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(formatting_your_dataset)=

Formatting Your Dataset

For training a TTS model, you need a dataset with speech recordings and transcriptions. The speech must be divided into audio clips and each clip needs transcription.

If you have a single audio file and you need to split it into clips, there are different open-source tools for you. We recommend Audacity. It is an open-source and free audio editing software.

It is also important to use a lossless audio file format to prevent compression artifacts. We recommend using wav file format.

Let's assume you created the audio clips and their transcription. You can collect all your clips under a folder. Let's call this folder wavs.

/wavs
  | - audio1.wav
  | - audio2.wav
  | - audio3.wav
  ...

You can either create separate transcription files for each clip or create a text file that maps each audio clip to its transcription. In this file, each column must be delimitered by a special character separating the audio file name, the transcription and the normalized transcription. And make sure that the delimiter is not used in the transcription text.

We recommend the following format delimited by |. In the following example, audio1, audio2 refer to files audio1.wav, audio2.wav etc.

# metadata.txt

audio1|This is my sentence.|This is my sentence.
audio2|1469 and 1470|fourteen sixty-nine and fourteen seventy
audio3|It'll be $16 sir.|It'll be sixteen dollars sir.
...

If you don't have normalized transcriptions, you can use the same transcription for both columns. If it's your case, we recommend to use normalization later in the pipeline, either in the text cleaner or in the phonemizer.

In the end, we have the following folder structure

/MyTTSDataset
      |
      | -> metadata.txt
      | -> /wavs
              | -> audio1.wav
              | -> audio2.wav
              | ...

The format above is taken from widely-used the LJSpeech dataset. You can also download and see the dataset. 🐸TTS already provides tooling for the LJSpeech. if you use the same format, you can start training your models right away.

Dataset Quality

Your dataset should have good coverage of the target language. It should cover the phonemic variety, exceptional sounds and syllables. This is extremely important for especially non-phonemic languages like English.

For more info about dataset qualities and properties check our post.

Using Your Dataset in 🐸TTS

After you collect and format your dataset, you need to check two things. Whether you need a formatter and a text_cleaner. The formatter loads the text file (created above) as a list and the text_cleaner performs a sequence of text normalization operations that converts the raw text into the spoken representation (e.g. converting numbers to text, acronyms, and symbols to the spoken format).

If you use a different dataset format then the LJSpeech or the other public datasets that 🐸TTS supports, then you need to write your own formatter.

If your dataset is in a new language or it needs special normalization steps, then you need a new text_cleaner.

What you get out of a formatter is a List[Dict] in the following format.

>>> formatter(metafile_path)
[
    {"audio_file":"audio1.wav", "text":"This is my sentence.", "speaker_name":"MyDataset", "language": "lang_code"},
    {"audio_file":"audio1.wav", "text":"This is maybe a sentence.", "speaker_name":"MyDataset", "language": "lang_code"},
    ...
]

Each sub-list is parsed as {"<filename>", "<transcription>", "<speaker_name">]. <speaker_name> is the dataset name for single speaker datasets and it is mainly used in the multi-speaker models to map the speaker of the each sample. But for now, we only focus on single speaker datasets.

The purpose of a formatter is to parse your manifest file and load the audio file paths and transcriptions. Then, the output is passed to the Dataset. It computes features from the audio signals, calls text normalization routines, and converts raw text to phonemes if needed.

Loading your dataset

Load one of the dataset supported by 🐸TTS.

from TTS.tts.configs.shared_configs import BaseDatasetConfig
from TTS.tts.datasets import load_tts_samples


# dataset config for one of the pre-defined datasets
dataset_config = BaseDatasetConfig(
    formatter="vctk", meta_file_train="", language="en-us", path="dataset-path")
)

# load training samples
train_samples, eval_samples = load_tts_samples(dataset_config, eval_split=True)

Load a custom dataset with a custom formatter.

from TTS.tts.datasets import load_tts_samples


# custom formatter implementation
def formatter(root_path, manifest_file, **kwargs):  # pylint: disable=unused-argument
    """Assumes each line as ```<filename>|<transcription>```
    """
    txt_file = os.path.join(root_path, manifest_file)
    items = []
    speaker_name = "my_speaker"
    with open(txt_file, "r", encoding="utf-8") as ttf:
        for line in ttf:
            cols = line.split("|")
            wav_file = os.path.join(root_path, "wavs", cols[0])
            text = cols[1]
            items.append({"text":text, "audio_file":wav_file, "speaker_name":speaker_name, "root_path": root_path})
    return items

# load training samples
train_samples, eval_samples = load_tts_samples(dataset_config, eval_split=True, formatter=formatter)

See TTS.tts.datasets.TTSDataset, a generic Dataset implementation for the tts models.

See TTS.vocoder.datasets.*, for different Dataset implementations for the vocoder models.

See TTS.utils.audio.AudioProcessor that includes all the audio processing and feature extraction functions used in a Dataset implementation. Feel free to add things as you need.