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mp3 audio | json dict | ref.mp3 audio | ref.json dict | __key__ string | __url__ string |
|---|---|---|---|---|---|
{
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | {
"characters_per_second": 18.326592517694642,
"dnsmos": 3.5828,
"duration": 7.912,
"emotion_annotation": {
"Affection_best": 1.1875,
"Age_best": 0.9140625,
"Amusement_best": -0.000640869140625,
"Anger_best": -0.00048065185546875,
"Arousal_best": 1.609375,
"Astonishment_Surprise_best": 0... | DE_B00000_S00000_W000023 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 18.326592517694642,
"dnsmos": 3.5828,
"duration": 7.912,
"emotion_annotation": {
"Affection_best": 1.1875,
"Age_best": 0.9140625,
"Amusement_best": -0.000640869140625,
"Anger_best": -0.00048065185546875,
"Arousal_best": 1.609375,
"Astonishment_Surprise_best": 0... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000011 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 14.764565043894653,
"dnsmos": 3.5815,
"duration": 15.036,
"emotion_annotation": {
"Affection_best": 1.296875,
"Age_best": 0.99609375,
"Amusement_best": -0.00064849853515625,
"Anger_best": -0.00008106231689453125,
"Arousal_best": 1.625,
"Astonishment_Surprise_be... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000050 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 17.077267637178053,
"dnsmos": 3.5623,
"duration": 10.716,
"emotion_annotation": {
"Affection_best": 0.9609375,
"Age_best": 0.62109375,
"Amusement_best": -0.000629425048828125,
"Anger_best": 0.0005645751953125,
"Arousal_best": 1.75,
"Astonishment_Surprise_best":... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000055 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 16.232169208066896,
"dnsmos": 3.5566,
"duration": 8.132,
"emotion_annotation": {
"Affection_best": 0.007171630859375,
"Age_best": 3.21875,
"Amusement_best": -0.000652313232421875,
"Anger_best": 0.294921875,
"Arousal_best": 0.91796875,
"Astonishment_Surprise_bes... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000018 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 20.280158896090317,
"dnsmos": 3.5365,
"duration": 19.132,
"emotion_annotation": {
"Affection_best": 0.023681640625,
"Age_best": 1.203125,
"Amusement_best": -0.000640869140625,
"Anger_best": 0.91796875,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.001... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000024 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 17.456640867747584,
"dnsmos": 3.5365,
"duration": 17.701,
"emotion_annotation": {
"Affection_best": 0.0072021484375,
"Age_best": 3.3125,
"Amusement_best": -0.000782012939453125,
"Anger_best": 0.482421875,
"Arousal_best": 0.98828125,
"Astonishment_Surprise_best"... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000047 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 19.45786366076221,
"dnsmos": 3.5057,
"duration": 7.452,
"emotion_annotation": {
"Affection_best": 0.00732421875,
"Age_best": 3.234375,
"Amusement_best": -0.00064849853515625,
"Anger_best": 0.1337890625,
"Arousal_best": 0.8828125,
"Astonishment_Surprise_best": 0... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000022 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 16.60682226211849,
"dnsmos": 3.4898,
"duration": 4.456,
"emotion_annotation": {
"Affection_best": 0.007110595703125,
"Age_best": 3.1875,
"Amusement_best": -0.004241943359375,
"Anger_best": 0.83203125,
"Arousal_best": 1.234375,
"Astonishment_Surprise_best": 0.00... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000072 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 17.775090689238212,
"dnsmos": 3.4892,
"duration": 16.54,
"emotion_annotation": {
"Affection_best": 0.00726318359375,
"Age_best": 3.34375,
"Amusement_best": -0.00066375732421875,
"Anger_best": -0.00008106231689453125,
"Arousal_best": 1.1171875,
"Astonishment_Sur... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000059 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 18.655462184873947,
"dnsmos": 3.4795,
"duration": 11.9,
"emotion_annotation": {
"Affection_best": 0.00732421875,
"Age_best": 3.21875,
"Amusement_best": -0.00066375732421875,
"Anger_best": 0.003204345703125,
"Arousal_best": 0.8984375,
"Astonishment_Surprise_best... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000058 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 17.530224525043177,
"dnsmos": 3.4707,
"duration": 11.58,
"emotion_annotation": {
"Affection_best": 0.007171630859375,
"Age_best": 3.25,
"Amusement_best": -0.00077056884765625,
"Anger_best": 0.0004787445068359375,
"Arousal_best": 1.046875,
"Astonishment_Surprise... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000064 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 19.14514692787177,
"dnsmos": 3.47,
"duration": 15.722,
"emotion_annotation": {
"Affection_best": 1.21875,
"Age_best": 0.62109375,
"Amusement_best": -0.00063323974609375,
"Anger_best": -0.000789642333984375,
"Arousal_best": 1.5546875,
"Astonishment_Surprise_best... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000019 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 16.399024002723714,
"dnsmos": 3.4671,
"duration": 17.623,
"emotion_annotation": {
"Affection_best": 1.1953125,
"Age_best": 0.6328125,
"Amusement_best": -0.000621795654296875,
"Anger_best": 0.00138092041015625,
"Arousal_best": 1.6640625,
"Astonishment_Surprise_b... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000000 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 18.079673135852914,
"dnsmos": 3.4628,
"duration": 19.58,
"emotion_annotation": {
"Affection_best": 0.345703125,
"Age_best": 1.921875,
"Amusement_best": -0.0006103515625,
"Anger_best": 0.142578125,
"Arousal_best": 1.828125,
"Astonishment_Surprise_best": 0.002944... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000044 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar | ||
{
"characters_per_second": 14.46901446901447,
"dnsmos": 3.4626,
"duration": 14.652,
"emotion_annotation": {
"Affection_best": 1.21875,
"Age_best": 1.015625,
"Amusement_best": -0.000667572021484375,
"Anger_best": -0.00008106231689453125,
"Arousal_best": 1.6171875,
"Astonishment_Surprise_b... | {
"characters_per_second": 17.89964299881,
"dnsmos": 3.5835,
"duration": 20.168,
"emotion_annotation": {
"Affection_best": 0.84375,
"Age_best": 0.6171875,
"Amusement_best": -0.000606536865234375,
"Anger_best": 0.0025787353515625,
"Arousal_best": 1.6875,
"Astonishment_Surprise_best": 0.00... | DE_B00000_S00000_W000030 | hf://datasets/laion/emolia-hq@c23c1098110c8b9f94789054009dcf7358da8090/DE/DE-B000000_standard_hq.tar |
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:
- Quality filtering: Only samples with
dnsmos >= 3.0are retained. - 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).
- Metadata enrichment:
speaker_idandlanguage_idfields 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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