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import os |
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import time |
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from typing import List |
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|
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import numpy as np |
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import pysbd |
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import torch |
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from torch import nn |
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|
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from TTS.config import load_config |
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from TTS.tts.configs.vits_config import VitsConfig |
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from TTS.tts.models import setup_model as setup_tts_model |
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from TTS.tts.models.vits import Vits |
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from TTS.tts.utils.synthesis import synthesis, transfer_voice, trim_silence |
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from TTS.utils.audio import AudioProcessor |
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from TTS.utils.audio.numpy_transforms import save_wav |
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from TTS.vc.models import setup_model as setup_vc_model |
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from TTS.vocoder.models import setup_model as setup_vocoder_model |
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from TTS.vocoder.utils.generic_utils import interpolate_vocoder_input |
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|
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class Synthesizer(nn.Module): |
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def __init__( |
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self, |
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tts_checkpoint: str = "", |
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tts_config_path: str = "", |
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tts_speakers_file: str = "", |
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tts_languages_file: str = "", |
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vocoder_checkpoint: str = "", |
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vocoder_config: str = "", |
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encoder_checkpoint: str = "", |
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encoder_config: str = "", |
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vc_checkpoint: str = "", |
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vc_config: str = "", |
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model_dir: str = "", |
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voice_dir: str = None, |
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use_cuda: bool = False, |
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) -> None: |
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"""General 🐸 TTS interface for inference. It takes a tts and a vocoder |
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model and synthesize speech from the provided text. |
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|
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The text is divided into a list of sentences using `pysbd` and synthesize |
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speech on each sentence separately. |
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|
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If you have certain special characters in your text, you need to handle |
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them before providing the text to Synthesizer. |
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|
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TODO: set the segmenter based on the source language |
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|
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Args: |
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tts_checkpoint (str, optional): path to the tts model file. |
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tts_config_path (str, optional): path to the tts config file. |
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vocoder_checkpoint (str, optional): path to the vocoder model file. Defaults to None. |
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vocoder_config (str, optional): path to the vocoder config file. Defaults to None. |
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encoder_checkpoint (str, optional): path to the speaker encoder model file. Defaults to `""`, |
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encoder_config (str, optional): path to the speaker encoder config file. Defaults to `""`, |
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vc_checkpoint (str, optional): path to the voice conversion model file. Defaults to `""`, |
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vc_config (str, optional): path to the voice conversion config file. Defaults to `""`, |
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use_cuda (bool, optional): enable/disable cuda. Defaults to False. |
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""" |
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super().__init__() |
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self.tts_checkpoint = tts_checkpoint |
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self.tts_config_path = tts_config_path |
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self.tts_speakers_file = tts_speakers_file |
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self.tts_languages_file = tts_languages_file |
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self.vocoder_checkpoint = vocoder_checkpoint |
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self.vocoder_config = vocoder_config |
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self.encoder_checkpoint = encoder_checkpoint |
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self.encoder_config = encoder_config |
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self.vc_checkpoint = vc_checkpoint |
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self.vc_config = vc_config |
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self.use_cuda = use_cuda |
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|
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self.tts_model = None |
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self.vocoder_model = None |
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self.vc_model = None |
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self.speaker_manager = None |
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self.tts_speakers = {} |
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self.language_manager = None |
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self.num_languages = 0 |
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self.tts_languages = {} |
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self.d_vector_dim = 0 |
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self.seg = self._get_segmenter("en") |
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self.use_cuda = use_cuda |
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self.voice_dir = voice_dir |
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if self.use_cuda: |
