stem stringlengths 1 26 ⌀ | count float64 1 358 ⌀ | facet stringclasses 16
values | facet_simple stringclasses 14
values | top_facets stringclasses 6
values | mapped stringlengths 5 92 ⌀ |
|---|---|---|---|---|---|
song | 358 | Structure | Structure | Structure | {'song', 'songs'} |
guitar | 251 | Instrumentation | Instrumentation | Instrumentation | {'guitars', 'guitar'} |
track | 162 | Structure | Structure | Structure | {'track'} |
vocal | 159 | Vocals (2) | Vocals | Instrumentation | {'vocal', 'vocalizations', 'vocals'} |
male | 143 | Vocals (1) | Vocals | Instrumentation | {'male'} |
instrument | 141 | Structure | Structure | Structure | {'instrumentals', 'instrument', 'instruments', 'instrumental', 'instrumentation'} |
piano | 127 | Instrumentation | Instrumentation | Instrumentation | {'pianos', 'piano'} |
drum | 109 | Instrumentation | Instrumentation | Instrumentation | {'drumming', 'drums', 'drum'} |
rock | 106 | Genre | Genre/Style | Genre/Style | {'rock'} |
music | 99 | Structure | Structure | Structure | {'musical', 'musically', 'music'} |
featur | 94 | Structure | Structure | Structure | {'featuring', 'features', 'featured'} |
feel | 81 | null | Unmapped | Other | {'feel', 'feels', 'feelings', 'feeling'} |
synth | 81 | Instrumentation | Instrumentation | Instrumentation | {'synthed', 'synth', 'synths'} |
pop | 81 | Genre | Genre/Style | Genre/Style | {'pop'} |
voic | 79 | Vocals (2) | Vocals | Instrumentation | {'voices', 'voice'} |
electron | 78 | Texture | Texture | Texture | {'electronic'} |
acoust | 78 | Texture | Texture | Texture | {'acoustic'} |
sound | 74 | null | Unmapped | Other | {'sound', 'sounding', 'sounds'} |
beat | 70 | null | Unmapped | Other | {'beat', 'beats'} |
melodi | 60 | Structure | Structure | Structure | {'melody', 'melodies'} |
femal | 58 | Vocals (1) | Vocals | Instrumentation | {'female'} |
play | 57 | null | Unmapped | Other | {'play', 'playing', 'plays', 'played', 'playful'} |
piec | 55 | Structure | Structure | Structure | {'piece'} |
use | 49 | null | Unmapped | Other | {'use', 'used', 'uses', 'using'} |
electr | 45 | Instrumentation | Instrumentation | Instrumentation | {'electric'} |
start | 44 | Structure | Structure | Structure | {'start', 'starts', 'starting'} |
like | 44 | null | Unmapped | Other | {'likes', 'likely', 'like'} |
vibe | 42 | Style | Genre/Style | Genre/Style | {'vibes', 'vibe'} |
bass | 42 | Instrumentation | Instrumentation | Instrumentation | {'bass'} |
energet | 39 | Mood | Mood | Mood | {'energetic'} |
sing | 38 | Vocals (2) | Vocals | Instrumentation | {'singed', 'singing', 'sings', 'sing'} |
solo | 37 | Structure | Structure | Structure | {'solo', 'solos'} |
upbeat | 37 | Mood | Mood | Mood | {'upbeat'} |
lead | 36 | Structure | Structure | Structure | {'lead', 'leads', 'leading'} |
slow | 36 | Tempo | Tempo | Other | {'slow'} |
accompani | 35 | Structure | Structure | Structure | {'accompanying', 'accompaniment', 'accompany', 'accompanied'} |
classic | 35 | Style | Genre/Style | Genre/Style | {'classic', 'classical', 'classically'} |
make | 35 | null | Unmapped | Other | {'making', 'make', 'makes'} |
french | 34 | Language | Language | Other | {'french'} |
danc | 33 | Usage | Usage | Other | {'dance', 'dancing'} |
background | 33 | null | Unmapped | Other | {'background'} |
percuss | 32 | Instrumentation | Instrumentation | Instrumentation | {'percussion', 'percussive', 'percussions'} |
give | 31 | null | Unmapped | Other | {'giving', 'give', 'gives'} |
singer | 31 | Vocals (2) | Vocals | Instrumentation | {'singers', 'singer'} |
relax | 30 | Mood | Mood | Mood | {'relax', 'relaxing', 'relaxed'} |
calm | 30 | Mood | Mood | Mood | {'calming', 'calm', 'calmness'} |
lyric | 29 | Lyrical content | Lyrical content | Other | {'lyric', 'lyrical', 'lyrics'} |
