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from dataclasses import dataclass, field | |
from typing import List | |
from TTS.tts.configs.shared_configs import BaseTTSConfig, CapacitronVAEConfig, GSTConfig | |
class TacotronConfig(BaseTTSConfig): | |
"""Defines parameters for Tacotron based models. | |
Example: | |
>>> from TTS.tts.configs.tacotron_config import TacotronConfig | |
>>> config = TacotronConfig() | |
Args: | |
model (str): | |
Model name used to select the right model class to initilize. Defaults to `Tacotron`. | |
use_gst (bool): | |
enable / disable the use of Global Style Token modules. Defaults to False. | |
gst (GSTConfig): | |
Instance of `GSTConfig` class. | |
gst_style_input (str): | |
Path to the wav file used at inference to set the speech style through GST. If `GST` is enabled and | |
this is not defined, the model uses a zero vector as an input. Defaults to None. | |
use_capacitron_vae (bool): | |
enable / disable the use of Capacitron modules. Defaults to False. | |
capacitron_vae (CapacitronConfig): | |
Instance of `CapacitronConfig` class. | |
num_chars (int): | |
Number of characters used by the model. It must be defined before initializing the model. Defaults to None. | |
num_speakers (int): | |
Number of speakers for multi-speaker models. Defaults to 1. | |
r (int): | |
Initial number of output frames that the decoder computed per iteration. Larger values makes training and inference | |
faster but reduces the quality of the output frames. This must be equal to the largest `r` value used in | |
`gradual_training` schedule. Defaults to 1. | |
gradual_training (List[List]): | |
Parameters for the gradual training schedule. It is in the form `[[a, b, c], [d ,e ,f] ..]` where `a` is | |
the step number to start using the rest of the values, `b` is the `r` value and `c` is the batch size. | |
If sets None, no gradual training is used. Defaults to None. | |
memory_size (int): | |
Defines the number of previous frames used by the Prenet. If set to < 0, then it uses only the last frame. | |
Defaults to -1. | |
prenet_type (str): | |
`original` or `bn`. `original` sets the default Prenet and `bn` uses Batch Normalization version of the | |
Prenet. Defaults to `original`. | |
prenet_dropout (bool): | |
enables / disables the use of dropout in the Prenet. Defaults to True. | |
prenet_dropout_at_inference (bool): | |
enable / disable the use of dropout in the Prenet at the inference time. Defaults to False. | |
stopnet (bool): | |
enable /disable the Stopnet that predicts the end of the decoder sequence. Defaults to True. | |
stopnet_pos_weight (float): | |
Weight that is applied to over-weight positive instances in the Stopnet loss. Use larger values with | |
datasets with longer sentences. Defaults to 0.2. | |
max_decoder_steps (int): | |
Max number of steps allowed for the decoder. Defaults to 50. | |
encoder_in_features (int): | |
Channels of encoder input and character embedding tensors. Defaults to 256. | |
decoder_in_features (int): | |
Channels of decoder input and encoder output tensors. Defaults to 256. | |
out_channels (int): | |
Channels of the final model output. It must match the spectragram size. Defaults to 80. | |
separate_stopnet (bool): | |
Use a distinct Stopnet which is trained separately from the rest of the model. Defaults to True. | |
attention_type (str): | |
attention type. Check ```TTS.tts.layers.attentions.init_attn```. Defaults to 'original'. | |
attention_heads (int): | |
Number of attention heads for GMM attention. Defaults to 5. | |
windowing (bool): | |
It especially useful at inference to keep attention alignment diagonal. Defaults to False. | |
use_forward_attn (bool): | |
It is only valid if ```attn_type``` is ```original```. Defaults to False. | |
forward_attn_mask (bool): | |
enable/disable extra masking over forward attention. It is useful at inference to prevent | |
possible attention failures. Defaults to False. | |
transition_agent (bool): | |
enable/disable transition agent in forward attention. Defaults to False. | |
location_attn (bool): | |
enable/disable location sensitive attention as in the original Tacotron2 paper. | |
It is only valid if ```attn_type``` is ```original```. Defaults to True. | |
bidirectional_decoder (bool): | |
enable/disable bidirectional decoding. Defaults to False. | |
double_decoder_consistency (bool): | |
enable/disable double decoder consistency. Defaults to False. | |
ddc_r (int): | |
reduction rate used by the coarse decoder when `double_decoder_consistency` is in use. Set this | |
as a multiple of the `r` value. Defaults to 6. | |
speakers_file (str): | |
Path to the speaker mapping file for the Speaker Manager. Defaults to None. | |
use_speaker_embedding (bool): | |
enable / disable using speaker embeddings for multi-speaker models. If set True, the model is | |
in the multi-speaker mode. Defaults to False. | |
use_d_vector_file (bool): | |
enable /disable using external speaker embeddings in place of the learned embeddings. Defaults to False. | |
d_vector_file (str): | |
Path to the file including pre-computed speaker embeddings. Defaults to None. | |
optimizer (str): | |
Optimizer used for the training. Set one from `torch.optim.Optimizer` or `TTS.utils.training`. | |
Defaults to `RAdam`. | |
optimizer_params (dict): | |