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assert torch.cuda.is_available(), "CUDA is not availabe on this machine." |
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|
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if tts_checkpoint: |
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self._load_tts(tts_checkpoint, tts_config_path, use_cuda) |
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self.output_sample_rate = self.tts_config.audio["sample_rate"] |
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|
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if vocoder_checkpoint: |
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self._load_vocoder(vocoder_checkpoint, vocoder_config, use_cuda) |
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self.output_sample_rate = self.vocoder_config.audio["sample_rate"] |
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|
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if vc_checkpoint: |
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self._load_vc(vc_checkpoint, vc_config, use_cuda) |
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self.output_sample_rate = self.vc_config.audio["output_sample_rate"] |
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|
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if model_dir: |
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if "fairseq" in model_dir: |
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self._load_fairseq_from_dir(model_dir, use_cuda) |
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self.output_sample_rate = self.tts_config.audio["sample_rate"] |
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else: |
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self._load_tts_from_dir(model_dir, use_cuda) |
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self.output_sample_rate = self.tts_config.audio["output_sample_rate"] |
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|
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@staticmethod |
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def _get_segmenter(lang: str): |
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"""get the sentence segmenter for the given language. |
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Args: |
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lang (str): target language code. |
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Returns: |
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[type]: [description] |
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""" |
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return pysbd.Segmenter(language=lang, clean=True) |
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def _load_vc(self, vc_checkpoint: str, vc_config_path: str, use_cuda: bool) -> None: |
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"""Load the voice conversion model. |
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|
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1. Load the model config. |
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2. Init the model from the config. |
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3. Load the model weights. |
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4. Move the model to the GPU if CUDA is enabled. |
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|
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Args: |
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vc_checkpoint (str): path to the model checkpoint. |
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tts_config_path (str): path to the model config file. |
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use_cuda (bool): enable/disable CUDA use. |
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""" |
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self.vc_config = load_config(vc_config_path) |
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self.vc_model = setup_vc_model(config=self.vc_config) |
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self.vc_model.load_checkpoint(self.vc_config, vc_checkpoint) |
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if use_cuda: |
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self.vc_model.cuda() |
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|
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def _load_fairseq_from_dir(self, model_dir: str, use_cuda: bool) -> None: |
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"""Load the fairseq model from a directory. |
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|
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We assume it is VITS and the model knows how to load itself from the directory and there is a config.json file in the directory. |
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""" |
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self.tts_config = VitsConfig() |
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self.tts_model = Vits.init_from_config(self.tts_config) |
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self.tts_model.load_fairseq_checkpoint(self.tts_config, checkpoint_dir=model_dir, eval=True) |
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self.tts_config = self.tts_model.config |
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if use_cuda: |
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self.tts_model.cuda() |
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|
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def _load_tts_from_dir(self, model_dir: str, use_cuda: bool) -> None: |
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"""Load the TTS model from a directory. |
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We assume the model knows how to load itself from the directory and there is a config.json file in the directory. |
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""" |
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config = load_config(os.path.join(model_dir, "config.json")) |
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self.tts_config = config |
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self.tts_model = setup_tts_model(config) |
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self.tts_model.load_checkpoint(config, checkpoint_dir=model_dir, eval=True) |
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if use_cuda: |
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self.tts_model.cuda() |
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|
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def _load_tts(self, tts_checkpoint: str, tts_config_path: str, use_cuda: bool) -> None: |
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"""Load the TTS model. |
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|
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1. Load the model config. |
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2. Init the model from the config. |
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3. Load the model weights. |
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4. Move the model to the GPU if CUDA is enabled. |
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5. Init the speaker manager in the model. |
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|
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Args: |
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tts_checkpoint (str): path to the model checkpoint. |
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tts_config_path (str): path to the model config file. |
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use_cuda (bool): enable/disable CUDA use. |
