coral / README.md
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---
language:
- da
license: openrail
size_categories:
- 100K<n<1M
task_categories:
- automatic-speech-recognition
- audio-classification
pretty_name: CoRal
dataset_info:
config_name: read_aloud
features:
- name: id_recording
dtype: string
- name: id_sentence
dtype: string
- name: id_speaker
dtype: string
- name: text
dtype: string
- name: location
dtype: string
- name: location_roomdim
dtype: string
- name: noise_level
dtype: string
- name: noise_type
dtype: string
- name: source_url
dtype: string
- name: age
dtype: int64
- name: gender
dtype: string
- name: dialect
dtype: string
- name: country_birth
dtype: string
- name: validated
dtype: string
- name: audio
dtype: audio
- name: asr_prediction
dtype: string
- name: asr_validation_model
dtype: string
- name: asr_wer
dtype: float64
- name: asr_cer
dtype: float64
splits:
- name: train
num_bytes: 124847784243.54341
num_examples: 228960
- name: val
num_bytes: 1085656614.3819659
num_examples: 1991
- name: test
num_bytes: 4362256612.283138
num_examples: 8000
download_size: 121149903977
dataset_size: 130295697470.20853
configs:
- config_name: read_aloud
data_files:
- split: train
path: read_aloud/train-*
- split: val
path: read_aloud/val-*
- split: test
path: read_aloud/test-*
---
# CoRal: Danish Conversational and Read-aloud Dataset
## Dataset Overview
**CoRal** is a comprehensive Automatic Speech Recognition (ASR) dataset designed to
capture the diversity of the Danish language across various dialects, accents, genders,
and age groups. The primary goal of the CoRal dataset is to provide a robust resource
for training and evaluating ASR models that can understand and transcribe spoken Danish
in all its variations.
### Key Features
- **Dialect and Accent Diversity**: The dataset includes speech samples from all major
Danish dialects as well as multiple accents, ensuring broad geographical coverage and
the inclusion of regional linguistic features.
- **Gender Representation**: Both male and female speakers are well-represented,
offering balanced gender diversity.
- **Age Range**: The dataset includes speakers from a wide range of age groups,
providing a comprehensive resource for age-agnostic ASR model development.
- **High-Quality Audio**: All recordings are of high quality, ensuring that the dataset
can be used for both training and evaluation of high-performance ASR models.
### Quick Start
The CoRal dataset is ideal for training ASR models that need to generalise across
different dialects and speaker demographics within the Danish language. Below is an
example of how to load and use the dataset with Hugging Face's `datasets` library:
```python
from datasets import load_dataset
# Load the Coral dataset
coral = load_dataset("alexandrainst/coral", "read_aloud")
# Example: Accessing an audio sample and its transcription
sample = coral['train'][0]
audio = sample['audio']
transcription = sample['text']
print(f"Audio: {audio['array']}")
print(f"Text: {transcription}")
```
## Data Fields
- `id_recording`: Unique identifier for the recording.
- `id_sentence`: Unique identifier for the text being read aloud.
- `id_speaker`: Unique identifier for each speaker.
- `text`: Text being read aloud.
- `location`: Address of recording place.
- `location_roomdim`: Dimension of recording room.
- `noise_level`: Noise level in the room, given in dB.
- `noise_type`: Noise exposed to the speaker while recording. Note the noise is not
present in the audio, but is there to mimic differences in speech in a noisy
environment.
- `source_url`: URL to the source of the text.
- `age`: Age of the speaker.
- `gender`: Gender of the speaker.
- `dialect`: Self-reported dialect of the speaker.
- `country_birth`: Country where the speaker was born.
- `validated`: Manual validation state of the recording.
- `audio`: The audio file of the recording.
- `asr_prediction`: ASR output prediction of the `asr_validation_model`.
- `asr_validation_model`: Hugging Face Model ID used for automatic validation of the
recordings.
- `asr_wer`: Word error rate between `asr_prediction` and `text`.
