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Main Authors: Tailleur, Modan, Pinquier, Julien, Millot, Laurent, Vogel, Corsin, Lagrange, Mathieu
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.17732
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author Tailleur, Modan
Pinquier, Julien
Millot, Laurent
Vogel, Corsin
Lagrange, Mathieu
author_facet Tailleur, Modan
Pinquier, Julien
Millot, Laurent
Vogel, Corsin
Lagrange, Mathieu
contents In this paper, we introduce the Extreme Metal Vocals Dataset, which comprises a collection of recordings of extreme vocal techniques performed within the realm of heavy metal music. The dataset consists of 760 audio excerpts of 1 second to 30 seconds long, totaling about 100 min of audio material, roughly composed of 60 minutes of distorted voices and 40 minutes of clear voice recordings. These vocal recordings are from 27 different singers and are provided without accompanying musical instruments or post-processing effects. The distortion taxonomy within this dataset encompasses four distinct distortion techniques and three vocal effects, all performed in different pitch ranges. Performance of a state-of-the-art deep learning model is evaluated for two different classification tasks related to vocal techniques, demonstrating the potential of this resource for the audio processing community.
format Preprint
id arxiv_https___arxiv_org_abs_2406_17732
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle EMVD dataset: a dataset of extreme vocal distortion techniques used in heavy metal
Tailleur, Modan
Pinquier, Julien
Millot, Laurent
Vogel, Corsin
Lagrange, Mathieu
Sound
Artificial Intelligence
Classical Physics
In this paper, we introduce the Extreme Metal Vocals Dataset, which comprises a collection of recordings of extreme vocal techniques performed within the realm of heavy metal music. The dataset consists of 760 audio excerpts of 1 second to 30 seconds long, totaling about 100 min of audio material, roughly composed of 60 minutes of distorted voices and 40 minutes of clear voice recordings. These vocal recordings are from 27 different singers and are provided without accompanying musical instruments or post-processing effects. The distortion taxonomy within this dataset encompasses four distinct distortion techniques and three vocal effects, all performed in different pitch ranges. Performance of a state-of-the-art deep learning model is evaluated for two different classification tasks related to vocal techniques, demonstrating the potential of this resource for the audio processing community.
title EMVD dataset: a dataset of extreme vocal distortion techniques used in heavy metal
topic Sound
Artificial Intelligence
Classical Physics
url https://arxiv.org/abs/2406.17732