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""" |
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self.tts_config = load_config(tts_config_path) |
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if self.tts_config["use_phonemes"] and self.tts_config["phonemizer"] is None: |
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raise ValueError("Phonemizer is not defined in the TTS config.") |
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self.tts_model = setup_tts_model(config=self.tts_config) |
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|
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if not self.encoder_checkpoint: |
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self._set_speaker_encoder_paths_from_tts_config() |
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|
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self.tts_model.load_checkpoint(self.tts_config, tts_checkpoint, eval=True) |
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if use_cuda: |
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self.tts_model.cuda() |
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|
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if self.encoder_checkpoint and hasattr(self.tts_model, "speaker_manager"): |
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self.tts_model.speaker_manager.init_encoder(self.encoder_checkpoint, self.encoder_config, use_cuda) |
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|
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def _set_speaker_encoder_paths_from_tts_config(self): |
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"""Set the encoder paths from the tts model config for models with speaker encoders.""" |
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if hasattr(self.tts_config, "model_args") and hasattr( |
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self.tts_config.model_args, "speaker_encoder_config_path" |
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): |
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self.encoder_checkpoint = self.tts_config.model_args.speaker_encoder_model_path |
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self.encoder_config = self.tts_config.model_args.speaker_encoder_config_path |
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|
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def _load_vocoder(self, model_file: str, model_config: str, use_cuda: bool) -> None: |
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"""Load the vocoder model. |
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|
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1. Load the vocoder config. |
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2. Init the AudioProcessor for the vocoder. |
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3. Init the vocoder model from the config. |
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4. Move the model to the GPU if CUDA is enabled. |
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|
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Args: |
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model_file (str): path to the model checkpoint. |
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model_config (str): path to the model config file. |
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use_cuda (bool): enable/disable CUDA use. |
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""" |
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self.vocoder_config = load_config(model_config) |
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self.vocoder_ap = AudioProcessor(verbose=False, **self.vocoder_config.audio) |
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self.vocoder_model = setup_vocoder_model(self.vocoder_config) |
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self.vocoder_model.load_checkpoint(self.vocoder_config, model_file, eval=True) |
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if use_cuda: |
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self.vocoder_model.cuda() |
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|
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def split_into_sentences(self, text) -> List[str]: |
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"""Split give text into sentences. |
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|
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Args: |
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text (str): input text in string format. |
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Returns: |
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List[str]: list of sentences. |
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""" |
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return self.seg.segment(text) |
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def save_wav(self, wav: List[int], path: str, pipe_out=None) -> None: |
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"""Save the waveform as a file. |
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|
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Args: |
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wav (List[int]): waveform as a list of values. |
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path (str): output path to save the waveform. |
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pipe_out (BytesIO, optional): Flag to stdout the generated TTS wav file for shell pipe. |
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""" |
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|
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if torch.is_tensor(wav): |
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wav = wav.cpu().numpy() |
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if isinstance(wav, list): |
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wav = np.array(wav) |
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save_wav(wav=wav, path=path, sample_rate=self.output_sample_rate, pipe_out=pipe_out) |
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|
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def voice_conversion(self, source_wav: str, target_wav: str) -> List[int]: |
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output_wav = self.vc_model.voice_conversion(source_wav, target_wav) |
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return output_wav |
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|
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def tts( |
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self, |
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text: str = "", |
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speaker_name: str = "", |
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language_name: str = "", |
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speaker_wav=None, |
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style_wav=None, |
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style_text=None, |
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reference_wav=None, |
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reference_speaker_name=None, |
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**kwargs, |
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) -> List[int]: |
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"""🐸 TTS magic. Run all the models and generate speech. |
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|
