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from dataclasses import dataclass |
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from typing import Optional, Tuple, Union |
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import numpy as np |
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import torch |
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import torch.nn as nn |
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from ..configuration_utils import ConfigMixin, register_to_config |
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from ..modeling_utils import ModelMixin |
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from ..utils import BaseOutput |
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from .unet_blocks import UNetMidBlock2D, get_down_block, get_up_block |
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@dataclass |
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class DecoderOutput(BaseOutput): |
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""" |
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Output of decoding method. |
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Args: |
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sample (`torch.FloatTensor` of shape `(batch_size, num_channels, height, width)`): |
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Decoded output sample of the model. Output of the last layer of the model. |
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""" |
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sample: torch.FloatTensor |
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@dataclass |
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class VQEncoderOutput(BaseOutput): |
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""" |
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Output of VQModel encoding method. |
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Args: |
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latents (`torch.FloatTensor` of shape `(batch_size, num_channels, height, width)`): |
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Encoded output sample of the model. Output of the last layer of the model. |
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""" |
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latents: torch.FloatTensor |
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@dataclass |
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class AutoencoderKLOutput(BaseOutput): |
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""" |
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Output of AutoencoderKL encoding method. |
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Args: |
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latent_dist (`DiagonalGaussianDistribution`): |
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Encoded outputs of `Encoder` represented as the mean and logvar of `DiagonalGaussianDistribution`. |
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`DiagonalGaussianDistribution` allows for sampling latents from the distribution. |
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""" |
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latent_dist: "DiagonalGaussianDistribution" |
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class Encoder(nn.Module): |
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def __init__( |
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self, |
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in_channels=3, |
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out_channels=3, |
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down_block_types=("DownEncoderBlock2D",), |
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block_out_channels=(64,), |
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layers_per_block=2, |
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act_fn="silu", |
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double_z=True, |
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): |
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super().__init__() |
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self.layers_per_block = layers_per_block |
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self.conv_in = torch.nn.Conv2d(in_channels, block_out_channels[0], kernel_size=3, stride=1, padding=1) |
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self.mid_block = None |
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self.down_blocks = nn.ModuleList([]) |
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output_channel = block_out_channels[0] |
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for i, down_block_type in enumerate(down_block_types): |
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input_channel = output_channel |
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output_channel = block_out_channels[i] |
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is_final_block = i == len(block_out_channels) - 1 |
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down_block = get_down_block( |
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down_block_type, |
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num_layers=self.layers_per_block, |
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in_channels=input_channel, |
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out_channels=output_channel, |
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add_downsample=not is_final_block, |
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resnet_eps=1e-6, |
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downsample_padding=0, |
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resnet_act_fn=act_fn, |
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attn_num_head_channels=None, |
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temb_channels=None, |
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) |
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self.down_blocks.append(down_block) |
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self.mid_block = UNetMidBlock2D( |
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in_channels=block_out_channels[-1], |
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resnet_eps=1e-6, |
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resnet_act_fn=act_fn, |
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output_scale_factor=1, |
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resnet_time_scale_shift="default", |
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attn_num_head_channels=None, |
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resnet_groups=32, |
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temb_channels=None, |
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) |
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num_groups_out = 32 |
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self.conv_norm_out = nn.GroupNorm(num_channels=block_out_channels[-1], num_groups=num_groups_out, eps=1e-6) |
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self.conv_act = nn.SiLU() |
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conv_out_channels = 2 * out_channels if double_z else out_channels |
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self.conv_out = nn.Conv2d(block_out_channels[-1], conv_out_channels, 3, padding=1) |
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def forward(self, x): |
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sample = x |
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sample = self.conv_in(sample) |
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for down_block in self.down_blocks: |
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sample = down_block(sample) |
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sample = self.mid_block(sample) |
