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stem
stringlengths
1
26
count
float64
1
358
facet
stringclasses
16 values
facet_simple
stringclasses
14 values
top_facets
stringclasses
6 values
mapped
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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'}
End of preview. Expand in Data Studio

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

License: MIT arXiv DOI Huggingface

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

* equal contribution

This repository contains starter code for the Song Describer Dataset (SDD).

Dataset overview

https://github.com/mulab-mir/song-describer-dataset/assets/13520622/347133af-dac0-4d40-92b6-c2fae6742927

"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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