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audioduration (s)
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29.7
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{ "characters_per_second": 18.897637795275593, "dnsmos": 3.0838, "duration": 3.175, "emotion_annotation": { "Affection_best": 1.2421875, "Age_best": 0.83984375, "Amusement_best": -0.00063323974609375, "Anger_best": -0.000698089599609375, "Arousal_best": 1.546875, "Astonishment_Surprise_b...
{ "characters_per_second": 22.47347850362926, "dnsmos": 3.3504, "duration": 7.164, "emotion_annotation": { "Affection_best": -0.0019989013671875, "Age_best": 2.65625, "Amusement_best": 0.384765625, "Anger_best": 0.255859375, "Arousal_best": 1.4453125, "Astonishment_Surprise_best": 0.0049...
EN_B00031_S00008_W000000
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 13.403990024937656, "dnsmos": 3.3401, "duration": 3.208, "emotion_annotation": { "Affection_best": 0.0072021484375, "Age_best": 2.984375, "Amusement_best": -0.0004024505615234375, "Anger_best": -0.0040283203125, "Arousal_best": 0.890625, "Astonishment_Surprise_...
{ "characters_per_second": 22.47347850362926, "dnsmos": 3.3504, "duration": 7.164, "emotion_annotation": { "Affection_best": -0.0019989013671875, "Age_best": 2.65625, "Amusement_best": 0.384765625, "Anger_best": 0.255859375, "Arousal_best": 1.4453125, "Astonishment_Surprise_best": 0.0049...
EN_B00031_S00008_W000001
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 22.47347850362926, "dnsmos": 3.3504, "duration": 7.164, "emotion_annotation": { "Affection_best": -0.0019989013671875, "Age_best": 2.65625, "Amusement_best": 0.384765625, "Anger_best": 0.255859375, "Arousal_best": 1.4453125, "Astonishment_Surprise_best": 0.0049...
{ "characters_per_second": 13.403990024937656, "dnsmos": 3.3401, "duration": 3.208, "emotion_annotation": { "Affection_best": 0.0072021484375, "Age_best": 2.984375, "Amusement_best": -0.0004024505615234375, "Anger_best": -0.0040283203125, "Arousal_best": 0.890625, "Astonishment_Surprise_...
EN_B00031_S00008_W000002
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 16.901123368080153, "dnsmos": 3.0518, "duration": 9.881, "emotion_annotation": { "Affection_best": 1.0703125, "Age_best": 0.54296875, "Amusement_best": -0.0006103515625, "Anger_best": 0.00180816650390625, "Arousal_best": 1.6484375, "Astonishment_Surprise_best":...
{ "characters_per_second": 22.47347850362926, "dnsmos": 3.3504, "duration": 7.164, "emotion_annotation": { "Affection_best": -0.0019989013671875, "Age_best": 2.65625, "Amusement_best": 0.384765625, "Anger_best": 0.255859375, "Arousal_best": 1.4453125, "Astonishment_Surprise_best": 0.0049...
EN_B00031_S00008_W000003
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 17.336268574573474, "dnsmos": 3.0607, "duration": 3.634, "emotion_annotation": { "Affection_best": 0.007232666015625, "Age_best": 3.046875, "Amusement_best": -0.00061798095703125, "Anger_best": 0.25390625, "Arousal_best": 1.2578125, "Astonishment_Surprise_best"...
{ "characters_per_second": 22.47347850362926, "dnsmos": 3.3504, "duration": 7.164, "emotion_annotation": { "Affection_best": -0.0019989013671875, "Age_best": 2.65625, "Amusement_best": 0.384765625, "Anger_best": 0.255859375, "Arousal_best": 1.4453125, "Astonishment_Surprise_best": 0.0049...
EN_B00031_S00008_W000004
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 13.887281564633723, "dnsmos": 3.0289, "duration": 8.641, "emotion_annotation": { "Affection_best": 1.390625, "Age_best": 1.7421875, "Amusement_best": -0.00063323974609375, "Anger_best": -0.00008106231689453125, "Arousal_best": 1.7265625, "Astonishment_Surprise_...