back | 28 | null | Unmapped | Other | {'backing', 'back', 'backed'} |
style | 28 | Style | Genre/Style | Genre/Style | {'style', 'styles'} |
string | 27 | Instrumentation | Instrumentation | Instrumentation | {'stringed', 'string', 'strings'} |
posit | 26 | Mood | Mood | Mood | {'positive', 'positivity'} |
riff | 26 | null | Unmapped | Other | {'riffs', 'riff'} |
folk | 26 | Genre | Genre/Style | Genre/Style | {'folk'} |
sad | 26 | Mood | Mood | Mood | {'sad'} |
chord | 25 | null | Unmapped | Other | {'chord', 'chords'} |
happi | 25 | Mood | Mood | Mood | {'happiness', 'happy'} |
jazz | 25 | Genre | Genre/Style | Genre/Style | {'jazz'} |
rhythm | 24 | Rhythm | Rhythm | Other | {'rhythm', 'rhythms'} |
soft | 24 | Acoustic qualities | Acoustic qualities | Other | {'soft'} |
ambient | 24 | Style | Genre/Style | Genre/Style | {'ambient', 'ambiental'} |
choru | 24 | Structure | Structure | Structure | {'chorus'} |
progress | 23 | null | Unmapped | Other | {'progression', 'progressive', 'progressions', 'progressively', 'progressing', 'progresses'} |
indi | 23 | Genre | Genre/Style | Genre/Style | {'indie'} |
listen | 23 | null | Unmapped | Other | {'listened', 'listening', 'listener', 'listen'} |
rap | 23 | Genre | Genre/Style | Genre/Style | {'rapped', 'rapping', 'rap'} |
vocalist | 23 | Vocals (2) | Vocals | Instrumentation | {'vocalist'} |
emot | 23 | null | Unmapped | Other | {'emotionally', 'emotional', 'emotions', 'emotion'} |
one | 22 | null | Unmapped | Other | {'one'} |
effect | 22 | Acoustic qualities | Acoustic qualities | Other | {'effects', 'effect'} |
base | 22 | null | Unmapped | Other | {'base', 'based'} |
simpl | 22 | null | Unmapped | Other | {'simple'} |
tempo | 21 | Tempo | Tempo | Other | {'tempo'} |
heavi | 21 | Acoustic qualities | Acoustic qualities | Other | {'heavy'} |
synthes | 21 | Instrumentation | Instrumentation | Instrumentation | {'synthesized', 'synthesizers', 'synthesizer'} |
melod | 21 | Acoustic qualities | Acoustic qualities | Other | {'melodic'} |
sung | 21 | null | Unmapped | Other | {'sung'} |
catchi | 21 | Acoustic qualities | Acoustic qualities | Other | {'catchy'} |
build | 20 | null | Unmapped | Other | {'building', 'builds', 'build'} |
strong | 20 | Acoustic qualities | Acoustic qualities | Other | {'strong'} |
repetit | 20 | null | Unmapped | Other | {'repetitive', 'repetitiveness'} |
intro | 20 | Structure | Structure | Structure | {'intro'} |
genr | 19 | Genre | Genre/Style | Genre/Style | {'genres', 'genre'} |
love | 19 | null | Unmapped | Other | {'loving', 'lovely', 'love'} |
later | 19 | null | Unmapped | Other | {'later'} |
s | 19 | null | Unmapped | Other | {"'s"} |
countri | 19 | Genre | Genre/Style | Genre/Style | {'country'} |
brass | 18 | Instrumentation | Instrumentation | Instrumentation | {'brass'} |
distort | 18 | Acoustic qualities | Acoustic qualities | Other | {'distortion', 'distorted'} |
sampl | 18 | null | Unmapped | Other | {'sampled', 'sample', 'samples'} |
evok | 18 | null | Unmapped | Other | {'evoking', 'evokes'} |
soundtrack | 18 | Genre | Genre/Style | Genre/Style | {'soundtrack'} |
ballad | 18 | Style | Genre/Style | Genre/Style | {'ballad'} |
perfect | 18 | null | Unmapped | Other | {'perfect'} |
drive | 18 | null | Unmapped | Other | {'drive', 'driving'} |
live | 17 | null | Unmapped | Other | {'living', 'lively', 'live'} |
hope | 17 | Mood | Mood | Mood | {'hopefully', 'hopeful', 'hope'} |
violin | 17 | Instrumentation | Instrumentation | Instrumentation | {'violins', 'violin'} |
spanish | 17 | Language | Language | Other | {'spanish'} |
fast | 16 | Tempo | Tempo | Other | {'fast'} |
movi | 16 | Usage | Usage | Other | {'movie', 'movies'} |
YAML Metadata Warning:empty or missing yaml metadata in repo card
Check out the documentation for more information.
The Song Describer Dataset: a Corpus of Audio Captions for Music-and-Language Evaluation
Ilaria Manco*1,2,
Benno Weck*3,
Seungheon Doh4,
Minz Won5,
Yixiao Zhang1,
Dmitry Bogdanov3,
Yusong Wu6,
Ke Chen7,
Philip Tovstogan3,
Emmanouil Benetos1,
Elio Quinton2,
George Fazekas1,
Juhan Nam4
1 QMUL, 2 UMG, 3 UPF, 4 KAIST, 5 ByteDance, 6 MILA, 7 UCSD
This repository contains starter code for the Song Describer Dataset (SDD).
- Paper (accepted to the ML for Audio workshop @ NeurIPS 2023)
- Zenodo
- Datasheet
- Hugging Face (HF demo built by @Renumics)
Dataset overview
"A retro-futurist drum machine groove drenched in bubbly synthetic sound effects and a hint of an acid bassline."
"Elegant and sophisticated Latin jazz piece with a Cuban base and a whispered melodic female voice."
"Calm sitar and Indian tabla with dramatic synthetic strings background."
SDD contains ~1.1k captions for 706 permissively licensed music recordings. It is designed for use in evaluation of models that address music-and-language (M&L) tasks such as music captioning, text-to-music generation and music-language retrieval. More information about the data, collection method and validation is provided in the data card, together with more in-depth documentation in the datasheet.
| Subset | Tracks | Captions | Annotators | Cap len (avg) | Vocab size | Audio len |
|---|---|---|---|---|---|---|
| full | 706 | 1106 | 142 | 21.7 ± 12.4 | 2859 | ~ 2 min |
| valid | 546 | 746 | 114 | 18.2 ± 7.6 | 1942 | ~ 2 min |
Downloading the dataset
The dataset is available to download from Zenodo:
wget -P data https://zenodo.org/record/10072001/files/song_describer.csv https://zenodo.org/record/10072001/files/audio.zip
unzip data/audio.zip -d data/audio
A download script is also available here.
Code setup
To use this code, we recommend creating a new python3 virtual environment:
python -m venv venv
source venv/bin/activate
Then, clone the repository and install the dependencies:
git clone https://github.com/mulab-mir/song-describer-dataset.git
cd song-describer-dataset
pip install -r requirements.txt
Reproducing the analysis in the paper
The overview statistics presented in the paper can be reproduced via the code in the dataset_stats.ipynb notebook. Further exploratory analysis of the data can be found in the data_exploration.ipynb notebook
Using the dataset
PyTorch
[Coming soon]
Hugging Face
[coming soon]
Benchmarking M&L models with SDD
[coming soon]
Cite
If you use the dataset or the code in this repo, please consider citing our work:
@inproceedings{manco2023thesong,
title={The Song Describer Dataset: a Corpus of Audio Captions for Music-and-Language Evaluation},
author={Manco, Ilaria and Weck, Benno and Doh, Seungheon and Won, Minz and Zhang, Yixiao and Bogdanov, Dmitry and Wu, Yusong and Chen, Ke and Tovstogan, Philip and Benetos, Emmanouil and Quinton, Elio and Fazekas, György and Nam, Juhan},
booktitle={Machine Learning for Audio Workshop at NeurIPS 2023},
year={2023},
}
License
This repository is released under the MIT License. Please see the LICENSE file for more details. The dataset is released under the CC BY-SA 4.0 license.
Contact
If you have any questions, please get in touch: i.manco@qmul.ac.uk.
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