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Env-TTS-Clean
Environment-aware text-to-speech training corpus (clean release). Each row pairs four short 24 kHz mono FLAC clips with aligned transcripts:
- an environment sample (different speaker, same acoustic scene),
- a speaker reference (same speaker as the target utterance),
- a speaker-enhanced copy of the reference (MossFormer2 enhancement — or, for the DDS source, the real clean-studio recording of the speaker reference),
- the target speech to synthesise,
so a model can learn to generate an utterance with both a specified voice and a specified environment. This release supersedes the earlier Env-TTS-SD-Corpus with a richer schema, higher sample rate, per-clip ASR for all three contexts, two meeting sources (AMI, AliMeeting), and a controlled read-speech source (DDS / DAPS) that contributes real clean-studio enhancement ground truth.
Dataset statistics
| metric | value |
|---|---|
| rows | 384,318 (189,918 diarization + 194,400 DDS) |
| on-disk size | ~197 GB |
Σ speech_duration |
~680 h (428.6 h diarization + ~251.7 h DDS) |
Σ (environment_audio_duration + speaker_audio_duration + speech_duration) |
~1,964 h (1,252.1 h + ~712 h DDS) |
Diarization-source totals were computed exactly on 2026-05-27 (239 shards). The
DDS portion (194,400 rows, added 2026-06-09; train groups group_00061–
group_00122) is estimated from a sampled shard (mean per row: speech 4.66 s,
env 4.24 s, speaker 4.29 s).
Rows by source dataset
dataset |
rows |
|---|---|
dds |
194,400 |
m3sd |
108,708 |
aishell4 |
27,924 |
alimeeting |
25,087 |
ami |
13,207 |
msdwild |
9,676 |
chime6 |
5,316 |
Schema
| column | type | description |
|---|---|---|
environment_audio_source |
binary (FLAC 24 kHz mono) | acoustic-scene reference, 2.5–15 s, from a different speaker in the same scene |
environment_audio_duration |
float32 | seconds |
environment_audio_text |
string | transcript of the environment clip (gold / Qwen3-ASR / DAPS script) |
speaker_audio_source |
binary (FLAC 24 kHz mono) | speaker-identity reference, 2.5–15 s, same speaker as speech |
speaker_audio_duration |
float32 | seconds |
speaker_audio_text |
string | transcript of the speaker reference clip |
speaker_audio_source_enhanced |
binary (FLAC 24 kHz mono) | de-environment'd speaker reference: MossFormer2-enhanced for diarization sources; the real clean-studio recording for DDS |
text |
string | transcript of speech |
speech |
binary (FLAC 24 kHz mono) | target utterance, 3–15 s |
speech_duration |
float32 | seconds |
language |
string | zh / en / auto |
dataset |
string | dds / m3sd / aishell4 / msdwild / chime6 / ami / alimeeting |
conversation_id |
string | unique within the source dataset (for DDS: {room}__{device}__{channel}) |
speaker_id |
string | within-scene speaker label (for DDS: DAPS speaker, e.g. f1, m8) |
env_id |
string | acoustic-scene identifier (for DDS: dds__{room}__{device}__{channel}) |
text_source |
string | original, asr, or mixed |
asr_token_count |
int32 | Qwen3-ASR token count for speech (0 when text_source=original) |
asr_mean_logprob |
float32 | mean log-prob per token for speech |
Source corpora
| dataset | hours (≈, this release) | language | transcripts |
|---|---|---|---|
| DDS — Device-Degraded Speech, DAPS portion (Li & Yamagishi, 2021) | ~252 | en | ✅ DAPS scripts |
| M3SD (Wu et al., 2025) | 770 | zh / en mixed | ❌ → Qwen3-ASR |
| AISHELL-4 (Fu et al., 2021) | 120 | zh | ✅ TextGrid |
| MSDWILD (Liu et al., 2022) | 80 | zh / en mixed | ❌ → Qwen3-ASR |
| CHiME-6 (Watanabe et al., 2020) | 40+ | en | ✅ JSON |
| AMI (SDM, diarizers-community) | ~100 | en | ❌ → Qwen3-ASR |
| AliMeeting (OpenSLR 119, far ch.0) | ~120 | zh | ✅ TextGrid |
DDS is single-speaker read speech (not a diarization corpus): 20 DAPS
speakers re-recorded across 9 rooms × 3 microphones × 6 positions (162
acoustic conditions). For each condition the target speech and the
environment_audio_source (a different speaker, same room/mic/position) are the
device-degraded recordings, while speaker_audio_source_enhanced is the
matching clean-studio recording — a real enhancement ground truth rather than
a MossFormer2 estimate. All DDS text comes from the DAPS scripts
(text_source = original).