{ "characters_per_second": 14.844373503591381, "dnsmos": 3.101, "duration": 12.53, "emotion_annotation": { "Affection_best": 1.2734375, "Age_best": 0.6328125, "Amusement_best": -0.000614166259765625, "Anger_best": 0.00008630752563476562, "Arousal_best": 1.6640625, "Astonishment_Surprise_...
EN_B00031_S00018_W000000
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 16.545265348595215, "dnsmos": 3.0545, "duration": 9.61, "emotion_annotation": { "Affection_best": 0.1279296875, "Age_best": 1.734375, "Amusement_best": -0.000629425048828125, "Anger_best": 0.51171875, "Arousal_best": 2.03125, "Astonishment_Surprise_best": 0.000...
{ "characters_per_second": 14.844373503591381, "dnsmos": 3.101, "duration": 12.53, "emotion_annotation": { "Affection_best": 1.2734375, "Age_best": 0.6328125, "Amusement_best": -0.000614166259765625, "Anger_best": 0.00008630752563476562, "Arousal_best": 1.6640625, "Astonishment_Surprise_...
EN_B00031_S00018_W000001
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 12.799652890769064, "dnsmos": 3.0976, "duration": 9.219, "emotion_annotation": { "Affection_best": 1.28125, "Age_best": 0.890625, "Amusement_best": -0.000621795654296875, "Anger_best": 0.0014495849609375, "Arousal_best": 1.5703125, "Astonishment_Surprise_best":...
{ "characters_per_second": 14.844373503591381, "dnsmos": 3.101, "duration": 12.53, "emotion_annotation": { "Affection_best": 1.2734375, "Age_best": 0.6328125, "Amusement_best": -0.000614166259765625, "Anger_best": 0.00008630752563476562, "Arousal_best": 1.6640625, "Astonishment_Surprise_...
EN_B00031_S00018_W000002
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 14.77024070021882, "dnsmos": 3.0824, "duration": 5.484, "emotion_annotation": { "Affection_best": 0.005035400390625, "Age_best": 3.296875, "Amusement_best": -0.0006103515625, "Anger_best": 0.004608154296875, "Arousal_best": 1.3671875, "Astonishment_Surprise_bes...
{ "characters_per_second": 14.844373503591381, "dnsmos": 3.101, "duration": 12.53, "emotion_annotation": { "Affection_best": 1.2734375, "Age_best": 0.6328125, "Amusement_best": -0.000614166259765625, "Anger_best": 0.00008630752563476562, "Arousal_best": 1.6640625, "Astonishment_Surprise_...
EN_B00031_S00018_W000003
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 14.844373503591381, "dnsmos": 3.101, "duration": 12.53, "emotion_annotation": { "Affection_best": 1.2734375, "Age_best": 0.6328125, "Amusement_best": -0.000614166259765625, "Anger_best": 0.00008630752563476562, "Arousal_best": 1.6640625, "Astonishment_Surprise_...
{ "characters_per_second": 12.799652890769064, "dnsmos": 3.0976, "duration": 9.219, "emotion_annotation": { "Affection_best": 1.28125, "Age_best": 0.890625, "Amusement_best": -0.000621795654296875, "Anger_best": 0.0014495849609375, "Arousal_best": 1.5703125, "Astonishment_Surprise_best":...
EN_B00031_S00018_W000004
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 13.757523645743767, "dnsmos": 3.0723, "duration": 6.978, "emotion_annotation": { "Affection_best": 1.1015625, "Age_best": 0.60546875, "Amusement_best": -0.00061798095703125, "Anger_best": -0.000820159912109375, "Arousal_best": 1.5546875, "Astonishment_Surprise_...
{ "characters_per_second": 14.844373503591381, "dnsmos": 3.101, "duration": 12.53, "emotion_annotation": { "Affection_best": 1.2734375, "Age_best": 0.6328125, "Amusement_best": -0.000614166259765625, "Anger_best": 0.00008630752563476562, "Arousal_best": 1.6640625, "Astonishment_Surprise_...
EN_B00031_S00018_W000005
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 17.004613238922865, "dnsmos": 3.0089, "duration": 18.642, "emotion_annotation": { "Affection_best": 1.0390625, "Age_best": 0.6328125, "Amusement_best": -0.000637054443359375, "Anger_best": 0.001922607421875, "Arousal_best": 1.703125, "Astonishment_Surprise_best...
