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ⓍTTS

ⓍTTS is a super cool Text-to-Speech model that lets you clone voices in different languages by using just a quick 3-second audio clip. Built on the 🐢Tortoise, ⓍTTS has important model changes that make cross-language voice cloning and multi-lingual speech generation super easy. There is no need for an excessive amount of training data that spans countless hours.

This is the same model that powers Coqui Studio, and Coqui API, however we apply a few tricks to make it faster and support streaming inference.

Features

  • Voice cloning.
  • Cross-language voice cloning.
  • Multi-lingual speech generation.
  • 24khz sampling rate.
  • Streaming inference with < 200ms latency. (See Streaming inference)
  • Fine-tuning support. (See Training)

Updates with v2

  • Improved voice cloning.
  • Voices can be cloned with a single audio file or multiple audio files, without any effect on the runtime.
  • 2 new languages: Hungarian and Korean.
  • Across the board quality improvements.

Code

Current implementation only supports inference.

Languages

As of now, XTTS-v2 supports 16 languages: English (en), Spanish (es), French (fr), German (de), Italian (it), Portuguese (pt), Polish (pl), Turkish (tr), Russian (ru), Dutch (nl), Czech (cs), Arabic (ar), Chinese (zh-cn), Japanese (ja), Hungarian (hu) and Korean (ko).

Stay tuned as we continue to add support for more languages. If you have any language requests, please feel free to reach out.

License

This model is licensed under Coqui Public Model License.

Contact

Come and join in our 🐸Community. We're active on Discord and Twitter. You can also mail us at [email protected].

Inference

🐸TTS API

Single reference
from TTS.api import TTS
tts = TTS("tts_models/multilingual/multi-dataset/xtts_v2", gpu=True)

# generate speech by cloning a voice using default settings
tts.tts_to_file(text="It took me quite a long time to develop a voice, and now that I have it I'm not going to be silent.",
                file_path="output.wav",
                speaker_wav=["/path/to/target/speaker.wav"],
                language="en")
Multiple references
from TTS.api import TTS
tts = TTS("tts_models/multilingual/multi-dataset/xtts_v2", gpu=True)

# generate speech by cloning a voice using default settings
tts.tts_to_file(text="It took me quite a long time to develop a voice, and now that I have it I'm not going to be silent.",
                file_path="output.wav",
                speaker_wav=["/path/to/target/speaker.wav", "/path/to/target/speaker_2.wav", "/path/to/target/speaker_3.wav"],
                language="en")

🐸TTS Command line

Single reference
 tts --model_name tts_models/multilingual/multi-dataset/xtts_v2 \
     --text "Bugün okula gitmek istemiyorum." \
     --speaker_wav /path/to/target/speaker.wav \
     --language_idx tr \
     --use_cuda true
Multiple references
 tts --model_name tts_models/multilingual/multi-dataset/xtts_v2 \
     --text "Bugün okula gitmek istemiyorum." \
     --speaker_wav /path/to/target/speaker.wav /path/to/target/speaker_2.wav /path/to/target/speaker_3.wav \
     --language_idx tr \
     --use_cuda true

or for all wav files in a directory you can use:

 tts --model_name tts_models/multilingual/multi-dataset/xtts_v2 \
     --text "Bugün okula gitmek istemiyorum." \
     --speaker_wav /path/to/target/*.wav \
     --language_idx tr \
     --use_cuda true

model directly

If you want to be able to run with use_deepspeed=True and enjoy the speedup, you need to install deepspeed first.

pip install deepspeed==0.8.3
import os
import torch
import torchaudio
from TTS.tts.configs.xtts_config import XttsConfig
from TTS.tts.models.xtts import Xtts

print("Loading model...")
config = XttsConfig()
config.load_json("/path/to/xtts/config.json")
model = Xtts.init_from_config(config)
model.load_checkpoint(config, checkpoint_dir="/path/to/xtts/", use_deepspeed=True)
model.cuda()

print("Computing speaker latents...")
gpt_cond_latent, speaker_embedding = model.get_conditioning_latents(audio_path=["reference.wav"])

print("Inference...")
out = model.inference(
    "It took me quite a long time to develop a voice and now that I have it I am not going to be silent.",
    "en",
    gpt_cond_latent,
    speaker_embedding,
    temperature=0.7, # Add custom parameters here
)
torchaudio.save("xtts.wav", torch.tensor(out["wav"]).unsqueeze(0), 24000)

streaming inference

Here the goal is to stream the audio as it is being generated. This is useful for real-time applications. Streaming inference is typically slower than regular inference, but it allows to get a first chunk of audio faster.