Processing pipeline
Built with the streaming pipeline in
env-tts-data-pipeline.
Diarization sources — three parallel stages download → process → upload:
- download — stream each source conversation (HF mirrors, OpenSLR tar streams, etc.) into a bounded local cache; emit a JSON sentinel when ready.
- process — resample to 24 kHz mono, walk diarisation turns, emit
3–15 s
speechslices with a same-speaker reference (≥2.5 s) and a different-speaker environment slice (≥2.5 s). Missing/split transcripts are re-labelled with Qwen3-ASR-1.7B. Snappy parquet shards (~800 rows / shard, 4 shards per HF commit group). - upload —
HfApi.upload_folderper sealed group, resume-safe. - enhance (second pass) — MossFormer2_SE_48K on
speaker_audio_source.
DDS uses a dedicated parallel-channel pass (process-dds): each (room,
device, position) condition is one acoustic scene; rows are assembled directly
from the parallel clean/degraded recordings, and speaker_audio_source_enhanced
is filled in-place with the real clean-studio clip (no second-pass MossFormer2).
Licensing
Released under CC-BY-NC-4.0 (non-commercial), inheriting the most restrictive terms among sources. In particular:
- DDS / DAPS — CC-BY-NC-4.0 (non-commercial). This is the binding term for the whole release.
- M3SD — academic / non-commercial research only.
- MSDWILD — X-LANCE research-only agreement.
- AISHELL-4 (Apache-2.0), CHiME-6 (CC-BY-SA-4.0), AMI, and AliMeeting carry their respective open / research terms.
Redistributing extracted audio requires complying with each upstream licence.
Citation
Please cite the source papers when using this corpus:
@article{li2021dds,
title={DDS: A new device-degraded speech dataset for speech enhancement},
author={Li, Haoyu and Yamagishi, Junichi},
journal={arXiv preprint arXiv:2109.07931},
year={2021}
}
@article{wu2025m3sd,
title={M3SD: Multi-modal, Multi-scenario and Multi-language Speaker
Diarization Dataset},
author={Wu, Shilong and others},
journal={arXiv preprint arXiv:2506.14427},
year={2025}
}
@inproceedings{fu2021aishell4,
title={AISHELL-4: An Open Source Dataset for Speech Enhancement, Separation,
Recognition and Speaker Diarization in Conference Scenario},
author={Fu, Yihui and others},
booktitle={Interspeech},
year={2021}
}
@inproceedings{liu2022msdwild,
title={MSDWILD: Multi-modal Speaker Diarization Dataset in the Wild},
author={Liu, Tao and others},
booktitle={Interspeech},
year={2022}
}
@inproceedings{watanabe2020chime6,
title={CHiME-6 Challenge: Tackling Multispeaker Speech Recognition for
Unsegmented Recordings},
author={Watanabe, Shinji and others},
booktitle={CHiME Workshop},
year={2020}
}
ASR re-labelling uses Qwen3-ASR-1.7B. Speaker enhancement uses MossFormer2 (ClearVoice). DDS is built on the DAPS dataset (Mysore, 2015).
Loading
from datasets import load_dataset
ds = load_dataset("ChristianYang/Env-TTS-Clean", split="train", streaming=True)
row = next(iter(ds))
print(row["text"], row["dataset"], row["speech_duration"])
# Audio columns decode automatically when accessed (24 kHz mono).
# Filter to a single source (e.g. the DDS read-speech rows):
dds = ds.filter(lambda r: r["dataset"] == "dds")
Files on disk
data/
group_00000/ ... group_00122/ # group_00061–00122 are DDS
manifest.json
data_000000.parquet
...
Each group_* directory is one atomic HF commit bundle (typically 4 × 800-row
parquet shards, snappy-compressed FLAC payloads inside).
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