Voice_Cloning / TTS /tts /configs /speedy_speech_config.py
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from dataclasses import dataclass, field
from typing import List
from TTS.tts.configs.shared_configs import BaseTTSConfig
from TTS.tts.models.forward_tts import ForwardTTSArgs
@dataclass
class SpeedySpeechConfig(BaseTTSConfig):
"""Configure `ForwardTTS` as SpeedySpeech model.
Example:
>>> from TTS.tts.configs.speedy_speech_config import SpeedySpeechConfig
>>> config = SpeedySpeechConfig()
Args:
model (str):
Model name used for selecting the right model at initialization. Defaults to `speedy_speech`.
base_model (str):
Name of the base model being configured as this model so that 🐸 TTS knows it needs to initiate
the base model rather than searching for the `model` implementation. Defaults to `forward_tts`.
model_args (Coqpit):
Model class arguments. Check `FastPitchArgs` for more details. Defaults to `FastPitchArgs()`.
data_dep_init_steps (int):
Number of steps used for computing normalization parameters at the beginning of the training. GlowTTS uses
Activation Normalization that pre-computes normalization stats at the beginning and use the same values
for the rest. Defaults to 10.
speakers_file (str):
Path to the file containing the list of speakers. Needed at inference for loading matching speaker ids to
speaker names. 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.
d_vector_dim (int):
Dimension of the external speaker embeddings. Defaults to 0.
optimizer (str):
Name of the model optimizer. Defaults to `RAdam`.
optimizer_params (dict):
Arguments of the model optimizer. Defaults to `{"betas": [0.9, 0.998], "weight_decay": 1e-6}`.
lr_scheduler (str):
Name of the learning rate scheduler. Defaults to `Noam`.
lr_scheduler_params (dict):
Arguments of the learning rate scheduler. Defaults to `{"warmup_steps": 4000}`.
lr (float):
Initial learning rate. Defaults to `1e-3`.
grad_clip (float):
Gradient norm clipping value. Defaults to `5.0`.
spec_loss_type (str):
Type of the spectrogram loss. Check `ForwardTTSLoss` for possible values. Defaults to `l1`.
duration_loss_type (str):
Type of the duration loss. Check `ForwardTTSLoss` for possible values. Defaults to `huber`.
use_ssim_loss (bool):
Enable/disable the use of SSIM (Structural Similarity) loss. Defaults to True.
wd (float):
Weight decay coefficient. Defaults to `1e-7`.
ssim_loss_alpha (float):
Weight for the SSIM loss. If set 0, disables the SSIM loss. Defaults to 1.0.
dur_loss_alpha (float):
Weight for the duration predictor's loss. If set 0, disables the huber loss. Defaults to 1.0.
spec_loss_alpha (float):
Weight for the L1 spectrogram loss. If set 0, disables the L1 loss. Defaults to 1.0.
binary_loss_alpha (float):
Weight for the binary loss. If set 0, disables the binary loss. Defaults to 1.0.
binary_loss_warmup_epochs (float):
Number of epochs to gradually increase the binary loss impact. Defaults to 150.
min_seq_len (int):
Minimum input sequence length to be used at training.
max_seq_len (int):
Maximum input sequence length to be used at training. Larger values result in more VRAM usage.
"""
model: str = "speedy_speech"
base_model: str = "forward_tts"
# set model args as SpeedySpeech
model_args: ForwardTTSArgs = field(
default_factory=lambda: ForwardTTSArgs(
use_pitch=False,
encoder_type="residual_conv_bn",
encoder_params={
"kernel_size": 4,
"dilations": 4 * [1, 2, 4] + [1],
"num_conv_blocks": 2,
"num_res_blocks": 13,
},
decoder_type="residual_conv_bn",
decoder_params={
"kernel_size": 4,
"dilations": 4 * [1, 2, 4, 8] + [1],
"num_conv_blocks": 2,
"num_res_blocks": 17,
},
out_channels=80,
hidden_channels=128,
positional_encoding=True,
detach_duration_predictor=True,
)
)
# multi-speaker settings
num_speakers: int = 0
speakers_file: str = None
use_speaker_embedding: bool = False
use_d_vector_file: bool = False
d_vector_file: str = False
d_vector_dim: int = 0
# optimizer parameters
optimizer: str = "Adam"
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
# loss params
spec_loss_type: str = "l1"
duration_loss_type: str = "huber"
use_ssim_loss: bool = False
ssim_loss_alpha: float = 1.0
dur_loss_alpha: float = 1.0
spec_loss_alpha: float = 1.0
aligner_loss_alpha: float = 1.0
binary_align_loss_alpha: float = 0.3
binary_loss_warmup_epochs: int = 150
# overrides
min_seq_len: int = 13
max_seq_len: int = 200
r: int = 1 # DO NOT CHANGE
# dataset configs
compute_f0: bool = False
f0_cache_path: str = None
# 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 __post_init__(self):
# Pass multi-speaker parameters to the model args as `model.init_multispeaker()` looks for it there.
if self.num_speakers > 0:
self.model_args.num_speakers = self.num_speakers
# speaker embedding settings
if self.use_speaker_embedding:
self.model_args.use_speaker_embedding = True
if self.speakers_file:
self.model_args.speakers_file = self.speakers_file
# d-vector settings
if self.use_d_vector_file:
self.model_args.use_d_vector_file = True
if self.d_vector_dim is not None and self.d_vector_dim > 0:
self.model_args.d_vector_dim = self.d_vector_dim
if self.d_vector_file:
self.model_args.d_vector_file = self.d_vector_file