| from dac.nn.quantize import ResidualVectorQuantize
|
| from torch import nn
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| from modules.wavenet import WN
|
| import torch
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| import torchaudio
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| import torchaudio.functional as audio_F
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| import numpy as np
|
| from .alias_free_torch import *
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| from torch.nn.utils import weight_norm
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| from torch import nn, sin, pow
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| from einops.layers.torch import Rearrange
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| from dac.model.encodec import SConv1d
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|
|
| def init_weights(m):
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| if isinstance(m, nn.Conv1d):
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| nn.init.trunc_normal_(m.weight, std=0.02)
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| nn.init.constant_(m.bias, 0)
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|
|
|
|
| def WNConv1d(*args, **kwargs):
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| return weight_norm(nn.Conv1d(*args, **kwargs))
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|
|
|
|
| def WNConvTranspose1d(*args, **kwargs):
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| return weight_norm(nn.ConvTranspose1d(*args, **kwargs))
|
|
|
| class SnakeBeta(nn.Module):
|
| """
|
| A modified Snake function which uses separate parameters for the magnitude of the periodic components
|
| Shape:
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| - Input: (B, C, T)
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| - Output: (B, C, T), same shape as the input
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| Parameters:
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| - alpha - trainable parameter that controls frequency
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| - beta - trainable parameter that controls magnitude
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| References:
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| - This activation function is a modified version based on this paper by Liu Ziyin, Tilman Hartwig, Masahito Ueda:
|
| https://arxiv.org/abs/2006.08195
|
| Examples:
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| >>> a1 = snakebeta(256)
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| >>> x = torch.randn(256)
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| >>> x = a1(x)
|
| """
|
|
|
| def __init__(
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| self, in_features, alpha=1.0, alpha_trainable=True, alpha_logscale=False
|
| ):
|
| """
|
| Initialization.
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| INPUT:
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| - in_features: shape of the input
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| - alpha - trainable parameter that controls frequency
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| - beta - trainable parameter that controls magnitude
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| alpha is initialized to 1 by default, higher values = higher-frequency.
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| beta is initialized to 1 by default, higher values = higher-magnitude.
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| alpha will be trained along with the rest of your model.
|
| """
|
| super(SnakeBeta, self).__init__()
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| self.in_features = in_features
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|
|
|
|
| self.alpha_logscale = alpha_logscale
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| if self.alpha_logscale:
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| self.alpha = nn.Parameter(torch.zeros(in_features) * alpha)
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| self.beta = nn.Parameter(torch.zeros(in_features) * alpha)
|
| else:
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| self.alpha = nn.Parameter(torch.ones(in_features) * alpha)
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| self.beta = nn.Parameter(torch.ones(in_features) * alpha)
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|
|
| self.alpha.requires_grad = alpha_trainable
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| self.beta.requires_grad = alpha_trainable
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|
|
| self.no_div_by_zero = 0.000000001
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|
|
| def forward(self, x):
|
| """
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| Forward pass of the function.
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| Applies the function to the input elementwise.
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| SnakeBeta := x + 1/b * sin^2 (xa)
|
| """
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| alpha = self.alpha.unsqueeze(0).unsqueeze(-1)
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| beta = self.beta.unsqueeze(0).unsqueeze(-1)
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| if self.alpha_logscale:
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| alpha = torch.exp(alpha)
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| beta = torch.exp(beta)
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| x = x + (1.0 / (beta + self.no_div_by_zero)) * pow(sin(x * alpha), 2)
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|
|
| return x
|
|
|
| class ResidualUnit(nn.Module):
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| def __init__(self, dim: int = 16, dilation: int = 1):
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| super().__init__()
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| pad = ((7 - 1) * dilation) // 2
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| self.block = nn.Sequential(
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| Activation1d(activation=SnakeBeta(dim, alpha_logscale=True)),
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| WNConv1d(dim, dim, kernel_size=7, dilation=dilation, padding=pad),
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| Activation1d(activation=SnakeBeta(dim, alpha_logscale=True)),
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| WNConv1d(dim, dim, kernel_size=1),
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| )
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|
|
| def forward(self, x):
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| return x + self.block(x)
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|
|
| class CNNLSTM(nn.Module):
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| def __init__(self, indim, outdim, head, global_pred=False):
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| super().__init__()
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| self.global_pred = global_pred
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| self.model = nn.Sequential(
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| ResidualUnit(indim, dilation=1),
