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March 22, 2023 20:55
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import os | |
import torch | |
from trainer import Trainer, TrainerArgs | |
from TTS.bin.compute_embeddings import compute_embeddings | |
from TTS.bin.resample import resample_files | |
from TTS.config.shared_configs import BaseDatasetConfig | |
from TTS.tts.configs.vits_config import VitsConfig | |
from TTS.tts.datasets import load_tts_samples | |
from TTS.tts.models.vits import CharactersConfig, Vits, VitsArgs, VitsAudioConfig | |
from TTS.utils.downloaders import download_vctk | |
torch.set_num_threads(24) | |
# pylint: disable=W0105 | |
""" | |
This recipe replicates the first experiment proposed in the YourTTS paper (https://arxiv.org/abs/2112.02418). | |
YourTTS model is based on the VITS model however it uses external speaker embeddings extracted from a pre-trained speaker encoder and has small architecture changes. | |
In addition, YourTTS can be trained in multilingual data, however, this recipe replicates the single language training using the VCTK dataset. | |
If you are interested in multilingual training, we have commented on parameters on the VitsArgs class instance that should be enabled for multilingual training. | |
In addition, you will need to add the extra datasets following the VCTK as an example. | |
""" | |
CURRENT_PATH = os.path.dirname(os.path.abspath(__file__)) | |
# Name of the run for the Trainer | |
RUN_NAME = "YourTTS-EN-VCTK-Plus-Stewart" | |
# Path where you want to save the models outputs (configs, checkpoints and tensorboard logs) | |
#OUT_PATH = os.path.dirname(os.path.abspath(__file__)) # "/raid/coqui/Checkpoints/original-YourTTS/" | |
OUT_PATH = "trained/" # "/raid/coqui/Checkpoints/original-YourTTS/" | |
# If you want to do transfer learning and speedup your training you can set here the path to the original YourTTS model | |
RESTORE_PATH = None # "/root/.local/share/tts/tts_models--multilingual--multi-dataset--your_tts/model_file.pth" | |
#RESTORE_PATH = "tts_models--multilingual--multi-dataset--your_tts/model_file.pth" | |
# This paramter is usefull to debug, it skips the training epochs and just do the evaluation and produce the test sentences | |
SKIP_TRAIN_EPOCH = False | |
# Set here the batch size to be used in training and evaluation | |
BATCH_SIZE = 32 | |
# Training Sampling rate and the target sampling rate for resampling the downloaded dataset (Note: If you change this you might need to redownload the dataset !!) | |
# Note: If you add new datasets, please make sure that the dataset sampling rate and this parameter are matching, otherwise resample your audios | |
SAMPLE_RATE = 48000 | |
# Max audio length in seconds to be used in training (every audio bigger than it will be ignored) | |
MAX_AUDIO_LEN_IN_SECONDS = 12 | |
### Download VCTK dataset | |
VCTK_DOWNLOAD_PATH = os.path.join(CURRENT_PATH, "VCTK") | |
# Define the number of threads used during the audio resampling | |
NUM_RESAMPLE_THREADS = 10 | |
# Check if VCTK dataset is not already downloaded, if not download it | |
#if not os.path.exists(VCTK_DOWNLOAD_PATH): | |
# print(">>> Downloading VCTK dataset:") | |
# download_vctk(VCTK_DOWNLOAD_PATH) | |
# resample_files(VCTK_DOWNLOAD_PATH, SAMPLE_RATE, file_ext="flac", n_jobs=NUM_RESAMPLE_THREADS) | |
# init configs | |
stewart_config = BaseDatasetConfig( | |
formatter="ljspeech", | |
dataset_name="stewart", | |