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sample = self.conv_norm_out(sample) |
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sample = self.conv_act(sample) |
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sample = self.conv_out(sample) |
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return sample |
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class Decoder(nn.Module): |
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def __init__( |
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self, |
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in_channels=3, |
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out_channels=3, |
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up_block_types=("UpDecoderBlock2D",), |
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block_out_channels=(64,), |
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layers_per_block=2, |
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act_fn="silu", |
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): |
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super().__init__() |
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self.layers_per_block = layers_per_block |
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self.conv_in = nn.Conv2d(in_channels, block_out_channels[-1], kernel_size=3, stride=1, padding=1) |
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self.mid_block = None |
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self.up_blocks = nn.ModuleList([]) |
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self.mid_block = UNetMidBlock2D( |
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in_channels=block_out_channels[-1], |
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resnet_eps=1e-6, |
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resnet_act_fn=act_fn, |
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output_scale_factor=1, |
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resnet_time_scale_shift="default", |
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attn_num_head_channels=None, |
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resnet_groups=32, |
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temb_channels=None, |
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) |
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reversed_block_out_channels = list(reversed(block_out_channels)) |
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output_channel = reversed_block_out_channels[0] |
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for i, up_block_type in enumerate(up_block_types): |
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prev_output_channel = output_channel |
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output_channel = reversed_block_out_channels[i] |
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is_final_block = i == len(block_out_channels) - 1 |
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up_block = get_up_block( |
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up_block_type, |
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num_layers=self.layers_per_block + 1, |
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in_channels=prev_output_channel, |
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out_channels=output_channel, |
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prev_output_channel=None, |
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add_upsample=not is_final_block, |
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resnet_eps=1e-6, |
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resnet_act_fn=act_fn, |
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attn_num_head_channels=None, |
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temb_channels=None, |
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) |
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self.up_blocks.append(up_block) |
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prev_output_channel = output_channel |
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num_groups_out = 32 |
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self.conv_norm_out = nn.GroupNorm(num_channels=block_out_channels[0], num_groups=num_groups_out, eps=1e-6) |
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self.conv_act = nn.SiLU() |
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self.conv_out = nn.Conv2d(block_out_channels[0], out_channels, 3, padding=1) |
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def forward(self, z): |
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sample = z |
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sample = self.conv_in(sample) |
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sample = self.mid_block(sample) |
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for up_block in self.up_blocks: |
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sample = up_block(sample) |
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sample = self.conv_norm_out(sample) |
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sample = self.conv_act(sample) |
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sample = self.conv_out(sample) |
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return sample |
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class VectorQuantizer(nn.Module): |
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""" |
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Improved version over VectorQuantizer, can be used as a drop-in replacement. Mostly avoids costly matrix |
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multiplications and allows for post-hoc remapping of indices. |
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""" |
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def __init__(self, n_e, e_dim, beta, remap=None, unknown_index="random", sane_index_shape=False, legacy=True): |
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super().__init__() |
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self.n_e = n_e |
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self.e_dim = e_dim |
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self.beta = beta |
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self.legacy = legacy |
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self.embedding = nn.Embedding(self.n_e, self.e_dim) |
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self.embedding.weight.data.uniform_(-1.0 / self.n_e, 1.0 / self.n_e) |
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self.remap = remap |
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if self.remap is not None: |
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self.register_buffer("used", torch.tensor(np.load(self.remap))) |
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self.re_embed = self.used.shape[0] |
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self.unknown_index = unknown_index |
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if self.unknown_index == "extra": |
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self.unknown_index = self.re_embed |
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self.re_embed = self.re_embed + 1 |
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print( |
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f"Remapping {self.n_e} indices to {self.re_embed} indices. " |
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f"Using {self.unknown_index} for unknown indices." |
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) |
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else: |
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self.re_embed = n_e |
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self.sane_index_shape = sane_index_shape |
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def remap_to_used(self, inds): |
