels, | |
| resolution=resolution, | |
| z_channels=z_channels, | |
| ) | |
| self.decoder = Decoder(**decoder_config) | |
| # 4 separate quantizers | |
| self.quantize_0 = VectorQuantizer(n_embed, embed_dim) | |
| self.quantize_1 = VectorQuantizer(n_embed, embed_dim) | |
| self.quantize_2 = VectorQuantizer(n_embed, embed_dim) | |
| self.quantize_3 = VectorQuantizer(n_embed, embed_dim) | |
| # Quant convolutions | |
| self.quant_conv_0 = nn.Conv2d(z_channels, embed_dim, 1) | |
| self.quant_conv_1 = nn.Conv2d(z_channels, embed_dim, 1) | |
| self.quant_conv_2 = nn.Conv2d(z_channels, embed_dim, 1) | |
| self.quant_conv_3 = nn.Conv2d(z_channels, embed_dim, 1) | |
| # Post quant convolution (takes 4 * embed_dim channels) | |
| self.post_quant_conv = nn.Conv2d(embed_dim * 4, z_channels, 1) | |
| def encode_to_prequant(self, x: torch.Tensor) -> torch.Tensor: | |
| """Encode input to pre-quantized latent space.""" | |
| h_0 = self.encoder_0(x[:, :3]) | |
| h_1 = self.encoder_1(x[:, 3:6]) | |
| h_2 = self.encoder_2(x[:, 6:9]) | |
| h_3 = self.encoder_3(x[:, 9:12]) | |
| h_0 = self.quant_conv_0(h_0) | |
| h_1 = self.quant_conv_1(h_1) | |
| h_2 = self.quant_conv_2(h_2) | |
| h_3 = self.quant_conv_3(h_3) | |
| h = torch.cat((h_0, h_1, h_2, h_3), dim=1) | |
| return h | |
| def quantize_latent( | |
| self, h: torch.Tensor | |
| ) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]: | |
| """Quantize the latent space.""" | |
| quant_0, emb_loss_0, info_0 = self.quantize_0(h[:, : self.embed_dim]) | |
| quant_1, emb_loss_1, info_1 = self.quantize_1( | |
| h[:, self.embed_dim : 2 * self.embed_dim] | |
| ) | |
| quant_2, emb_loss_2, info_2 = self.quantize_2( | |
| h[:, 2 * self.embed_dim : 3 * self.embed_dim] | |
| ) | |
| quant_3, emb_loss_3, info_3 = self.quantize_3(h[:, 3 * self.embed_dim :]) | |
| quant = torch.cat((quant_0, quant_1, quant_2, quant_3), dim=1) | |
| emb_loss = emb_loss_0 + emb_loss_1 + emb_loss_2 + emb_loss_3 | |
| info = torch.stack([info_0[-1], info_1[-1], info_2[-1], info_3[-1]], dim=0) | |
| return quant, emb_loss, info | |
| def encode(self, x: torch.Tensor) -> torch.Tensor: | |
| """Encode input to quantized latent space.""" | |
| h = self.encode_to_prequant(x) | |
| quant, _, _ = self.quantize_latent(h) | |
| return quant * self.scaling_factor | |
| def decode(self, z: torch.Tensor) -> torch.Tensor: | |
| """Decode from latent space to image.""" | |
| z = z / self.scaling_factor | |
| z = self.post_quant_conv(z) | |
| dec = self.decoder(z) | |
| return dec | |
| def forward(self, x: torch.Tensor) -> Tuple[torch.Tensor, torch.Tensor]: | |
| """Forward pass through the VQ-VAE.""" | |
| h = self.encode_to_prequant(x) | |
| quant, diff, _ = self.quantize_latent(h) | |
| dec = self.decode(quant * self.scaling_factor) | |
| return dec, diff | |