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| ResidualUnit(indim, dilation=2),
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| ResidualUnit(indim, dilation=3),
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| Activation1d(activation=SnakeBeta(indim, alpha_logscale=True)),
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| Rearrange("b c t -> b t c"),
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| )
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| self.heads = nn.ModuleList([nn.Linear(indim, outdim) for i in range(head)])
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|
|
| def forward(self, x):
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|
|
| x = self.model(x)
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| if self.global_pred:
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| x = torch.mean(x, dim=1, keepdim=False)
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| outs = [head(x) for head in self.heads]
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| return outs
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|
|
| def sequence_mask(length, max_length=None):
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| if max_length is None:
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| max_length = length.max()
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| x = torch.arange(max_length, dtype=length.dtype, device=length.device)
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| return x.unsqueeze(0) < length.unsqueeze(1)
|
| class FAquantizer(nn.Module):
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| def __init__(self, in_dim=1024,
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| n_p_codebooks=1,
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| n_c_codebooks=2,
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| n_t_codebooks=2,
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| n_r_codebooks=3,
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| codebook_size=1024,
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| codebook_dim=8,
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| quantizer_dropout=0.5,
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| causal=False,
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| separate_prosody_encoder=False,
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| timbre_norm=False,):
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| super(FAquantizer, self).__init__()
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| conv1d_type = SConv1d
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| self.prosody_quantizer = ResidualVectorQuantize(
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| input_dim=in_dim,
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| n_codebooks=n_p_codebooks,
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| codebook_size=codebook_size,
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| codebook_dim=codebook_dim,
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| quantizer_dropout=quantizer_dropout,
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| )
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|
|
| self.content_quantizer = ResidualVectorQuantize(
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| input_dim=in_dim,
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| n_codebooks=n_c_codebooks,
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| codebook_size=codebook_size,
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| codebook_dim=codebook_dim,
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| quantizer_dropout=quantizer_dropout,
|
| )
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|
|
| self.residual_quantizer = ResidualVectorQuantize(
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| input_dim=in_dim,
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| n_codebooks=n_r_codebooks,
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| codebook_size=codebook_size,
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| codebook_dim=codebook_dim,
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| quantizer_dropout=quantizer_dropout,
|
| )
|
|
|
| self.melspec_linear = conv1d_type(in_channels=20, out_channels=256, kernel_size=1, causal=causal)
|
| self.melspec_encoder = WN(hidden_channels=256, kernel_size=5, dilation_rate=1, n_layers=8, gin_channels=0, p_dropout=0.2, causal=causal)
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| self.melspec_linear2 = conv1d_type(in_channels=256, out_channels=1024, kernel_size=1, causal=causal)
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|
|
| self.prob_random_mask_residual = 0.75
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|
|
| SPECT_PARAMS = {
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| "n_fft": 2048,
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| "win_length": 1200,
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| "hop_length": 300,
|
| }
|
| MEL_PARAMS = {
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| "n_mels": 80,
|
| }
|
|
|
| self.to_mel = torchaudio.transforms.MelSpectrogram(
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| n_mels=MEL_PARAMS["n_mels"], sample_rate=24000, **SPECT_PARAMS
|
| )
|
| self.mel_mean, self.mel_std = -4, 4
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| self.frame_rate = 24000 / 300
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| self.hop_length = 300
|
|
|
| def preprocess(self, wave_tensor, n_bins=20):
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| mel_tensor = self.to_mel(wave_tensor.squeeze(1))
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| mel_tensor = (torch.log(1e-5 + mel_tensor) - self.mel_mean) / self.mel_std
|
| return mel_tensor[:, :n_bins, :int(wave_tensor.size(-1) / self.hop_length)]
|
|
|
| def forward(self, x, wave_segments):
|
| outs = 0
|
| prosody_feature = self.preprocess(wave_segments)
|
|
|
| f0_input = prosody_feature
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| f0_input = self.melspec_linear(f0_input)
|
| f0_input = self.melspec_encoder(f0_input, torch.ones(f0_input.shape[0], 1, f0_input.shape[2]).to(
|
| f0_input.device).bool())
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| f0_input = self.melspec_linear2(f0_input)
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|
|
| common_min_size = min(f0_input.size(2), x.size(2))
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| f0_input = f0_input[:, :, :common_min_size]
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|
|
| x = x[:, :, :common_min_size]
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|
|
| z_p, codes_p, latents_p, commitment_loss_p, codebook_loss_p = self.prosody_quantizer(
|
| f0_input, 1
|
| )
|
| outs += z_p.detach()
|
|
|
| z_c, codes_c, latents_c, commitment_loss_c, codebook_loss_c = self.content_quantizer(
|
| x, 2
|
| )
|
| outs += z_c.detach()
|
|
|
| residual_feature = x - z_p.detach() - z_c.detach()
|
|
|
| z_r, codes_r, latents_r, commitment_loss_r, codebook_loss_r = self.residual_quantizer(
|
| residual_feature, 3
|
| )
|
|
|
| quantized = [z_p, z_c, z_r]
|
| codes = [codes_p, codes_c, codes_r]
|
|
|
| return quantized, codes |