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Args: |
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text (str): input text. |
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speaker_name (str, optional): speaker id for multi-speaker models. Defaults to "". |
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language_name (str, optional): language id for multi-language models. Defaults to "". |
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speaker_wav (Union[str, List[str]], optional): path to the speaker wav for voice cloning. Defaults to None. |
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style_wav ([type], optional): style waveform for GST. Defaults to None. |
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style_text ([type], optional): transcription of style_wav for Capacitron. Defaults to None. |
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reference_wav ([type], optional): reference waveform for voice conversion. Defaults to None. |
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reference_speaker_name ([type], optional): speaker id of reference waveform. Defaults to None. |
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Returns: |
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List[int]: [description] |
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""" |
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start_time = time.time() |
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wavs = [] |
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|
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if not text and not reference_wav: |
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raise ValueError( |
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"You need to define either `text` (for sythesis) or a `reference_wav` (for voice conversion) to use the Coqui TTS API." |
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) |
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|
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if text: |
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sens = self.split_into_sentences(text) |
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print(" > Text splitted to sentences.") |
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print(sens) |
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|
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if "voice_dir" in kwargs: |
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self.voice_dir = kwargs["voice_dir"] |
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kwargs.pop("voice_dir") |
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speaker_embedding = None |
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speaker_id = None |
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if self.tts_speakers_file or hasattr(self.tts_model.speaker_manager, "name_to_id"): |
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if speaker_name and isinstance(speaker_name, str): |
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if self.tts_config.use_d_vector_file: |
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|
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speaker_embedding = self.tts_model.speaker_manager.get_mean_embedding( |
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speaker_name, num_samples=None, randomize=False |
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) |
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speaker_embedding = np.array(speaker_embedding)[None, :] |
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else: |
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|
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speaker_id = self.tts_model.speaker_manager.name_to_id[speaker_name] |
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|
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elif len(self.tts_model.speaker_manager.name_to_id) == 1: |
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speaker_id = list(self.tts_model.speaker_manager.name_to_id.values())[0] |
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elif not speaker_name and not speaker_wav: |
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raise ValueError( |
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" [!] Looks like you are using a multi-speaker model. " |
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"You need to define either a `speaker_idx` or a `speaker_wav` to use a multi-speaker model." |
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) |
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else: |
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speaker_embedding = None |
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else: |
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if speaker_name and self.voice_dir is None: |
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raise ValueError( |
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f" [!] Missing speakers.json file path for selecting speaker {speaker_name}." |
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"Define path for speaker.json if it is a multi-speaker model or remove defined speaker idx. " |
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) |
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|
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language_id = None |
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if self.tts_languages_file or ( |
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hasattr(self.tts_model, "language_manager") and self.tts_model.language_manager is not None |
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): |
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if len(self.tts_model.language_manager.name_to_id) == 1: |
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language_id = list(self.tts_model.language_manager.name_to_id.values())[0] |
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|
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elif language_name and isinstance(language_name, str): |
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try: |
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language_id = self.tts_model.language_manager.name_to_id[language_name] |
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except KeyError as e: |
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raise ValueError( |
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f" [!] Looks like you use a multi-lingual model. " |
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f"Language {language_name} is not in the available languages: " |
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f"{self.tts_model.language_manager.name_to_id.keys()}." |
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) from e |
|
|
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elif not language_name: |
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raise ValueError( |
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" [!] Look like you use a multi-lingual model. " |
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"You need to define either a `language_name` or a `style_wav` to use a multi-lingual model." |
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) |
|
|
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else: |
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raise ValueError( |
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f" [!] Missing language_ids.json file path for selecting language {language_name}." |