meta_file_train="metadata.csv", | |
path="stewart/", | |
language="en", | |
) | |
vctk_config = BaseDatasetConfig( | |
formatter="vctk", | |
dataset_name="vctk", | |
meta_file_train="", | |
meta_file_val="", | |
path=VCTK_DOWNLOAD_PATH, | |
language="en", | |
ignored_speakers=[ | |
"p261", | |
"p225", | |
"p294", | |
"p347", | |
"p238", | |
"p234", | |
"p248", | |
"p335", | |
"p245", | |
"p326", | |
"p302", | |
], # Ignore the test speakers to full replicate the paper experiment | |
) | |
# Add here all datasets configs, in our case we just want to train with the VCTK dataset then we need to add just VCTK. Note: If you want to added new datasets just added they here and it will automatically compute the speaker embeddings (d-vectors) for this new dataset :) | |
DATASETS_CONFIG_LIST = [stewart_config] | |
### Extract speaker embeddings | |
SPEAKER_ENCODER_CHECKPOINT_PATH = ( | |
"https://github.com/coqui-ai/TTS/releases/download/speaker_encoder_model/model_se.pth.tar" | |
) | |
#SPEAKER_ENCODER_CHECKPOINT_PATH = "tts_models--multilingual--multi-dataset--your_tts/model_se.pth" | |
SPEAKER_ENCODER_CONFIG_PATH = "https://github.com/coqui-ai/TTS/releases/download/speaker_encoder_model/config_se.json" | |
#SPEAKER_ENCODER_CONFIG_PATH = "tts_models--multilingual--multi-dataset--your_tts/config_se.json" | |
D_VECTOR_FILES = [] # List of speaker embeddings/d-vectors to be used during the training | |
# Iterates all the dataset configs checking if the speakers embeddings are already computated, if not compute it | |
for dataset_conf in DATASETS_CONFIG_LIST: | |
# Check if the embeddings weren't already computed, if not compute it | |
embeddings_file = os.path.join(dataset_conf.path, "speakers.pth") | |
if not os.path.isfile(embeddings_file): | |
print(f">>> Computing the speaker embeddings for the {dataset_conf.dataset_name} dataset") | |
compute_embeddings( | |
SPEAKER_ENCODER_CHECKPOINT_PATH, | |
SPEAKER_ENCODER_CONFIG_PATH, | |
embeddings_file, | |
old_spakers_file=None, | |
config_dataset_path=None, | |
formatter_name=dataset_conf.formatter, | |
dataset_name=dataset_conf.dataset_name, | |
dataset_path=dataset_conf.path, | |
meta_file_train=dataset_conf.meta_file_train, | |
meta_file_val=dataset_conf.meta_file_val, | |
disable_cuda=False, | |
no_eval=False, | |
) | |
D_VECTOR_FILES.append(embeddings_file) | |
# Audio config used in training. | |
audio_config = VitsAudioConfig( | |
sample_rate=SAMPLE_RATE, | |
hop_length=256, | |
win_length=1024, | |
fft_size=1024, | |
mel_fmin=0.0, | |
mel_fmax=None, | |
num_mels=80, | |
) | |
# Init VITSArgs setting the arguments that is needed for the YourTTS model | |
model_args = VitsArgs( | |
d_vector_file=D_VECTOR_FILES, | |
use_d_vector_file=True, | |
d_vector_dim=512, | |
num_layers_text_encoder=10, | |
speaker_encoder_model_path=SPEAKER_ENCODER_CHECKPOINT_PATH, | |
speaker_encoder_config_path=SPEAKER_ENCODER_CONFIG_PATH, | |
resblock_type_decoder="2", # On the paper, we accidentally trained the YourTTS using ResNet blocks type 2, if you like you can use the ResNet blocks type 1 like the VITS model | |
# Usefull parameters to enable the Speaker Consistency Loss (SCL) discribed in the paper | |
# use_speaker_encoder_as_loss=True, | |
# Usefull parameters to the enable multilingual training | |
# use_language_embedding=True, | |
# embedded_language_dim=4, | |
) | |
# General training config, here you can change the batch size and others usefull parameters | |
config = VitsConfig( | |
