# coding=utf-8 # Copyright 2024 blabble.io # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import os import datasets from datasets import load_dataset from datasets.features.features import require_decoding from datasets.table import embed_table_storage from datasets.utils.py_utils import convert_file_size_to_int from tqdm import tqdm _CITATION = """\ @ARTICLE{Zen2019-kz, title = "{LibriTTS}: A corpus derived from {LibriSpeech} for text-to-speech", author = "Zen, Heiga and Dang, Viet and Clark, Rob and Zhang, Yu and Weiss, Ron J and Jia, Ye and Chen, Zhifeng and Wu, Yonghui", abstract = "This paper introduces a new speech corpus called ``LibriTTS'' designed for text-to-speech use. It is derived from the original audio and text materials of the LibriSpeech corpus, which has been used for training and evaluating automatic speech recognition systems. The new corpus inherits desired properties of the LibriSpeech corpus while addressing a number of issues which make LibriSpeech less than ideal for text-to-speech work. The released corpus consists of 585 hours of speech data at 24kHz sampling rate from 2,456 speakers and the corresponding texts. Experimental results show that neural end-to-end TTS models trained from the LibriTTS corpus achieved above 4.0 in mean opinion scores in naturalness in five out of six evaluation speakers. The corpus is freely available for download from http://www.openslr.org/60/.", month = apr, year = 2019, copyright = "http://arxiv.org/licenses/nonexclusive-distrib/1.0/", archivePrefix = "arXiv", primaryClass = "cs.SD", eprint = "1904.02882" } """ _DESCRIPTION = """\ LibriTTS is a multi-speaker English corpus of approximately 585 hours of read English speech at 24kHz sampling rate, prepared by Heiga Zen with the assistance of Google Speech and Google Brain team members. The LibriTTS corpus is designed for TTS research. It is derived from the original materials (mp3 audio files from LibriVox and text files from Project Gutenberg) of the LibriSpeech corpus. """ _HOMEPAGE = "https://www.openslr.org/60/" _LICENSE = "CC BY 4.0" # EU mirror was much faster at time of writing _DL_URL = "https://openslr.elda.org/resources/60/" # _DL_URL = "https://us.openslr.org/resources/60/" _DATA_URLS = { 'dev.clean': _DL_URL + 'dev-clean.tar.gz', 'dev.other': _DL_URL + 'dev-other.tar.gz', 'test.clean': _DL_URL + 'test-clean.tar.gz', 'test.other': _DL_URL + 'test-other.tar.gz', 'train.clean.100': _DL_URL + 'train-clean-100.tar.gz', 'train.clean.360': _DL_URL + 'train-clean-360.tar.gz', 'train.other.500': _DL_URL + 'train-other-500.tar.gz', } def _generate_transcripts(transcript_csv_file): """Generates partial examples from transcript CSV file.""" for line in transcript_csv_file: key, text_original, text_normalized = line.decode("utf-8").replace('\n', '').split("\t") speaker_id, chapter_id = [int(el) for el in key.split("_")[:2]] example = { "text_normalized": text_normalized, "text_original": text_original, "speaker_id": speaker_id, "chapter_id": chapter_id, "id_": key, } yield example class LibriTTS_Dataset(datasets.GeneratorBasedBuilder): """ LibriTTS is a multi-speaker English corpus of approximately 585 hours of read English speech at 24kHz sampling rate, prepared by Heiga Zen with the assistance of Google Speech and Google Brain team members. """ VERSION = datasets.Version("1.0.0") DEFAULT_CONFIG_NAME = "all" BUILDER_CONFIGS = [ datasets.BuilderConfig(name="dev", description="Only the 'dev.clean' split."), datasets.BuilderConfig(name="clean", description="'Clean' speech."), datasets.BuilderConfig(name="other", description="'Other', more challenging, speech."), datasets.BuilderConfig(name="all", description="Combined clean and other dataset."), ] def _info(self): return datasets.DatasetInfo( # This is the description that will appear on the datasets page. description=_DESCRIPTION, features=datasets.Features( { "audio": datasets.Audio(sampling_rate=24_000), "text_normalized": datasets.Value("string"), "text_original": datasets.Value("string"), "speaker_id": datasets.Value("string"), "path": datasets.Value("string"), "chapter_id": datasets.Value("string"), "id": datasets.Value("string"), } ), supervised_keys=None, homepage=_HOMEPAGE, license=_LICENSE, citation=_CITATION, ) def _split_generators(self, dl_manager): split_names = _DATA_URLS.keys() if self.config.name == "clean": split_names = [k for k in _DATA_URLS.keys() if 'clean' in k] elif