LEMAS-Dataset-train / README.md
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metadata
license: cc-by-sa-4.0
language:
  - it
  - pt
  - es
  - fr
  - de
  - vi
  - id
  - ru
  - en
  - zh
task_categories:
  - text-to-speech
  - automatic-speech-recognition
size_categories:
  - n>1T

Overview

This dataset is part of LEMAS (Large-scale Extensible Multilingual Audio Suite). It contains a large-scale training set (150k+ hours) and a curated evaluation set (500 utterances per language) covering 10 languages, all with word-level alignment.

Fields

  • key: unique utterance identifier; the first two characters indicate the language ID
  • audio: relative path to the MP3 audio file (in the eval set, this key is renamed to "file_name" for compatibility with the viewer)
  • dur: audio duration in seconds
  • txt: original transcription
  • align: alignment information, including:
    • align.txt: normalized text used for alignment
    • align.words: list of word-level timestamps and confidence scores

Methods

Train Set

Filtering rules:

  • Only samples with successfully extracted word-level alignments are kept; failed alignments are skipped.
  • The average alignment confidence score is greater than a threshold x, where x ∈ [0.2, 0.5] depending on the source dataset.
  • Audio duration is between 0.5 and 30 seconds, and the maximum pause between consecutive words does not exceed 4 seconds.
  • Text is restricted to supported languages; samples containing characters outside the supported set (10 languages) are removed.
  • The text-to-duration ratio len(txt) / dur falls within a language-specific range.

Statistics

lang utterances total_dur(h) avg_dur(s) total_chars avg_chars char/sec total_words avg_words word/sec
it 7209567 6116.69 3.054 281128388 38.994 12.7669 48859270 6.777 2.2188
fr 7557428 6535.94 3.113 344633332 45.602 14.6469 65843169 8.712 2.7983
vi 6426292 6600.07 3.697 387621747 60.318 16.3139 89903814 13.990 3.7838
pt 8682442 7384.42 3.062 339417251 39.092 12.7678 60316112 6.947 2.2689
de 11003833 9842.14 3.220 487581808 44.310 13.7612 80119609 7.281 2.2612
id 11659550 11246.27 3.472 543857918 46.645 13.4331 85967394 7.373 2.1234
es 26407271 21224.55 2.893 1011116926 38.289 13.2331 183673862 6.955 2.4038
ru 27474400 22919.31 3.003 991530233 36.089 12.0172 163018329 5.933 1.9758
en 9515267 25347.90 9.590 1419864294 149.220 15.5597 268676221 28.236 2.9443
zh 17776663 32919.28 6.667 2474249286 139.185 20.8781 496957308 27.956 4.1934

Words and chars statistics are computed based on the normalized alignment text (align.txt).

Eval Set

Filtering rules:

  • Average word-level alignment score > 0.9
  • Number of aligned words > 5
  • Duration between 3 and 15 seconds
  • Sentence-end silence is trimmed to at most 0.2s

Selection:

  • Samples are ranked by
    final_score = edge_gap × density_diff, where
    edge_gap = words[0].start + (dur - words[-1].end) and
    density_diff = |len(align_txt)/dur − global_mean_density|

Statistics

lang utterances total_dur(min) avg_dur(s) total_chars avg_chars char/sec total_words avg_words word/sec
it 500 44.22 5.306 40388 80.78 15.22 6599 13.20 2.49
fr 500 38.17 4.580 38098 76.20 16.64 6546 13.09 2.86
vi 500 36.74 4.409 28546 57.09 12.95 6727 13.45 3.05
pt 500 41.69 5.003 33343 66.69 13.33 5812 11.62 2.32
de 500 38.65 4.638 36571 73.14 15.77 5599 11.20 2.41
id 500 47.20 5.665 41026 82.05 14.49 6133 12.27 2.17
es 500 40.52 4.862 37075 74.15 15.25 6216 12.43 2.56
ru 500 40.24 4.828 33886 67.77 14.04 5138 10.28 2.13
en 500 67.46 8.095 62449 124.90 15.43 11325 22.65 2.80
zh 500 75.84 9.101 95669 191.34 21.02 18627 37.25 4.09

Statistics are computed based on trimmed audio and normalized alignment text (align.txt).

Notes

  • We will complete further updates and release a technical report soon.