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Main Authors: Ryu, Myeonghoon, Oh, Hongseok, Lee, Suji, Park, Han
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.06913
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author Ryu, Myeonghoon
Oh, Hongseok
Lee, Suji
Park, Han
author_facet Ryu, Myeonghoon
Oh, Hongseok
Lee, Suji
Park, Han
contents In this study, we introduce a new augmentation technique to enhance the resilience of sound event classification (SEC) systems against device variability through the use of CycleGAN. We also present a unique dataset to evaluate this method. As SEC systems become increasingly common, it is crucial that they work well with audio from diverse recording devices. Our method addresses limited device diversity in training data by enabling unpaired training to transform input spectrograms as if they are recorded on a different device. Our experiments show that our approach outperforms existing methods in generalization by 5.2% - 11.5% in weighted f1 score. Additionally, it surpasses the current methods in adaptability across diverse recording devices by achieving a 6.5% - 12.8% improvement in weighted f1 score.
format Preprint
id arxiv_https___arxiv_org_abs_2401_06913
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Microphone Conversion: Mitigating Device Variability in Sound Event Classification
Ryu, Myeonghoon
Oh, Hongseok
Lee, Suji
Park, Han
Sound
Machine Learning
Multimedia
Audio and Speech Processing
In this study, we introduce a new augmentation technique to enhance the resilience of sound event classification (SEC) systems against device variability through the use of CycleGAN. We also present a unique dataset to evaluate this method. As SEC systems become increasingly common, it is crucial that they work well with audio from diverse recording devices. Our method addresses limited device diversity in training data by enabling unpaired training to transform input spectrograms as if they are recorded on a different device. Our experiments show that our approach outperforms existing methods in generalization by 5.2% - 11.5% in weighted f1 score. Additionally, it surpasses the current methods in adaptability across diverse recording devices by achieving a 6.5% - 12.8% improvement in weighted f1 score.
title Microphone Conversion: Mitigating Device Variability in Sound Event Classification
topic Sound
Machine Learning
Multimedia
Audio and Speech Processing
url https://arxiv.org/abs/2401.06913