- `asr_cer`: Character error rate between `asr_prediction` and `text`.
## Read-aloud Data Statistics
### Test Split
There are 12.8 hours of audio in the test split, with 35 speakers, reading 7,853 unique
sentences aloud.
Gender distribution:
- female: 50.6%
- male: 49.4%
Dialect and accent distribution:
- Bornholmsk: 10.3%
- Fynsk: 10.0%
- Københavnsk: 10.5%
- Nordjysk: 9.1%
- Sjællandsk: 8.3%
- Sydømål: 7.5%
- Sønderjysk: 12.0%
- Vestjysk: 10.2%
- Østjysk: 11.4%
- Non-native accent: 10.6%
Age group distribution:
- 0-24: 18.8%
- 25-49: 37.2%
- 50-: 44.1%
### Validation Split
There are 3.06 hours of audio in the validation split, with 11 speakers, reading 1,987
unique sentences aloud.
Gender distribution:
- female: 53.4%
- male: 46.6%
Dialect and accent distribution:
- Bornholmsk: 8.8%
- Fynsk: 10.8%
- Københavnsk: 3.1%
- Nordjysk: 3.4%
- Sjællandsk: 6.8%
- Sydømål: 14.9%
- Sønderjysk: 5.7%
- Vestjysk: 15.3%
- Østjysk: 26.3%
- Non-native accent: 4.9%
Age group distribution:
- 0-24: 35.4%
- 25-49: 40.8%
- 50-: 23.8%
### Train Split
There are 361 hours of audio in the train split, with 547 speakers, reading 150,159
unique sentences aloud.
Gender distribution:
- female: 71.9%
- male: 25.8%
- non-binary: 2.2%
Dialect distribution:
- Bornholmsk: 2.4%
- Fynsk: 4.7%
- Københavnsk: 14.6%
- Nordjysk: 15.8%
- Sjællandsk: 15.6%
- Sydømål: 0.2%
- Sønderjysk: 4.1%
- Vestjysk: 10.7%
- Østjysk: 29.3%
- Non-native accent: 2.5%
Age group distribution:
- 0-24: 6.6%
- 25-49: 39.0%
- 50-: 54.4%
## Conversational Data Statistics
The conversational data is not yet available, but we are working on it and plan to
release it during 2024.
## Example Use Cases
### ASR Model Training
Train robust ASR models that can handle dialectal variations and diverse speaker
demographics in Danish.
### Dialect Studies
Analyse the linguistic features of different Danish dialects.
### Forbidden Use Cases
Speech Synthesis and Biometric Identification are not allowed using the CoRal dataset.
For more information, see addition 4 in our
[license](https://huggingface.co/datasets/alexandrainst/coral/blob/main/LICENSE).
## License
The dataset is licensed under an OpenRAIL-D license, adapted from OpenRAIL-M, which
allows commercial use with a few restrictions (such as speech synthesis and biometric
identification). See
[license](https://huggingface.co/datasets/alexandrainst/coral/blob/main/LICENSE).
## Creators and Funders
The CoRal project is funded by the [Danish Innovation
Fund](https://innovationsfonden.dk/) and consists of the following partners:
- [Alexandra Institute](https://alexandra.dk/)
- [University of Copenhagen](https://www.ku.dk/)
- [Agency for Digital Government](https://digst.dk/)
- [Alvenir](https://www.alvenir.ai/)
- [Corti](https://www.corti.ai/)
## Citation
We will submit a research paper soon, but until then, if you use the CoRal dataset in
your research or development, please cite it as follows:
```bibtex
@dataset{coral2024,
author = {Dan Saattrup Nielsen, Sif Bernstorff Lehmann, Simon Leminen Madsen, Anders Jess Pedersen, Anna Katrine van Zee and Torben Blach},
title = {CoRal: A Diverse Danish ASR Dataset Covering Dialects, Accents, Genders, and Age Groups},
year = {2024},
url = {https://hf.co/datasets/alexandrainst/coral},
}
```