Example #1
0
from TTS.tts.models.tacotron2 import Tacotron2
from TTS.tts.utils.speakers import SpeakerManager
from TTS.utils.audio import AudioProcessor

output_path = os.path.dirname(os.path.abspath(__file__))
dataset_config = BaseDatasetConfig(name="vctk",
                                   meta_file_train="",
                                   path=os.path.join(output_path, "../VCTK/"))

audio_config = BaseAudioConfig(
    sample_rate=22050,
    resample=
    False,  # Resample to 22050 Hz. It slows down training. Use `TTS/bin/resample.py` to pre-resample and set this False for faster training.
    do_trim_silence=True,
    trim_db=23.0,
    signal_norm=False,
    mel_fmin=0.0,
    mel_fmax=8000,
    spec_gain=1.0,
    log_func="np.log",
    preemphasis=0.0,
)

config = Tacotron2Config(  # This is the config that is saved for the future use
    audio=audio_config,
    batch_size=32,
    eval_batch_size=16,
    num_loader_workers=4,
    num_eval_loader_workers=4,
    run_eval=True,
    test_delay_epochs=-1,
Example #2
0
# download the dataset if not downloaded
if not os.path.exists(dataset_path):
    from TTS.utils.downloaders import download_vctk

    download_vctk(dataset_path)

# define dataset config
dataset_config = BaseDatasetConfig(name="vctk",
                                   meta_file_train="",
                                   path=dataset_path)

# define audio config
# ❗ resample the dataset externally using `TTS/bin/resample.py` and set `resample=False` for faster training
audio_config = BaseAudioConfig(sample_rate=22050,
                               resample=True,
                               do_trim_silence=True,
                               trim_db=23.0)

# define model config
config = GlowTTSConfig(
    batch_size=64,
    eval_batch_size=16,
    num_loader_workers=4,
    num_eval_loader_workers=4,
    precompute_num_workers=4,
    run_eval=True,
    test_delay_epochs=-1,
    epochs=1000,
    text_cleaner="phoneme_cleaners",
    use_phonemes=True,
    phoneme_language="en-us",
Example #3
0
# from TTS.tts.datasets.tokenizer import Tokenizer

output_path = os.path.dirname(os.path.abspath(__file__))

# init configs
dataset_config = BaseDatasetConfig(name="ljspeech",
                                   meta_file_train="metadata.csv",
                                   path=os.path.join(output_path,
                                                     "../LJSpeech-1.1/"))

audio_config = BaseAudioConfig(
    sample_rate=22050,
    do_trim_silence=True,
    trim_db=60.0,
    signal_norm=False,
    mel_fmin=0.0,
    mel_fmax=8000,
    spec_gain=1.0,
    log_func="np.log",
    ref_level_db=20,
    preemphasis=0.0,
)

config = Tacotron2Config(  # This is the config that is saved for the future use
    audio=audio_config,
    batch_size=64,
    eval_batch_size=16,
    num_loader_workers=4,
    num_eval_loader_workers=4,
    run_eval=True,
    test_delay_epochs=-1,
    ga_alpha=5.0,
Example #4
0
from TTS.config.shared_configs import BaseAudioConfig
from TTS.trainer import Trainer, TrainingArgs, init_training
from TTS.tts.configs import BaseDatasetConfig, VitsConfig

output_path = os.path.dirname(os.path.abspath(__file__))
dataset_config = BaseDatasetConfig(
    name="ljspeech", meta_file_train="metadata.csv", path=os.path.join(output_path, "../LJSpeech-1.1/")
)
audio_config = BaseAudioConfig(
    sample_rate=22050,
    win_length=1024,
    hop_length=256,
    num_mels=80,
    preemphasis=0.0,
    ref_level_db=20,
    log_func="np.log",
    do_trim_silence=True,
    trim_db=45,
    mel_fmin=0,
    mel_fmax=None,
    spec_gain=1.0,
    signal_norm=False,
    do_amp_to_db_linear=False,
)
config = VitsConfig(
    audio=audio_config,
    run_name="vits_ljspeech",
    batch_size=48,
    eval_batch_size=16,
    batch_group_size=5,
    num_loader_workers=4,
    num_eval_loader_workers=4,
from TTS.config.shared_configs import BaseAudioConfig
from TTS.speaker_encoder.speaker_encoder_config import SpeakerEncoderConfig

config_path = os.path.join(get_tests_output_path(), "test_model_config.json")
output_path = os.path.join(get_tests_output_path(), "train_outputs")

config = SpeakerEncoderConfig(
    batch_size=4,
    num_speakers_in_batch=1,
    num_utters_per_speaker=10,
    num_loader_workers=0,
    max_train_step=2,
    print_step=1,
    save_step=1,
    print_eval=True,
    audio=BaseAudioConfig(num_mels=40),
)
config.audio.do_trim_silence = True
config.audio.trim_db = 60
config.save_json(config_path)

# train the model for one epoch
command_train = (
    f"CUDA_VISIBLE_DEVICES='{get_device_id()}' python TTS/bin/train_encoder.py --config_path {config_path} "
    f"--coqpit.output_path {output_path} "
    "--coqpit.datasets.0.name ljspeech "
    "--coqpit.datasets.0.meta_file_train metadata.csv "
    "--coqpit.datasets.0.meta_file_val metadata.csv "
    "--coqpit.datasets.0.path tests/data/ljspeech ")
run_cli(command_train)
Example #6
0
output_path = os.path.dirname(os.path.abspath(__file__))

data_path = "/srv/data/"

# Using LJSpeech like dataset processing for the blizzard dataset
dataset_config = BaseDatasetConfig(name="ljspeech",
                                   meta_file_train="metadata.csv",
                                   path=data_path)

audio_config = BaseAudioConfig(
    sample_rate=24000,
    do_trim_silence=True,
    trim_db=60.0,
    signal_norm=True,
    mel_fmin=80.0,
    mel_fmax=12000,
    spec_gain=20.0,
    log_func="np.log10",
    ref_level_db=20,
    preemphasis=0.0,
    min_level_db=-100,
)

# Using the standard Capacitron config
capacitron_config = CapacitronVAEConfig(capacitron_VAE_loss_alpha=1.0)

config = TacotronConfig(
    run_name="Blizzard-Capacitron-T1",
    audio=audio_config,
    capacitron_vae=capacitron_config,
    use_capacitron_vae=True,