output_path=OUT_PATH, | |
model_args=model_args, | |
run_name=RUN_NAME, | |
project_name="YourTTS", | |
run_description=""" | |
- Original YourTTS trained using VCTK dataset | |
""", | |
dashboard_logger="tensorboard", | |
logger_uri=None, | |
audio=audio_config, | |
batch_size=BATCH_SIZE, | |
batch_group_size=48, | |
eval_batch_size=BATCH_SIZE, | |
num_loader_workers=8, | |
eval_split_max_size=256, | |
print_step=50, | |
plot_step=100, | |
log_model_step=1000, | |
save_step=5000, | |
save_n_checkpoints=2, | |
save_checkpoints=True, | |
target_loss="loss_1", | |
print_eval=False, | |
use_phonemes=False, | |
phonemizer="espeak", | |
phoneme_language="en", | |
compute_input_seq_cache=True, | |
add_blank=True, | |
text_cleaner="multilingual_cleaners", | |
characters=CharactersConfig( | |
characters_class="TTS.tts.models.vits.VitsCharacters", | |
pad="_", | |
eos="&", | |
bos="*", | |
blank=None, | |
characters="ABCDEFGHIJKLMNOPQRSTUVWXYZabcdefghijklmnopqrstuvwxyz\u00af\u00b7\u00df\u00e0\u00e1\u00e2\u00e3\u00e4\u00e6\u00e7\u00e8\u00e9\u00ea\u00eb\u00ec\u00ed\u00ee\u00ef\u00f1\u00f2\u00f3\u00f4\u00f5\u00f6\u00f9\u00fa\u00fb\u00fc\u00ff\u0101\u0105\u0107\u0113\u0119\u011b\u012b\u0131\u0142\u0144\u014d\u0151\u0153\u015b\u016b\u0171\u017a\u017c\u01ce\u01d0\u01d2\u01d4\u0430\u0431\u0432\u0433\u0434\u0435\u0436\u0437\u0438\u0439\u043a\u043b\u043c\u043d\u043e\u043f\u0440\u0441\u0442\u0443\u0444\u0445\u0446\u0447\u0448\u0449\u044a\u044b\u044c\u044d\u044e\u044f\u0451\u0454\u0456\u0457\u0491\u2013!'(),-.:;? ", | |
punctuations="!'(),-.:;? ", | |
phonemes="", | |
is_unique=True, | |
is_sorted=True, | |
), | |
phoneme_cache_path=None, | |
precompute_num_workers=12, | |
start_by_longest=True, | |
datasets=DATASETS_CONFIG_LIST, | |
cudnn_benchmark=False, | |
max_audio_len=SAMPLE_RATE * MAX_AUDIO_LEN_IN_SECONDS, | |
mixed_precision=False, | |
test_sentences=[ | |
[ | |
"It took me quite a long time to develop a voice, and now that I have it I'm not going to be silent.", | |
"VCTK_p277", | |
None, | |
"en", | |
], | |
[ | |
"Be a voice, not an echo.", | |
"VCTK_p239", | |
None, | |
"en", | |
], | |
[ | |
"I'm sorry Dave. I'm afraid I can't do that.", | |
"VCTK_p258", | |
None, | |
"en", | |
], | |
[ | |
"This cake is great. It's so delicious and moist.", | |
"VCTK_p244", | |
None, | |
"en", | |
], | |
[ | |
"Prior to November 22, 1963.", | |
"VCTK_p305", | |
None, | |
"en", | |
], | |
], | |
# Enable the weighted sampler | |
use_weighted_sampler=True, | |
# Ensures that all speakers are seen in the training batch equally no matter how many samples each speaker has | |
weighted_sampler_attrs={"speaker_name": 1.0}, | |
weighted_sampler_multipliers={}, | |
# It defines the Speaker Consistency Loss (SCL) α to 9 like the paper | |
speaker_encoder_loss_alpha=9.0, | |
) | |
# Load all the datasets samples and split traning and evaluation sets | |
train_samples, eval_samples = load_tts_samples( | |
config.datasets, | |
eval_split=True, | |
eval_split_max_size=config.eval_split_max_size, | |
eval_split_size=config.eval_split_size, | |
) | |
# Init the model | |
model = Vits.init_from_config(config) | |
# Init the trainer and 🚀 | |
trainer = Trainer( | |
TrainerArgs(restore_path=RESTORE_PATH, skip_train_epoch=SKIP_TRAIN_EPOCH), | |
config, | |
output_path=OUT_PATH, | |
model=model, | |
train_samples=train_samples, | |
eval_samples=eval_samples, | |
) | |
trainer.fit() |
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