67 lines
2.9 KiB
Python
67 lines
2.9 KiB
Python
import torch
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import torch.nn as nn
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from models.arch_util import ConvGnLelu
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from models.stylegan.stylegan2_rosinality import Generator
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class Stylegan2LatentBank(nn.Module):
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def __init__(self, pretrained_model_file, encoder_nf=64, max_dim=1024, latent_dim=512, encoder_levels=4, decoder_levels=3):
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super().__init__()
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# Initialize the bank.
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self.bank = Generator(size=max_dim, style_dim=latent_dim, n_mlp=8, channel_multiplier=2) # Assumed using 'f' generators with mult=2.
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state_dict = torch.load(pretrained_model_file)
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self.bank.load_state_dict(state_dict, strict=True)
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# Shut off training of the latent bank.
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for p in self.bank.parameters():
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p.requires_grad = False
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p.DO_NOT_TRAIN = True
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# TODO: Compute these based on the underlying stylegans channels member variable.
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stylegan_encoder_dims = [512, 512, 512, 512]
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# Initialize the fusion blocks. TODO: Try using the StyledConvs instead of regular ones.
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encoder_output_dims = reversed([64 * 2 ** i for i in range(encoder_levels)])
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input_dims_by_layer = [eod + sed for eod, sed in zip(encoder_output_dims, stylegan_encoder_dims)]
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self.fusion_blocks = nn.ModuleList([ConvGnLelu(in_filters, out_filters, kernel_size=3, activation=True, norm=False, bias=True)
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for in_filters, out_filters in zip(input_dims_by_layer, stylegan_encoder_dims)])
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self.decoder_levels = decoder_levels
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self.decoder_start = encoder_levels - 1
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self.total_levels = encoder_levels + decoder_levels - 1
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# This forward mirrors the forward() pass from the rosinality stylegan2 implementation, with the additions called
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# for from the GLEAN paper. GLEAN mods are annotated with comments.
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# Removed stuff:
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# - Support for split latents (we're spoonfeeding them)
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# - Support for fixed noise inputs
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# - RGB computations -> we only care about the latents
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# - Style MLP -> GLEAN computes the Style inputs directly.
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# - Later layers -> GLEAN terminates at 256 resolution.
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def forward(self, convolutional_features, latent_vectors):
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out = self.bank.input(latent_vectors[:, 0]) # The input here is only used to fetch the batch size.
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out = self.bank.conv1(out, latent_vectors[:, 0], noise=None)
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i, k = 1, 0
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decoder_outputs = []
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for conv1, conv2 in zip(self.bank.convs[::2], self.bank.convs[1::2]):
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if k < len(self.fusion_blocks):
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out = torch.cat([convolutional_features[-k-1], out], dim=1)
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out = self.fusion_blocks[k](out)
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out = conv1(out, latent_vectors[:, i], noise=None)
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out = conv2(out, latent_vectors[:, i + 1], noise=None)
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if k >= self.decoder_start:
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decoder_outputs.append(out)
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if k >= self.total_levels:
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break
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i += 2
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k += 1
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return decoder_outputs
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