| | from typing import 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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| | import torch.nn.functional as F
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| | from einops import rearrange
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| | from torch.nn.utils import weight_norm
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| |
|
| | from .layers import WNConv1d
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| |
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| |
|
| | class VectorQuantize(nn.Module):
|
| | """
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| | Implementation of VQ similar to Karpathy's repo:
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| | https://github.com/karpathy/deep-vector-quantization
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| | Additionally uses following tricks from Improved VQGAN
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| | (https://arxiv.org/pdf/2110.04627.pdf):
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| | 1. Factorized codes: Perform nearest neighbor lookup in low-dimensional space
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| | for improved codebook usage
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| | 2. l2-normalized codes: Converts euclidean distance to cosine similarity which
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| | improves training stability
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| | """
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| |
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| | def __init__(self, input_dim: int, codebook_size: int, codebook_dim: int):
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| | super().__init__()
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| | self.codebook_size = codebook_size
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| | self.codebook_dim = codebook_dim
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| |
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| | self.in_proj = WNConv1d(input_dim, codebook_dim, kernel_size=1)
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| | self.out_proj = WNConv1d(codebook_dim, input_dim, kernel_size=1)
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| | self.codebook = nn.Embedding(codebook_size, codebook_dim)
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| |
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| | def forward(self, z):
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| | """Quantized the input tensor using a fixed codebook and returns
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| | the corresponding codebook vectors
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| |
|
| | Parameters
|
| | ----------
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| | z : Tensor[B x D x T]
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| |
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| | Returns
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| | -------
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| | Tensor[B x D x T]
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| | Quantized continuous representation of input
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| | Tensor[1]
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| | Commitment loss to train encoder to predict vectors closer to codebook
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| | entries
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| | Tensor[1]
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| | Codebook loss to update the codebook
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| | Tensor[B x T]
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| | Codebook indices (quantized discrete representation of input)
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| | Tensor[B x D x T]
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| | Projected latents (continuous representation of input before quantization)
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| | """
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| |
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| |
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| | z_e = self.in_proj(z)
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| | z_q, indices = self.decode_latents(z_e)
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| |
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| | commitment_loss = F.mse_loss(z_e, z_q.detach(), reduction="none").mean([1, 2])
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| | codebook_loss = F.mse_loss(z_q, z_e.detach(), reduction="none").mean([1, 2])
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| |
|
| | z_q = (
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| | z_e + (z_q - z_e).detach()
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| | )
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| |
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| | z_q = self.out_proj(z_q)
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| |
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| | return z_q, commitment_loss, codebook_loss, indices, z_e
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| |
|
| | def embed_code(self, embed_id):
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| | return F.embedding(embed_id, self.codebook.weight)
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| |
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| | def decode_code(self, embed_id):
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| | return self.embed_code(embed_id).transpose(1, 2)
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| |
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| | def decode_latents(self, latents):
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| | encodings = rearrange(latents, "b d t -> (b t) d")
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| | codebook = self.codebook.weight
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| |
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| |
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| | encodings = F.normalize(encodings)
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| | codebook = F.normalize(codebook)
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| |
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| |
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| | dist = (
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| | encodings.pow(2).sum(1, keepdim=True)
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| | - 2 * encodings @ codebook.t()
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| | + codebook.pow(2).sum(1, keepdim=True).t()
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| | )
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| | indices = rearrange((-dist).max(1)[1], "(b t) -> b t", b=latents.size(0))
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| | z_q = self.decode_code(indices)
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| | return z_q, indices
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| |
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| |
|
| | class ResidualVectorQuantize(nn.Module):
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| | """
|
| | Introduced in SoundStream: An end2end neural audio codec
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| | https://arxiv.org/abs/2107.03312
|
| | """
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| |
|
| | def __init__(
|
| | self,
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| | input_dim: int = 512,
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| | n_codebooks: int = 9,
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| | codebook_size: int = 1024,
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| | codebook_dim: Union[int, list] = 8,
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| | quantizer_dropout: float = 0.0,
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| | ):
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| | super().__init__()
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| | if isinstance(codebook_dim, int):
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| | codebook_dim = [codebook_dim for _ in range(n_codebooks)]
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| |
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| | self.n_codebooks = n_codebooks
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| | self.codebook_dim = codebook_dim
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| | self.codebook_size = codebook_size
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| |
|
| | self.quantizers = nn.ModuleList(
|
| | [
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| | VectorQuantize(input_dim, codebook_size, codebook_dim[i])
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| | for i in range(n_codebooks)
|
| | ]
|
| | )
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| | self.quantizer_dropout = quantizer_dropout
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| |
|
| | def forward(self, z, n_quantizers: int = None):
|
| | """Quantized the input tensor using a fixed set of `n` codebooks and returns
|
| | the corresponding codebook vectors
|
| | Parameters
|
| | ----------
|
| | z : Tensor[B x D x T]
|
| | n_quantizers : int, optional
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| | No. of quantizers to use
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| | (n_quantizers < self.n_codebooks ex: for quantizer dropout)
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| | Note: if `self.quantizer_dropout` is True, this argument is ignored
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| | when in training mode, and a random number of quantizers is used.