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"Define path for language_ids.json if it is a multi-lingual model or remove defined language idx. " |
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) |
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|
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if speaker_wav is not None and self.tts_model.speaker_manager is not None: |
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speaker_embedding = self.tts_model.speaker_manager.compute_embedding_from_clip(speaker_wav) |
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|
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vocoder_device = "cpu" |
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use_gl = self.vocoder_model is None |
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if not use_gl: |
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vocoder_device = next(self.vocoder_model.parameters()).device |
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if self.use_cuda: |
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vocoder_device = "cuda" |
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|
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if not reference_wav: |
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for sen in sens: |
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if hasattr(self.tts_model, "synthesize"): |
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outputs = self.tts_model.synthesize( |
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text=sen, |
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config=self.tts_config, |
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speaker_id=speaker_name, |
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voice_dirs=self.voice_dir, |
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d_vector=speaker_embedding, |
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speaker_wav=speaker_wav, |
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language=language_name, |
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**kwargs, |
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) |
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else: |
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|
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outputs = synthesis( |
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model=self.tts_model, |
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text=sen, |
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CONFIG=self.tts_config, |
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use_cuda=self.use_cuda, |
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speaker_id=speaker_id, |
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style_wav=style_wav, |
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style_text=style_text, |
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use_griffin_lim=use_gl, |
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d_vector=speaker_embedding, |
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language_id=language_id, |
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) |
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waveform = outputs["wav"] |
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if not use_gl: |
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mel_postnet_spec = outputs["outputs"]["model_outputs"][0].detach().cpu().numpy() |
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|
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mel_postnet_spec = self.tts_model.ap.denormalize(mel_postnet_spec.T).T |
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|
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vocoder_input = self.vocoder_ap.normalize(mel_postnet_spec.T) |
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|
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scale_factor = [ |
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1, |
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self.vocoder_config["audio"]["sample_rate"] / self.tts_model.ap.sample_rate, |
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] |
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if scale_factor[1] != 1: |
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print(" > interpolating tts model output.") |
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vocoder_input = interpolate_vocoder_input(scale_factor, vocoder_input) |
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else: |
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vocoder_input = torch.tensor(vocoder_input).unsqueeze(0) |
|
|
|
|
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waveform = self.vocoder_model.inference(vocoder_input.to(vocoder_device)) |
|
if torch.is_tensor(waveform) and waveform.device != torch.device("cpu") and not use_gl: |
|
waveform = waveform.cpu() |
|
if not use_gl: |
|
waveform = waveform.numpy() |
|
waveform = waveform.squeeze() |
|
|
|
|
|
if "do_trim_silence" in self.tts_config.audio and self.tts_config.audio["do_trim_silence"]: |
|
waveform = trim_silence(waveform, self.tts_model.ap) |
|
|
|
wavs += list(waveform) |
|
wavs += [0] * 10000 |
|
else: |
|
|
|
reference_speaker_embedding = None |
|
reference_speaker_id = None |
|
if self.tts_speakers_file or hasattr(self.tts_model.speaker_manager, "name_to_id"): |
|
if reference_speaker_name and isinstance(reference_speaker_name, str): |
|
if self.tts_config.use_d_vector_file: |
|
|
|
reference_speaker_embedding = self.tts_model.speaker_manager.get_embeddings_by_name( |
|
reference_speaker_name |
|
)[0] |
|
reference_speaker_embedding = np.array(reference_speaker_embedding)[ |
|
None, : |
|
] |
|
else: |
|
|
|
reference_speaker_id = self.tts_model.speaker_manager.name_to_id[reference_speaker_name] |
|
else: |
|
reference_speaker_embedding = self.tts_model.speaker_manager.compute_embedding_from_clip( |
|
reference_wav |
|
) |
|
outputs = transfer_voice( |
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model=self.tts_model, |
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CONFIG=self.tts_config, |
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use_cuda=self.use_cuda, |
|
reference_wav=reference_wav, |
|
speaker_id=speaker_id, |
|
d_vector=speaker_embedding, |
|
use_griffin_lim=use_gl, |
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reference_speaker_id=reference_speaker_id, |
|
reference_d_vector=reference_speaker_embedding, |
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) |
|
waveform = outputs |
|
if not use_gl: |
|
mel_postnet_spec = outputs[0].detach().cpu().numpy() |
|
|
|
mel_postnet_spec = self.tts_model.ap.denormalize(mel_postnet_spec.T).T |
|
|
|
vocoder_input = self.vocoder_ap.normalize(mel_postnet_spec.T) |
|
|
|
scale_factor = [ |
|
1, |
|
self.vocoder_config["audio"]["sample_rate"] / self.tts_model.ap.sample_rate, |
|
] |
|
if scale_factor[1] != 1: |
|
print(" > interpolating tts model output.") |
|
vocoder_input = interpolate_vocoder_input(scale_factor, vocoder_input) |
|
else: |
|
vocoder_input = torch.tensor(vocoder_input).unsqueeze(0) |
|
|
|
|
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waveform = self.vocoder_model.inference(vocoder_input.to(vocoder_device)) |
|
if torch.is_tensor(waveform) and waveform.device != torch.device("cpu"): |
|
waveform = waveform.cpu() |
|
if not use_gl: |
|
waveform = waveform.numpy() |
|
wavs = waveform.squeeze() |
|
|
|
|
|
process_time = time.time() - start_time |
|
audio_time = len(wavs) / self.tts_config.audio["sample_rate"] |
|
print(f" > Processing time: {process_time}") |
|
print(f" > Real-time factor: {process_time / audio_time}") |
|
return wavs |
|
|