self.config.name == "other": split_names = [k for k in _DATA_URLS.keys() if 'other' in k] archive_path = dl_manager.download({k: v for k, v in _DATA_URLS.items() if k in split_names}) # (Optional) In non-streaming mode, we can extract the archive locally to have actual local audio files: local_extracted_archive = dl_manager.extract(archive_path) if not dl_manager.is_streaming else {} all_splits = [ datasets.SplitGenerator( name=split_name, gen_kwargs={ "local_extracted_archive": local_extracted_archive.get(split_name), "files": dl_manager.iter_archive(archive_path[split_name]), "split_name": split_name }, ) for split_name in split_names ] return all_splits def _generate_examples(self, split_name, files, local_extracted_archive): """Generate examples from a LibriTTS archive_path.""" audio_extension = '.wav' key = 0 all_audio_data = {} transcripts = {} def get_return_data(transcript, audio_data): nonlocal key audio = {"path": transcript["path"], "bytes": audio_data} key += 1 return key, {"audio": audio, **transcript} for path, f in files: if path.endswith(audio_extension): id_ = path.split("/")[-1][: -len(audio_extension)] audio_data = f.read() # If we already have the transcript for this audio, yield it right away # Otherwise, save it for when we get the transcript. transcript = transcripts.get(id_, None) if transcript is not None: yield get_return_data(transcript, audio_data) del transcripts[id_] else: all_audio_data[id_] = f.read() elif path.endswith(".trans.tsv"): for example in _generate_transcripts(f): example_id = example['id_'] audio_file = f"{example_id}{audio_extension}" audio_file = ( os.path.join( local_extracted_archive, 'LibriTTS', split_name.replace('.', '-'), str(example['speaker_id']), str(example['chapter_id']), audio_file) if local_extracted_archive else audio_file ) transcript = { "id": example_id, "speaker_id": example['speaker_id'], "chapter_id": example['chapter_id'], "text_normalized": example['text_normalized'], "text_original": example['text_original'], "path": audio_file, } # If we already have the audio for this transcript, yield it right away # Otherwise, save it for when we get the audio. audio_data = all_audio_data.get(example_id, None) if audio_data is not None: yield get_return_data(transcript, audio_data) del all_audio_data[example_id] else: transcripts[example_id] = transcript for id_, audio_data in all_audio_data.items(): transcript = transcripts.get(id_, None) if transcript is None: # for debugging, this dataset may extra audio # print(f"[libritts {split_name}] Audio without transcript: {id_}") continue else: yield get_return_data(transcript, audio_data) del transcripts[id_] for id_, transcript in transcripts.items(): audio_data = all_audio_data.get(id_, None) if audio_data is None: # for debugging, this dataset has extra transcripts # print(f"[libritts {split_name}] Transcript without audio: {id_}") continue else: yield get_return_data(audio_data, transcript) # no del needed here def to_parquet_with_audio(dataset, data_out_dir, split_name, max_shard_size='500MB'): from datasets import config # decodable_columns = ( # [k for k, v in dataset.features.items() if require_decoding(v, ignore_decode_attribute=True)] # ) dataset_nbytes = dataset._estimate_nbytes() max_shard_size = convert_file_size_to_int(max_shard_size or config.MAX_SHARD_SIZE) num_shards = int(dataset_nbytes / max_shard_size) + 1 num_shards = max(num_shards, 1) shards = (dataset.shard(num_shards=num_shards, index=i, contiguous=True) for i in range(num_shards)) def shards_with_embedded_external_files(shards): for shard in shards: format = shard.format shard = shard.with_format("arrow") shard = shard.map( embed_table_storage, batched=True, batch_size=1000, keep_in_memory=True, ) shard = shard.with_format(**format) yield shard shards = shards_with_embedded_external_files(shards) os.makedirs(data_out_dir, exist_ok=True) for index, shard in tqdm( enumerate(shards), desc="Save the dataset shards", total=num_shards, ): shard_path = f"{data_out_dir}/{split_name}-{index:05d}-of-{num_shards:05d}.parquet" shard.to_parquet(shard_path) if __name__ == '__main__': file_path = os.path.abspath( os.path.realpath(__file__)) file_dir = os.path.dirname(file_path) dataset_splits = load_dataset(file_path, "all") for split in dataset_splits: out_dir = f'{file_dir}/data/{split}/' os.makedirs(os.path.dirname(out_dir), exist_ok=True) to_parquet_with_audio(dataset_splits[split], out_dir, split)