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| | Returns
|
| | -------
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| | dict
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| | A dictionary with the following keys:
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| |
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| | "z" : Tensor[B x D x T]
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| | Quantized continuous representation of input
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| | "codes" : Tensor[B x N x T]
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| | Codebook indices for each codebook
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| | (quantized discrete representation of input)
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| | "latents" : Tensor[B x N*D x T]
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| | Projected latents (continuous representation of input before quantization)
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| | "vq/commitment_loss" : Tensor[1]
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| | Commitment loss to train encoder to predict vectors closer to codebook
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| | entries
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| | "vq/codebook_loss" : Tensor[1]
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| | Codebook loss to update the codebook
|
| | """
|
| | z_q = 0
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| | residual = z
|
| | commitment_loss = 0
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| | codebook_loss = 0
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| |
|
| | codebook_indices = []
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| | latents = []
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| |
|
| | if n_quantizers is None:
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| | n_quantizers = self.n_codebooks
|
| | if self.training:
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| | n_quantizers = torch.ones((z.shape[0],)) * self.n_codebooks + 1
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| | dropout = torch.randint(1, self.n_codebooks + 1, (z.shape[0],))
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| | n_dropout = int(z.shape[0] * self.quantizer_dropout)
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| | n_quantizers[:n_dropout] = dropout[:n_dropout]
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| | n_quantizers = n_quantizers.to(z.device)
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| |
|
| | for i, quantizer in enumerate(self.quantizers):
|
| | if self.training is False and i >= n_quantizers:
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| | break
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| |
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| | z_q_i, commitment_loss_i, codebook_loss_i, indices_i, z_e_i = quantizer(
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| | residual
|
| | )
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| |
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| |
|
| | mask = (
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| | torch.full((z.shape[0],), fill_value=i, device=z.device) < n_quantizers
|
| | )
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| | z_q = z_q + z_q_i * mask[:, None, None]
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| | residual = residual - z_q_i
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| |
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| |
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| | commitment_loss += (commitment_loss_i * mask).mean()
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| | codebook_loss += (codebook_loss_i * mask).mean()
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| |
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| | codebook_indices.append(indices_i)
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| | latents.append(z_e_i)
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| |
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| | codes = torch.stack(codebook_indices, dim=1)
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| | latents = torch.cat(latents, dim=1)
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| |
|
| | return z_q, codes, latents, commitment_loss, codebook_loss
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| |
|
| | def from_codes(self, codes: torch.Tensor):
|
| | """Given the quantized codes, reconstruct the continuous representation
|
| | Parameters
|
| | ----------
|
| | codes : Tensor[B x N x T]
|
| | Quantized discrete representation of input
|
| | Returns
|
| | -------
|
| | Tensor[B x D x T]
|
| | Quantized continuous representation of input
|
| | """
|
| | z_q = 0.0
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| | z_p = []
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| | n_codebooks = codes.shape[1]
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| | for i in range(n_codebooks):
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| | z_p_i = self.quantizers[i].decode_code(codes[:, i, :])
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| | z_p.append(z_p_i)
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| |
|
| | z_q_i = self.quantizers[i].out_proj(z_p_i)
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| | z_q = z_q + z_q_i
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| | return z_q, torch.cat(z_p, dim=1), codes
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| |
|
| | def from_latents(self, latents: torch.Tensor):
|
| | """Given the unquantized latents, reconstruct the
|
| | continuous representation after quantization.
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| |
|
| | Parameters
|
| | ----------
|
| | latents : Tensor[B x N x T]
|
| | Continuous representation of input after projection
|
| |
|
| | Returns
|
| | -------
|
| | Tensor[B x D x T]
|
| | Quantized representation of full-projected space
|
| | Tensor[B x D x T]
|
| | Quantized representation of latent space
|
| | """
|
| | z_q = 0
|
| | z_p = []
|
| | codes = []
|
| | dims = np.cumsum([0] + [q.codebook_dim for q in self.quantizers])
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| |
|
| | n_codebooks = np.where(dims <= latents.shape[1])[0].max(axis=0, keepdims=True)[
|
| | 0
|
| | ]
|
| | for i in range(n_codebooks):
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| | j, k = dims[i], dims[i + 1]
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| | z_p_i, codes_i = self.quantizers[i].decode_latents(latents[:, j:k, :])
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| | z_p.append(z_p_i)
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| | codes.append(codes_i)
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| |
|
| | z_q_i = self.quantizers[i].out_proj(z_p_i)
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| | z_q = z_q + z_q_i
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| |
|
| | return z_q, torch.cat(z_p, dim=1), torch.stack(codes, dim=1)
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| |
|
| |
|
| | if __name__ == "__main__":
|
| | rvq = ResidualVectorQuantize(quantizer_dropout=True)
|
| | x = torch.randn(16, 512, 80)
|
| | y = rvq(x)
|
| | print(y["latents"].shape)
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| |
|