import os
import time
import torch
import torchaudio
from TTS.tts.configs.xtts_config import XttsConfig
from TTS.tts.models.xtts import Xtts

print("Loading model...")
config = XttsConfig()
config.load_json("/path/to/xtts/config.json")
model = Xtts.init_from_config(config)
model.load_checkpoint(config, checkpoint_dir="/path/to/xtts/", use_deepspeed=True)
model.cuda()

print("Computing speaker latents...")
gpt_cond_latent, speaker_embedding = model.get_conditioning_latents(audio_path=["reference.wav"])

print("Inference...")
t0 = time.time()
chunks = model.inference_stream(
    "It took me quite a long time to develop a voice and now that I have it I am not going to be silent.",
    "en",
    gpt_cond_latent,
    speaker_embedding
)

wav_chuncks = []
for i, chunk in enumerate(chunks):
    if i == 0:
        print(f"Time to first chunck: {time.time() - t0}")
    print(f"Received chunk {i} of audio length {chunk.shape[-1]}")
    wav_chuncks.append(chunk)
wav = torch.cat(wav_chuncks, dim=0)
torchaudio.save("xtts_streaming.wav", wav.squeeze().unsqueeze(0).cpu(), 24000)

Training

A recipe for XTTS_v2 GPT encoder training using LJSpeech dataset is available at https://github.com/coqui-ai/TTS/tree/dev/recipes/ljspeech/xtts_v1/train_gpt_xtts.py

You need to change the fields of the BaseDatasetConfig to match your dataset and then update GPTArgs and GPTTrainerConfig fields as you need. By default, it will use the same parameters that XTTS v1.1 model was trained with. To speed up the model convergence, as default, it will also download the XTTS v1.1 checkpoint and load it.

After training you can do inference following the code bellow.

import os
import torch
import torchaudio
from TTS.tts.configs.xtts_config import XttsConfig
from TTS.tts.models.xtts import Xtts

# Add here the xtts_config path
CONFIG_PATH = "recipes/ljspeech/xtts_v1/run/training/GPT_XTTS_LJSpeech_FT-October-23-2023_10+36AM-653f2e75/config.json"
# Add here the vocab file that you have used to train the model
TOKENIZER_PATH = "recipes/ljspeech/xtts_v1/run/training/XTTS_v2_original_model_files/vocab.json"
# Add here the checkpoint that you want to do inference with
XTTS_CHECKPOINT = "recipes/ljspeech/xtts_v1/run/training/GPT_XTTS_LJSpeech_FT/best_model.pth"
# Add here the speaker reference
SPEAKER_REFERENCE = "LjSpeech_reference.wav"

# output wav path
OUTPUT_WAV_PATH = "xtts-ft.wav"

print("Loading model...")
config = XttsConfig()
config.load_json(CONFIG_PATH)
model = Xtts.init_from_config(config)
model.load_checkpoint(config, checkpoint_path=XTTS_CHECKPOINT, vocab_path=TOKENIZER_PATH, use_deepspeed=False)
model.cuda()

print("Computing speaker latents...")
gpt_cond_latent, speaker_embedding = model.get_conditioning_latents(audio_path=[SPEAKER_REFERENCE])

print("Inference...")
out = model.inference(
    "It took me quite a long time to develop a voice and now that I have it I am not going to be silent.",
    "en",
    gpt_cond_latent,
    speaker_embedding,
    temperature=0.7, # Add custom parameters here
)
torchaudio.save(OUTPUT_WAV_PATH, torch.tensor(out["wav"]).unsqueeze(0), 24000)

References and Acknowledgements

XttsConfig

.. autoclass:: TTS.tts.configs.xtts_config.XttsConfig
    :members:

XttsArgs

.. autoclass:: TTS.tts.models.xtts.XttsArgs
    :members:

XTTS Model

.. autoclass:: TTS.tts.models.xtts.XTTS
    :members: