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metadata
language:
  - as
  - bn
  - en
  - gu
  - hi
  - kn
  - ml
  - mr
  - ne
  - or
  - pa
  - ta
  - te
license: cc-by-4.0
task_categories:
  - text-to-speech
  - automatic-speech-recognition
size_categories:
  - 100K<n<1M
tags:
  - indic
  - multilingual
  - tts
  - speech

Processed TTS Multilingual Data

Validated and quality-checked multilingual speech datasets for TTS training, covering 12+ Indian languages.

Datasets Included

Subset Samples Hours Description
indic_voices_r 239,684 548.8h Indic Voices_R — IVR recordings
rasa 201,509 361.2h RASA — read speech (wiki, conv, book, news)
indictts_iitm 155,236 253.6h Indic TTS (IIT Madras) — studio TTS recordings at 48kHz
Total 596,429 1,163.6h

Languages

Assamese (as), Bengali (bn), English (en), Gujarati (gu), Hindi (hi), Kannada (kn), Malayalam (ml), Marathi (mr), Nepali (ne), Odia (or), Punjabi (pa), Tamil (ta), Telugu (te)

Structure

├── indic_voices_r/
│   ├── metadata.csv
│   └── audio/{lang}/*.wav
├── rasa/
│   ├── metadata.csv
│   └── audio/{lang}/*.wav
└── indictts_iitm/
    ├── metadata.csv
    └── audio/{lang}/*.wav

Schema (metadata.csv)

Each subset has a metadata.csv with these columns:

Field Description
file_name Relative path to audio file (e.g., audio/bn/file.wav)
text Transcript text
lang ISO 639-1 language code
speaker_id Speaker identifier
duration Audio duration in seconds
source Original data source
emotion Emotion label
domain Text domain (wiki, conv, book, news, etc.)
snr_db Signal-to-noise ratio in dB
silence_ratio Fraction of silent frames
clipping_ratio Fraction of clipped samples

Quality Checks Applied

All data has been validated through a 4-check pipeline:

  1. SNR + Silence + Duration — reject low SNR (<10dB), excess silence (>35%), out-of-range duration (<1.5s or >30s), clipping (>1%)
  2. Speaking Rate — reject abnormal speaking rates (<2 or >25 chars/sec)
  3. Text Normalization — Unicode NFC normalization applied
  4. Audio Corruption — reject empty, all-zeros, NaN/Inf, DC offset >0.1

Usage

from datasets import load_dataset

# Load a specific subset
ds = load_dataset(
    "PalakEngineerMaster/Processed_TTS_Multilingual_Data",
    data_dir="rasa",
    split="train",
)

# Access a sample
sample = ds[0]
print(sample["text"])
# audio is at sample["file_name"]

Audio Format

  • Format: WAV
  • Sample rate: 16kHz (Indic Voices_R, RASA) / 48kHz (Indic TTS IIT M)
  • Channels: mono