Performance evaluation of perceptible impulsive noise detection methods based on auditory models

Abstract Reference-free audio quality assessment is a valuable tool in many areas, such as audio recordings, vinyl production, and communication systems. Therefore, evaluating the reliability and performance of such tools is crucial. This paper builds on previous research by analyzing the performanc...

Full description

Saved in:
Bibliographic Details
Main Authors: Arda Özdoğru, František Rund, Karel Fliegel
Format: Article
Language:English
Published: SpringerOpen 2025-01-01
Series:EURASIP Journal on Audio, Speech, and Music Processing
Subjects:
Online Access:https://doi.org/10.1186/s13636-024-00389-9
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832594488794546176
author Arda Özdoğru
František Rund
Karel Fliegel
author_facet Arda Özdoğru
František Rund
Karel Fliegel
author_sort Arda Özdoğru
collection DOAJ
description Abstract Reference-free audio quality assessment is a valuable tool in many areas, such as audio recordings, vinyl production, and communication systems. Therefore, evaluating the reliability and performance of such tools is crucial. This paper builds on previous research by analyzing the performance of four additional algorithms in detecting perceptible impulsive noise (clicks) based on auditory models. We compared the results of eight algorithms, hypothesizing that computationally simpler algorithms could perform as well as more complex ones. We obtained a set of audio signals, with and without clicks, annotated by human subjects from a publicly available dataset. Audio signal sets are categorized based on the obtained annotation results to train the algorithms for different levels of the experiments. Experiments containing cross-validation are done for multiple parameters of algorithms. The algorithm training is based on maximizing a discriminability metric ( $$A'$$ A ′ ). Evaluation criteria of the algorithms included the hit rate, false alarm rate, $$A'$$ A ′ , and computational time. Our findings indicate that computationally simpler auditory models have performed as well as computationally more complex ones, while conventional models exhibit lower performance. Conclusively, the ERBlet transform based algorithm demonstrated superior performance in terms of $$A'$$ A ′ and robustness. This paper provides insights into the capabilities of auditory models in a practical use case of perceptible click detection. The results presented here can help research and develop such algorithms for vinyl production, audio archiving, podcasting, music production, and telecommunications.
format Article
id doaj-art-7c4bf26d030c4513b134538c9b1a2035
institution Kabale University
issn 1687-4722
language English
publishDate 2025-01-01
publisher SpringerOpen
record_format Article
series EURASIP Journal on Audio, Speech, and Music Processing
spelling doaj-art-7c4bf26d030c4513b134538c9b1a20352025-01-19T12:34:01ZengSpringerOpenEURASIP Journal on Audio, Speech, and Music Processing1687-47222025-01-012025111510.1186/s13636-024-00389-9Performance evaluation of perceptible impulsive noise detection methods based on auditory modelsArda Özdoğru0František Rund1Karel Fliegel2Department of Radioelectronics, Faculty of Electrical Engineering, Czech Technical University in PragueDepartment of Radioelectronics, Faculty of Electrical Engineering, Czech Technical University in PragueDepartment of Radioelectronics, Faculty of Electrical Engineering, Czech Technical University in PragueAbstract Reference-free audio quality assessment is a valuable tool in many areas, such as audio recordings, vinyl production, and communication systems. Therefore, evaluating the reliability and performance of such tools is crucial. This paper builds on previous research by analyzing the performance of four additional algorithms in detecting perceptible impulsive noise (clicks) based on auditory models. We compared the results of eight algorithms, hypothesizing that computationally simpler algorithms could perform as well as more complex ones. We obtained a set of audio signals, with and without clicks, annotated by human subjects from a publicly available dataset. Audio signal sets are categorized based on the obtained annotation results to train the algorithms for different levels of the experiments. Experiments containing cross-validation are done for multiple parameters of algorithms. The algorithm training is based on maximizing a discriminability metric ( $$A'$$ A ′ ). Evaluation criteria of the algorithms included the hit rate, false alarm rate, $$A'$$ A ′ , and computational time. Our findings indicate that computationally simpler auditory models have performed as well as computationally more complex ones, while conventional models exhibit lower performance. Conclusively, the ERBlet transform based algorithm demonstrated superior performance in terms of $$A'$$ A ′ and robustness. This paper provides insights into the capabilities of auditory models in a practical use case of perceptible click detection. The results presented here can help research and develop such algorithms for vinyl production, audio archiving, podcasting, music production, and telecommunications.https://doi.org/10.1186/s13636-024-00389-9Audio processingClick detectionPerceptible clicksAuditory modelsPerformance evaluation
spellingShingle Arda Özdoğru
František Rund
Karel Fliegel
Performance evaluation of perceptible impulsive noise detection methods based on auditory models
EURASIP Journal on Audio, Speech, and Music Processing
Audio processing
Click detection
Perceptible clicks
Auditory models
Performance evaluation
title Performance evaluation of perceptible impulsive noise detection methods based on auditory models
title_full Performance evaluation of perceptible impulsive noise detection methods based on auditory models
title_fullStr Performance evaluation of perceptible impulsive noise detection methods based on auditory models
title_full_unstemmed Performance evaluation of perceptible impulsive noise detection methods based on auditory models
title_short Performance evaluation of perceptible impulsive noise detection methods based on auditory models
title_sort performance evaluation of perceptible impulsive noise detection methods based on auditory models
topic Audio processing
Click detection
Perceptible clicks
Auditory models
Performance evaluation
url https://doi.org/10.1186/s13636-024-00389-9
work_keys_str_mv AT ardaozdogru performanceevaluationofperceptibleimpulsivenoisedetectionmethodsbasedonauditorymodels
AT frantisekrund performanceevaluationofperceptibleimpulsivenoisedetectionmethodsbasedonauditorymodels
AT karelfliegel performanceevaluationofperceptibleimpulsivenoisedetectionmethodsbasedonauditorymodels