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ishape = inds.shape |
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assert len(ishape) > 1 |
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inds = inds.reshape(ishape[0], -1) |
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used = self.used.to(inds) |
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match = (inds[:, :, None] == used[None, None, ...]).long() |
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new = match.argmax(-1) |
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unknown = match.sum(2) < 1 |
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if self.unknown_index == "random": |
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new[unknown] = torch.randint(0, self.re_embed, size=new[unknown].shape).to(device=new.device) |
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else: |
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new[unknown] = self.unknown_index |
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return new.reshape(ishape) |
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def unmap_to_all(self, inds): |
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ishape = inds.shape |
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assert len(ishape) > 1 |
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inds = inds.reshape(ishape[0], -1) |
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used = self.used.to(inds) |
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if self.re_embed > self.used.shape[0]: |
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inds[inds >= self.used.shape[0]] = 0 |
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back = torch.gather(used[None, :][inds.shape[0] * [0], :], 1, inds) |
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return back.reshape(ishape) |
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def forward(self, z): |
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z = z.permute(0, 2, 3, 1).contiguous() |
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z_flattened = z.view(-1, self.e_dim) |
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d = ( |
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torch.sum(z_flattened**2, dim=1, keepdim=True) |
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+ torch.sum(self.embedding.weight**2, dim=1) |
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- 2 * torch.einsum("bd,dn->bn", z_flattened, self.embedding.weight.t()) |
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) |
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min_encoding_indices = torch.argmin(d, dim=1) |
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z_q = self.embedding(min_encoding_indices).view(z.shape) |
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perplexity = None |
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min_encodings = None |
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if not self.legacy: |
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loss = self.beta * torch.mean((z_q.detach() - z) ** 2) + torch.mean((z_q - z.detach()) ** 2) |
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else: |
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loss = torch.mean((z_q.detach() - z) ** 2) + self.beta * torch.mean((z_q - z.detach()) ** 2) |
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z_q = z + (z_q - z).detach() |
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z_q = z_q.permute(0, 3, 1, 2).contiguous() |
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if self.remap is not None: |
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min_encoding_indices = min_encoding_indices.reshape(z.shape[0], -1) |
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min_encoding_indices = self.remap_to_used(min_encoding_indices) |
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min_encoding_indices = min_encoding_indices.reshape(-1, 1) |
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if self.sane_index_shape: |
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min_encoding_indices = min_encoding_indices.reshape(z_q.shape[0], z_q.shape[2], z_q.shape[3]) |
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return z_q, loss, (perplexity, min_encodings, min_encoding_indices) |
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def get_codebook_entry(self, indices, shape): |
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if self.remap is not None: |
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indices = indices.reshape(shape[0], -1) |
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indices = self.unmap_to_all(indices) |
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indices = indices.reshape(-1) |
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z_q = self.embedding(indices) |
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if shape is not None: |
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z_q = z_q.view(shape) |
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z_q = z_q.permute(0, 3, 1, 2).contiguous() |
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return z_q |
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class DiagonalGaussianDistribution(object): |
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def __init__(self, parameters, deterministic=False): |
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self.parameters = parameters |
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self.mean, self.logvar = torch.chunk(parameters, 2, dim=1) |
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self.logvar = torch.clamp(self.logvar, -30.0, 20.0) |
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self.deterministic = deterministic |
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self.std = torch.exp(0.5 * self.logvar) |
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self.var = torch.exp(self.logvar) |
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if self.deterministic: |
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self.var = self.std = torch.zeros_like(self.mean).to(device=self.parameters.device) |
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def sample(self, generator: Optional[torch.Generator] = None) -> torch.FloatTensor: |
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device = self.parameters.device |
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sample_device = "cpu" if device.type == "mps" else device |
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sample = torch.randn(self.mean.shape, generator=generator, device=sample_device).to(device) |
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x = self.mean + self.std * sample |
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return x |
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def kl(self, other=None): |
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if self.deterministic: |
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return torch.Tensor([0.0]) |
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else: |
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if other is None: |
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return 0.5 * torch.sum(torch.pow(self.mean, 2) + self.var - 1.0 - self.logvar, dim=[1, 2, 3]) |
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else: |
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return 0.5 * torch.sum( |
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torch.pow(self.mean - other.mean, 2) / other.var |
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+ self.var / other.var |
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- 1.0 |
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- self.logvar |
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+ other.logvar, |
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dim=[1, 2, 3], |
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) |