{ "characters_per_second": 16.351457840819545, "dnsmos": 3.2286, "duration": 10.152, "emotion_annotation": { "Affection_best": 1.3046875, "Age_best": 0.81640625, "Amusement_best": -0.000640869140625, "Anger_best": -0.00013065338134765625, "Arousal_best": 1.734375, "Astonishment_Surprise_...
EN_B00031_S00028_W000000
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 16.351457840819545, "dnsmos": 3.2286, "duration": 10.152, "emotion_annotation": { "Affection_best": 1.3046875, "Age_best": 0.81640625, "Amusement_best": -0.000640869140625, "Anger_best": -0.00013065338134765625, "Arousal_best": 1.734375, "Astonishment_Surprise_...
{ "characters_per_second": 17.004613238922865, "dnsmos": 3.0089, "duration": 18.642, "emotion_annotation": { "Affection_best": 1.0390625, "Age_best": 0.6328125, "Amusement_best": -0.000637054443359375, "Anger_best": 0.001922607421875, "Arousal_best": 1.703125, "Astonishment_Surprise_best...
EN_B00031_S00028_W000001
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 15.559397382069646, "dnsmos": 3.3622, "duration": 8.098, "emotion_annotation": { "Affection_best": 0.7890625, "Age_best": 2.828125, "Amusement_best": 0.625, "Anger_best": -0.00008106231689453125, "Arousal_best": 1.890625, "Astonishment_Surprise_best": 0.0068969...
{ "characters_per_second": 16.645326504481435, "dnsmos": 3.5542, "duration": 4.686, "emotion_annotation": { "Affection_best": 1.2421875, "Age_best": 0.8828125, "Amusement_best": -0.00069427490234375, "Anger_best": 0.00714111328125, "Arousal_best": 1.921875, "Astonishment_Surprise_best": ...
EN_B00031_S00038_W000000
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 16.92823135249515, "dnsmos": 3.4279, "duration": 5.671, "emotion_annotation": { "Affection_best": 1.265625, "Age_best": 1.3125, "Amusement_best": -0.00061798095703125, "Anger_best": -0.0006256103515625, "Arousal_best": 1.6171875, "Astonishment_Surprise_best": 0...
{ "characters_per_second": 16.645326504481435, "dnsmos": 3.5542, "duration": 4.686, "emotion_annotation": { "Affection_best": 1.2421875, "Age_best": 0.8828125, "Amusement_best": -0.00069427490234375, "Anger_best": 0.00714111328125, "Arousal_best": 1.921875, "Astonishment_Surprise_best": ...
EN_B00031_S00038_W000001
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 15.534430790632971, "dnsmos": 3.2937, "duration": 4.313, "emotion_annotation": { "Affection_best": 0.00714111328125, "Age_best": 3.328125, "Amusement_best": -0.00063323974609375, "Anger_best": -0.00008106231689453125, "Arousal_best": 0.94140625, "Astonishment_S...
{ "characters_per_second": 16.645326504481435, "dnsmos": 3.5542, "duration": 4.686, "emotion_annotation": { "Affection_best": 1.2421875, "Age_best": 0.8828125, "Amusement_best": -0.00069427490234375, "Anger_best": 0.00714111328125, "Arousal_best": 1.921875, "Astonishment_Surprise_best": ...
EN_B00031_S00038_W000002
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
{ "characters_per_second": 16.061867935752527, "dnsmos": 3.2828, "duration": 3.362, "emotion_annotation": { "Affection_best": 0.00738525390625, "Age_best": 3.25, "Amusement_best": -0.000606536865234375, "Anger_best": 0.1923828125, "Arousal_best": 1.0859375, "Astonishment_Surprise_best": ...
{ "characters_per_second": 16.645326504481435, "dnsmos": 3.5542, "duration": 4.686, "emotion_annotation": { "Affection_best": 1.2421875, "Age_best": 0.8828125, "Amusement_best": -0.00069427490234375, "Anger_best": 0.00714111328125, "Arousal_best": 1.921875, "Astonishment_Surprise_best": ...
EN_B00031_S00038_W000003
hf://datasets/TTS-AGI/emolia-hq@56453f267fc2cd5a1a47f23ad87846c7dcd6f611/EN/EN-B000318_standard_hq.tar
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Emolia-HQ

