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Catalan Common Voice v17 - metadata annotated version
Dataset Summary
This version of the Catalan sentences of the Common Voice corpus (v17) includes metadata (gender and accent) for 263 speakers annotated by a team of experts.
They correspond to the speakers who have recorded more than 1200 seconds of Speech in v13.
We release these annotations (annotated_accent and annotated_gender fields)
along with information about the agreement among the annotators (annotated_accent_agreement and annotated_gender_agreement).
The overall quality of the recordings has also been annotated for these speakers (mean_quality and stdev_quality fields).
Additionally, since for certain users self-declared information appears only in some of their recordings (client_id field),
we have created new columns with metadata extracted from other recordings of the same user (propagated_gender and propagated_accents fields).
To facilitate data analysis and classification tasks,
we have normalized the information in the free-form accents field to the predefined list used until version 8 of the corpus (propagated_accents_norm).
For each user, we have added the fields assigned_accent and assigned_gender.
For speakers annotated by the team of experts, this information is derived from their annotations.
For other speakers, we have extracted this information from their self-declared data.
See annotations for more details.
Supported Tasks and Leaderboards
Automatic Speech Recognition, Gender classification, Accent classification.
Languages
The dataset is in Catalan (ca).
Dataset Structure
Data Instances
{
'client_id': '69dafb41ddc0ea2785719305fdc5c8d79c4b2829d9f3325bda707dcaa553f95c5fbf4b072970d9004d3e31543fcb2c55e252dc904c4fb5aee2a5e5500df90967',
'path': 'common_voice_ca_19909748.mp3',
'sentence': 'En el carrer de l'església es troben bona part dels edificis importants de la vila.',
'up_votes': 2,
'down_votes': 0,
'age': 'thirties',
'gender': 'male',
'accent': 'balear',
'variant': '',
'locale': 'ca',
'segment': '',
'mean quality': '4.0',
'stdev quality': '0.0',
'annotated_accent': 'balearic',
'annotated_accent_agreement': '100.0',
'annotated_gender': 'male_masculine',
'annotated_gender_agreement': '100.0',
'propagated_gender': 'male_masculine',
'propagated_accents': 'balear',
'propagated_accents_normalized': 'balearic',
'assigned_accent': 'balearic',
'assigned_gender': 'male'
}
Data Fields
Most of the data fields come from the original Common Voice corpus:
client_id(string): An id for which client (voice) made the recordingpath(string): The path to the audio filesentence_id(string): An id for the text sentencesentence(string): The sentence the user was prompted to speaksentence_domain(string): Semantic domain of the sentenceup_votes(int64): How many upvotes the audio file has received from reviewersdown_votes(int64): How many downvotes the audio file has received from reviewersage(string): Self-reported age of the speaker (e.g. teens, twenties, fifties)gender(string): Self-reported gender of the speakeraccent(string): Self-reported accent of the speakerlocale(string): The locale of the speakersegment(string): Usually an empty field
In this version of the corpus, we have added the following fields:
annotated_gender(string): Annotated gender by the experts team.annotated_gender_agreement(float): Agreement whithin the annotation team about the gender of the speaker.annotated_accent(string): Annotated accent by the experts team. The accents considered are: Balearic, Central, Northern, Northwestern, Valencian.annotated_accent_agreement(float): Agreement whithin the annotaion team about the accent of the speaker.mean quality(float): Mean annotated quality of the speakers' recording.stdev quality(float): Deviation in the quality annotation between annotators.propagated_gender(string): Self-declared gender as indicated in certain recordings by the user. Speakers that change self-declared gender have been labeled as "other.propagated_accents(string): Self-declared accent as indicated in certain recordings by the user. See annotations for more information.propagated_accents_normalized(string): Propagated accent, normalized to the closed-options list used until version 7.assigned_accent(string): Accent assigned to the speaker.assigned_gender(string): Gender assigned to the speaker.
Data Splits
Same splits than in the original Common Voice corpus
The reported.tsv file hasn't been annotated because it doesn't contain information about the speakers.
| split | sentences | manually annotated | % man annot | self-defined accent | % self-d accent | assig accent | % assig accent | self-defined gender | % sd gender | assig gender | % ag gender |
|---|---|---|---|---|---|---|---|---|---|---|---|
| annotated_dev.tsv | 16391 | 0 | 0.0 | 2374 | 14.48 | 2391 | 14.59 | 899 | 5.48 | 924 | 5.64 |
| annotated_train.tsv | 1142932 | 219711 | 19.22 | 666672 | 58.33 | 836843 | 73.22 | 718620 | 62.88 | 854209 | 74.74 |
| annotated_other.tsv | 489510 | 169583 | 34.64 | 247831 | 50.63 | 423430 | 86.5 | 398199 | 81.35 | 422862 | 86.38 |
| annotated_test.tsv | 16402 | 0 | 0.0 | 2922 | 17.81 | 3024 | 18.44 | 755 | 4.6 | 785 | 4.79 |
| annotated_invalidated.tsv | 109232 | 14712 | 13.47 | 65596 | 60.05 | 74399 | 68.11 | 66878 | 61.23 | 75802 | 69.4 |
| annotated_validated.tsv | 1817954 | 368602 | 20.28 | 1136712 | 62.53 | 1417174 | 77.95 | 1241752 | 68.3 | 1437806 | 79.09 |
Dataset Creation
Curation Rationale
During 2022, a campaign was launched to promote the Common Voice corpus within the Catalan-speaking community, achieving remarkable success. However, not all participants provided their demographic details such as age, gender, and accent. Additionally, some individuals faced difficulty in self-defining their accent using the standard classifications established by specialists.