Optimizer kwargs. Defaults to `{"betas": [0.8, 0.99], "weight_decay": 0.0}` | |
lr_scheduler (str): | |
Learning rate scheduler for the training. Use one from `torch.optim.Scheduler` schedulers or | |
`TTS.utils.training`. Defaults to `NoamLR`. | |
lr_scheduler_params (dict): | |
Parameters for the generator learning rate scheduler. Defaults to `{"warmup": 4000}`. | |
lr (float): | |
Initial learning rate. Defaults to `1e-4`. | |
wd (float): | |
Weight decay coefficient. Defaults to `1e-6`. | |
grad_clip (float): | |
Gradient clipping threshold. Defaults to `5`. | |
seq_len_norm (bool): | |
enable / disable the sequnce length normalization in the loss functions. If set True, loss of a sample | |
is divided by the sequence length. Defaults to False. | |
loss_masking (bool): | |
enable / disable masking the paddings of the samples in loss computation. Defaults to True. | |
decoder_loss_alpha (float): | |
Weight for the decoder loss of the Tacotron model. If set less than or equal to zero, it disables the | |
corresponding loss function. Defaults to 0.25 | |
postnet_loss_alpha (float): | |
Weight for the postnet loss of the Tacotron model. If set less than or equal to zero, it disables the | |
corresponding loss function. Defaults to 0.25 | |
postnet_diff_spec_alpha (float): | |
Weight for the postnet differential loss of the Tacotron model. If set less than or equal to zero, it disables the | |
corresponding loss function. Defaults to 0.25 | |
decoder_diff_spec_alpha (float): | |
Weight for the decoder differential loss of the Tacotron model. If set less than or equal to zero, it disables the | |
corresponding loss function. Defaults to 0.25 | |
decoder_ssim_alpha (float): | |
Weight for the decoder SSIM loss of the Tacotron model. If set less than or equal to zero, it disables the | |
corresponding loss function. Defaults to 0.25 | |
postnet_ssim_alpha (float): | |
Weight for the postnet SSIM loss of the Tacotron model. If set less than or equal to zero, it disables the | |
corresponding loss function. Defaults to 0.25 | |
ga_alpha (float): | |
Weight for the guided attention loss. If set less than or equal to zero, it disables the corresponding loss | |
function. Defaults to 5. | |
""" | |
model: str = "tacotron" | |
# model_params: TacotronArgs = field(default_factory=lambda: TacotronArgs()) | |
use_gst: bool = False | |
gst: GSTConfig = None | |
gst_style_input: str = None | |
use_capacitron_vae: bool = False | |
capacitron_vae: CapacitronVAEConfig = None | |
# model specific params | |
num_speakers: int = 1 | |
num_chars: int = 0 | |
r: int = 2 | |
gradual_training: List[List[int]] = None | |
memory_size: int = -1 | |
prenet_type: str = "original" | |
prenet_dropout: bool = True | |
prenet_dropout_at_inference: bool = False | |
stopnet: bool = True | |
separate_stopnet: bool = True | |
stopnet_pos_weight: float = 0.2 | |
max_decoder_steps: int = 10000 | |
encoder_in_features: int = 256 | |
decoder_in_features: int = 256 | |
decoder_output_dim: int = 80 | |
out_channels: int = 513 | |
# attention layers | |
attention_type: str = "original" | |
attention_heads: int = None | |
attention_norm: str = "sigmoid" | |
attention_win: bool = False | |
windowing: bool = False | |
use_forward_attn: bool = False | |
forward_attn_mask: bool = False | |
transition_agent: bool = False | |
location_attn: bool = True | |
# advance methods | |
bidirectional_decoder: bool = False | |
double_decoder_consistency: bool = False | |
ddc_r: int = 6 | |
# multi-speaker settings | |
speakers_file: str = None | |
use_speaker_embedding: bool = False | |
speaker_embedding_dim: int = 512 | |
use_d_vector_file: bool = False | |
d_vector_file: str = False | |
d_vector_dim: int = None | |
# optimizer parameters | |
optimizer: str = "RAdam" | |
optimizer_params: dict = field(default_factory=lambda: {"betas": [0.9, 0.998], "weight_decay": 1e-6}) | |
lr_scheduler: str = "NoamLR" | |
lr_scheduler_params: dict = field(default_factory=lambda: {"warmup_steps": 4000}) | |
lr: float = 1e-4 | |
grad_clip: float = 5.0 | |
seq_len_norm: bool = False | |
loss_masking: bool = True | |
# loss params | |
decoder_loss_alpha: float = 0.25 | |
postnet_loss_alpha: float = 0.25 | |
postnet_diff_spec_alpha: float = 0.25 | |
decoder_diff_spec_alpha: float = 0.25 | |
decoder_ssim_alpha: float = 0.25 | |
postnet_ssim_alpha: float = 0.25 | |
ga_alpha: float = 5.0 | |
# testing | |
test_sentences: List[str] = field( | |
default_factory=lambda: [ | |
"It took me quite a long time to develop a voice, and now that I have it I'm not going to be silent.", | |
"Be a voice, not an echo.", | |
"I'm sorry Dave. I'm afraid I can't do that.", | |
"This cake is great. It's so delicious and moist.", | |
"Prior to November 22, 1963.", | |
] | |
) | |
def check_values(self): | |
if self.gradual_training: | |
assert ( | |
self.gradual_training[0][1] == self.r | |
), f"[!] the first scheduled gradual training `r` must be equal to the model's `r` value. {self.gradual_training[0][1]} vs {self.r}" | |
if self.model == "tacotron" and self.audio is not None: | |
assert self.out_channels == ( | |
self.audio.fft_size // 2 + 1 | |
), f"{self.out_channels} vs {self.audio.fft_size // 2 + 1}" | |
if self.model == "tacotron2" and self.audio is not None: | |
assert self.out_channels == self.audio.num_mels | |