Emolia-HQ is a high-quality, speaker-paired subset of the LAION Emolia dataset. Each sample includes a target utterance and a reference utterance from the same speaker, enabling speaker-conditioned tasks such as voice conversion, expressive TTS, and speaker-aware emotion recognition.

Source

Derived from laion/Emolia by:

  1. Quality filtering: Only samples with dnsmos >= 3.0 are retained.
  2. Speaker pairing: Each target sample is matched with a reference audio from the same speaker (different utterance), forming a "quadruplet". Samples where no same-speaker reference exists are included as pairs (target only).
  3. Metadata enrichment: speaker_id and language_id fields are extracted from the key and injected into each sample's JSON metadata.

Data Format

The dataset is stored as WebDataset .tar files, organized by language:

emolia_hq/
  DE/   # German  (243 tars, ~130 GB)
  EN/   # English (2,380 tars, ~2,476 GB)
  FR/   # French  (298 tars, ~187 GB)
  JA/   # Japanese (96 tars, ~163 GB)
  KO/   # Korean  (246 tars, ~79 GB)
  ZH/   # Chinese (929 tars, ~1,681 GB)

Each sample within a tar file is grouped by a shared base key:

Quadruplet (target + same-speaker reference)

File Description
<key>.mp3 Target audio
<key>.json Target metadata
<key>.ref.mp3 Reference audio (same speaker, different utterance)
<key>.ref.json Reference metadata

Pair (no reference found)

File Description
<key>.mp3 Target audio
<key>.json Target metadata

JSON Metadata Fields

Field Description
id Unique utterance ID
text Transcription
duration Audio duration in seconds
dnsmos DNS-MOS quality score (all >= 3.0)
speaker Original speaker ID
speaker_id Extracted speaker ID (e.g., DE_B00000_S00010)
language_id Extracted language code (e.g., DE)
language Language code lowercase
emotion_caption Natural language description of the emotional content
emotion_annotation Dictionary of 50+ emotion/prosody scores
characters_per_second Speaking rate
wavelm_timbre_embedding 128-dim speaker timbre embedding

Statistics

Language Tars Size
DE (German) 243 ~130 GB
EN (English) 2,380 ~2,476 GB
FR (French) 298 ~187 GB
JA (Japanese) 96 ~163 GB
KO (Korean) 246 ~79 GB
ZH (Chinese) 929 ~1,681 GB
Total 4,192 ~4,716 GB

~97% of samples include a same-speaker reference audio (quadruplets). The remaining ~3% are pairs where the speaker only appeared once across the entire dataset.

Usage

import webdataset as wds

dataset = wds.WebDataset("emolia_hq/EN/EN-B000000_standard_hq.tar")

for sample in dataset:
    key = sample["__key__"]
    target_audio = sample["mp3"]          # bytes
    target_meta = sample["json"]          # bytes -> json.loads()
    ref_audio = sample.get("ref.mp3")     # bytes or None
    ref_meta = sample.get("ref.json")     # bytes or None

License

Same as the source Emolia dataset. See laion/Emolia for details.

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