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def nll(self, sample, dims=[1, 2, 3]): |
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if self.deterministic: |
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return torch.Tensor([0.0]) |
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logtwopi = np.log(2.0 * np.pi) |
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return 0.5 * torch.sum(logtwopi + self.logvar + torch.pow(sample - self.mean, 2) / self.var, dim=dims) |
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def mode(self): |
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return self.mean |
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class VQModel(ModelMixin, ConfigMixin): |
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r"""VQ-VAE model from the paper Neural Discrete Representation Learning by Aaron van den Oord, Oriol Vinyals and Koray |
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Kavukcuoglu. |
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This model inherits from [`ModelMixin`]. Check the superclass documentation for the generic methods the library |
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implements for all the model (such as downloading or saving, etc.) |
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Parameters: |
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in_channels (int, *optional*, defaults to 3): Number of channels in the input image. |
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out_channels (int, *optional*, defaults to 3): Number of channels in the output. |
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down_block_types (`Tuple[str]`, *optional*, defaults to : |
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obj:`("DownEncoderBlock2D",)`): Tuple of downsample block types. |
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up_block_types (`Tuple[str]`, *optional*, defaults to : |
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obj:`("UpDecoderBlock2D",)`): Tuple of upsample block types. |
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block_out_channels (`Tuple[int]`, *optional*, defaults to : |
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obj:`(64,)`): Tuple of block output channels. |
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act_fn (`str`, *optional*, defaults to `"silu"`): The activation function to use. |
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latent_channels (`int`, *optional*, defaults to `3`): Number of channels in the latent space. |
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sample_size (`int`, *optional*, defaults to `32`): TODO |
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num_vq_embeddings (`int`, *optional*, defaults to `256`): Number of codebook vectors in the VQ-VAE. |
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""" |
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|
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@register_to_config |
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def __init__( |
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self, |
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in_channels: int = 3, |
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out_channels: int = 3, |
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down_block_types: Tuple[str] = ("DownEncoderBlock2D",), |
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up_block_types: Tuple[str] = ("UpDecoderBlock2D",), |
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block_out_channels: Tuple[int] = (64,), |
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layers_per_block: int = 1, |
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act_fn: str = "silu", |
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latent_channels: int = 3, |
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sample_size: int = 32, |
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num_vq_embeddings: int = 256, |
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): |
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super().__init__() |
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self.encoder = Encoder( |
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in_channels=in_channels, |
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out_channels=latent_channels, |
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down_block_types=down_block_types, |
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block_out_channels=block_out_channels, |
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layers_per_block=layers_per_block, |
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act_fn=act_fn, |
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double_z=False, |
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) |
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self.quant_conv = torch.nn.Conv2d(latent_channels, latent_channels, 1) |
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self.quantize = VectorQuantizer( |
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num_vq_embeddings, latent_channels, beta=0.25, remap=None, sane_index_shape=False |
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) |
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self.post_quant_conv = torch.nn.Conv2d(latent_channels, latent_channels, 1) |
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self.decoder = Decoder( |
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in_channels=latent_channels, |
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out_channels=out_channels, |
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up_block_types=up_block_types, |
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block_out_channels=block_out_channels, |
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layers_per_block=layers_per_block, |
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act_fn=act_fn, |
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) |
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def encode(self, x: torch.FloatTensor, return_dict: bool = True) -> VQEncoderOutput: |
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h = self.encoder(x) |
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h = self.quant_conv(h) |
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if not return_dict: |
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return (h,) |
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return VQEncoderOutput(latents=h) |
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|
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def decode( |
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self, h: torch.FloatTensor, force_not_quantize: bool = False, return_dict: bool = True |
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) -> Union[DecoderOutput, torch.FloatTensor]: |
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|
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if not force_not_quantize: |
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quant, emb_loss, info = self.quantize(h) |
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else: |
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quant = h |
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quant = self.post_quant_conv(quant) |
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dec = self.decoder(quant) |
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return dec |
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def forward(self, sample: torch.FloatTensor, return_dict: bool = True) -> Union[DecoderOutput, torch.FloatTensor]: |
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r""" |
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Args: |
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sample (`torch.FloatTensor`): Input sample. |
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return_dict (`bool`, *optional*, defaults to `True`): |
