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Main Authors: Ludvigsen, Martin, Karvonen, Elli, Juvonen, Markus, Siltanen, Samuli
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.04123
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author Ludvigsen, Martin
Karvonen, Elli
Juvonen, Markus
Siltanen, Samuli
author_facet Ludvigsen, Martin
Karvonen, Elli
Juvonen, Markus
Siltanen, Samuli
contents The Helsinki Speech Challenge 2024 (HSC2024) invites researchers to enhance and deconvolve speech audio recordings. We recorded a dataset that challenges participants to apply speech enhancement and inverse problems techniques to recorded speech data. This dataset includes paired samples of AI-generated clean speech and corresponding recordings, which feature varying levels of corruption, including frequency attenuation and reverberation. The challenge focuses on developing innovative deconvolution methods to accurately recover the original audio. The effectiveness of these methods will be quantitatively assessed using a speech recognition model, providing a relevant metric for evaluating enhancements in real-world scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2406_04123
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Helsinki Speech Challenge 2024
Ludvigsen, Martin
Karvonen, Elli
Juvonen, Markus
Siltanen, Samuli
Audio and Speech Processing
The Helsinki Speech Challenge 2024 (HSC2024) invites researchers to enhance and deconvolve speech audio recordings. We recorded a dataset that challenges participants to apply speech enhancement and inverse problems techniques to recorded speech data. This dataset includes paired samples of AI-generated clean speech and corresponding recordings, which feature varying levels of corruption, including frequency attenuation and reverberation. The challenge focuses on developing innovative deconvolution methods to accurately recover the original audio. The effectiveness of these methods will be quantitatively assessed using a speech recognition model, providing a relevant metric for evaluating enhancements in real-world scenarios.
title Helsinki Speech Challenge 2024
topic Audio and Speech Processing
url https://arxiv.org/abs/2406.04123