In order to obtain a balanced corpus with reliable information, we have seen the the necessity of enlisting a group of experts from the University of Barcelona to provide accurate annotations.
We hope that this corpus will be a useful contribution to the development of ASR tasks in Catalan.
Source Data
The original data comes from the Catalan subset of the Common Voice corpus.
Initial Data Collection and Normalization
Starting with version 13 of the Common Voice corpus we identified the speakers (273) who have recorded more than 1200 seconds of speech. A team of three annotators was tasked with annotating:
- if all the recordings correspond to the same person.
- the gender of the speaker
- the accent of the speaker
- the quality of the recording
These annotations have been published in Zenodo.
They did a first round annotation, commented their different opinions and then, a second round. For this version of the corpus we used the annotations from the second round, and selected the IDs (263) where there was agreement between the annotators that correspond to a single person.
Who are the source language producers?
The original data comes from the Catalan sentences of the Common Voice corpus.
Annotations
From the original data in the Common Voice corpus the following fields have been added:
annotated_gender(string): Annotated Gender by the experts team. It can be 'male' or 'female'annotated_gender_agreement(float): Agreement within the annotation team about the gender of the speaker.annotated_accent(string): Annotated Accent by the experts team. The accents considered are: Balearic, Central, Northern, Northwestern, Valencian.annotated_accent_agreement(float): Agreement within the annotation team about the accent of the speaker.mean quality(float): Mean annotated quality of the speakers' recording.stdev quality(float): Deviation in the quality of annotation between annotators.propagated_gender(string): Self-declared gender as indicated in certain recordings by the user. If there is a variation in the self-declared gender, "other" is assigned.propagated_accents(string): Self-declared accent as indicated in certain recordings by the user. If there is variation between different accents, the majority accent is propagated.propagated_accents_normalized(string): Propagated accent, normalized to the closed-options list used until version 7 (Balearic, Central, Northern, Northwestern, Valencian).assigned_accent(string): Accent assigned to the speaker. If the speaker has an expert annotation, it is prioritized. Otherwise, the propagated_accents_normalized option will be chosen. If expert annotation is not available andpropagated_accents_normalizedis not available either, thevariantoption is assigned. If none of these options are assigned, the field is left empty.assigned_gender(string): Gender assigned to the speaker. If the speaker has an expert annotation, it is prioritized. Otherwise, the propagated gender is assigned. If none of these options are assigned, the field is left empty.
Annotation process
273 speaker ID have been annotated. However, 10 of them have been discarded because they didn't correspond to a single individual.
The selected 263 speakers ID correspond to a total of 361,687 sentences in the validated split (20.18% of the total).
The full annotations made by the team of experts are available at Zenodo.
Who are the annotators?
The annotation was entrusted to the CLiC (Centre de Llenguatge i Computació) team from the University of Barcelona. They selected a group of three annotators (two men and one woman), who received a scholarship to do this work.
The annotation team was composed of:
- 2 male annotators, aged 18-25, L1 Catalan, students in the Catalan Philology degree.
- 1 female annotator, aged 18-25, L1 Catalan, student in the Modern Languages and Literatures degree, with a focus on Catalan.
- 1 female supervisor, aged 40-50, L1 Catalan, graduate in Physics and Linguistics, Ph.D. in Signal Theory and Communications.
To do the annotation they used a Google Drive spreadsheet
Personal and Sensitive Information
The dataset consists of people who have donated their voice online. You agree to not attempt to determine the identity of speakers in the Common Voice dataset.
Considerations for Using the Data
Social Impact of Dataset
The dataset consists of people who have donated their voice online. You agree to not attempt to determine the identity of speakers in the Common Voice dataset.
We hope that this corpus will be a useful contribution to the development of ASR tasks in Catalan
Discussion of Biases
Most of the voices of the common voice in Catalan correspond to men with a central accent between 40 and 60 years old. The aim of this dataset is to provide information that allows to minimize the biases that this could cause.
Regarding the content of the recorded sentences, we consider that the Common Voice validation system is efficient in removing those that could produce toxic content.
Other Known Limitations
[N/A]
Additional Information
Dataset Curators
Language Technologies Unit at the Barcelona Supercomputing Center ([email protected])
This work has been promoted and financed by the Generalitat de Catalunya through the Aina project.
Licensing Information
This dataset is licensed under a CC BY 4.0 license.
It can be used for any purpose, whether academic or commercial, under the terms of the license. Give appropriate credit, provide a link to the license, and indicate if changes were made.
Citation Information
DOI []
Contributions
The annotation was entrusted to the STeL team from the University of Barcelona.
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