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Whether or not to return a [`DecoderOutput`] instead of a plain tuple. |
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""" |
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x = sample |
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h = self.encode(x).latents |
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dec = self.decode(h).sample |
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if not return_dict: |
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return (dec,) |
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return DecoderOutput(sample=dec) |
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|
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class AutoencoderKL(ModelMixin, ConfigMixin): |
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r"""Variational Autoencoder (VAE) model with KL loss from the paper Auto-Encoding Variational Bayes by Diederik P. Kingma |
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and Max Welling. |
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|
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This model inherits from [`ModelMixin`]. Check the superclass documentation for the generic methods the library |
|
implements for all the model (such as downloading or saving, etc.) |
|
|
|
Parameters: |
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in_channels (int, *optional*, defaults to 3): Number of channels in the input image. |
|
out_channels (int, *optional*, defaults to 3): Number of channels in the output. |
|
down_block_types (`Tuple[str]`, *optional*, defaults to : |
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obj:`("DownEncoderBlock2D",)`): Tuple of downsample block types. |
|
up_block_types (`Tuple[str]`, *optional*, defaults to : |
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obj:`("UpDecoderBlock2D",)`): Tuple of upsample block types. |
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block_out_channels (`Tuple[int]`, *optional*, defaults to : |
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obj:`(64,)`): Tuple of block output channels. |
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act_fn (`str`, *optional*, defaults to `"silu"`): The activation function to use. |
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latent_channels (`int`, *optional*, defaults to `4`): Number of channels in the latent space. |
|
sample_size (`int`, *optional*, defaults to `32`): TODO |
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""" |
|
|
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@register_to_config |
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def __init__( |
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self, |
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in_channels: int = 3, |
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out_channels: int = 3, |
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down_block_types: Tuple[str] = ("DownEncoderBlock2D",), |
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up_block_types: Tuple[str] = ("UpDecoderBlock2D",), |
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block_out_channels: Tuple[int] = (64,), |
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layers_per_block: int = 1, |
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act_fn: str = "silu", |
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latent_channels: int = 4, |
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sample_size: int = 32, |
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): |
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super().__init__() |
|
|
|
|
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self.encoder = Encoder( |
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in_channels=in_channels, |
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out_channels=latent_channels, |
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down_block_types=down_block_types, |
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block_out_channels=block_out_channels, |
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layers_per_block=layers_per_block, |
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act_fn=act_fn, |
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double_z=True, |
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) |
|
|
|
|
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self.decoder = Decoder( |
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in_channels=latent_channels, |
|
out_channels=out_channels, |
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up_block_types=up_block_types, |
|
block_out_channels=block_out_channels, |
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layers_per_block=layers_per_block, |
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act_fn=act_fn, |
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) |
|
|
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self.quant_conv = torch.nn.Conv2d(2 * latent_channels, 2 * latent_channels, 1) |
|
self.post_quant_conv = torch.nn.Conv2d(latent_channels, latent_channels, 1) |
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|
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def encode(self, x: torch.FloatTensor, return_dict: bool = True) -> AutoencoderKLOutput: |
|
h = self.encoder(x) |
|
moments = self.quant_conv(h) |
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posterior = DiagonalGaussianDistribution(moments) |
|
|
|
if not return_dict: |
|
return (posterior,) |
|
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return AutoencoderKLOutput(latent_dist=posterior) |
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def decode(self, z: torch.FloatTensor, return_dict: bool = True) -> Union[DecoderOutput, torch.FloatTensor]: |
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z = self.post_quant_conv(z) |
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dec = self.decoder(z) |
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return dec |
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def forward( |
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self, sample: torch.FloatTensor, sample_posterior: bool = False, return_dict: bool = True |
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) -> Union[DecoderOutput, torch.FloatTensor]: |
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r""" |
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Args: |
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sample (`torch.FloatTensor`): Input sample. |
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sample_posterior (`bool`, *optional*, defaults to `False`): |
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Whether to sample from the posterior. |
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return_dict (`bool`, *optional*, defaults to `True`): |
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Whether or not to return a [`DecoderOutput`] instead of a plain tuple. |
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""" |
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x = sample |
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posterior = self.encode(x).latent_dist |
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if sample_posterior: |
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z = posterior.sample() |
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else: |
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z = posterior.mode() |
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dec = self.decode(z).sample |
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if not return_dict: |
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return (dec,) |
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return DecoderOutput(sample=dec) |
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