Advanced music classification using a combination of capsule neural network by upgraded ideal gas molecular movement algorithm

Abstract Music genres classification has long been a challenging task in the field of Music Information Retrieval (MIR) due to the intricate and diverse nature of musical content. Traditional methods have struggled to accurately capture the complex patterns that differentiate one genre from another....

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Main Authors: Peiyan Chen, Jichi Zhang, Arsam Mashhadi
Format: Article
Language:English
Published: Nature Portfolio 2024-12-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-024-81700-8
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author Peiyan Chen
Jichi Zhang
Arsam Mashhadi
author_facet Peiyan Chen
Jichi Zhang
Arsam Mashhadi
author_sort Peiyan Chen
collection DOAJ
description Abstract Music genres classification has long been a challenging task in the field of Music Information Retrieval (MIR) due to the intricate and diverse nature of musical content. Traditional methods have struggled to accurately capture the complex patterns that differentiate one genre from another. However, recent advancements in deep learning have presented new opportunities to tackle this challenge. One such approach is the use of Capsule Neural Networks (CapsNet), which have shown promise in capturing hierarchical relationships within data. Nevertheless, the performance of CapsNet models heavily depends on the optimal configuration of their parameters, which is a complex task. To address this issue, this research proposes a novel methodology that combines CapsNet with an upgraded version of the Ideal Gas Molecular Movement (UIGMM) optimization algorithm. By utilizing the UIGMM algorithm, the parameters of the CapsNet model can be fine-tuned, thereby enhancing its ability to accurately recognize and classify different music genres. The effectiveness of this proposed model is evaluated using three benchmark datasets: ISMIR2004, GTZAN, and Extended Ballroom. Through comparative analysis against state-of-the-art models, the proposed approach demonstrates superior performance, highlighting its potential as a robust tool for music genre classification.
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institution Kabale University
issn 2045-2322
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spelling doaj-art-e00dc066eeed4c6498633ec5fcdb207e2024-12-29T12:24:16ZengNature PortfolioScientific Reports2045-23222024-12-0114111810.1038/s41598-024-81700-8Advanced music classification using a combination of capsule neural network by upgraded ideal gas molecular movement algorithmPeiyan Chen0Jichi Zhang1Arsam Mashhadi2Wenhua CollegeCentral Saint Martins College of Art and Design, University of the Arts LondonArak Branch, Islamic Azad UniversityAbstract Music genres classification has long been a challenging task in the field of Music Information Retrieval (MIR) due to the intricate and diverse nature of musical content. Traditional methods have struggled to accurately capture the complex patterns that differentiate one genre from another. However, recent advancements in deep learning have presented new opportunities to tackle this challenge. One such approach is the use of Capsule Neural Networks (CapsNet), which have shown promise in capturing hierarchical relationships within data. Nevertheless, the performance of CapsNet models heavily depends on the optimal configuration of their parameters, which is a complex task. To address this issue, this research proposes a novel methodology that combines CapsNet with an upgraded version of the Ideal Gas Molecular Movement (UIGMM) optimization algorithm. By utilizing the UIGMM algorithm, the parameters of the CapsNet model can be fine-tuned, thereby enhancing its ability to accurately recognize and classify different music genres. The effectiveness of this proposed model is evaluated using three benchmark datasets: ISMIR2004, GTZAN, and Extended Ballroom. Through comparative analysis against state-of-the-art models, the proposed approach demonstrates superior performance, highlighting its potential as a robust tool for music genre classification.https://doi.org/10.1038/s41598-024-81700-8Music genre classificationCapsule neural networkIdeal gas molecular movementUIGMMDeep learningMetaheuristic algorithm
spellingShingle Peiyan Chen
Jichi Zhang
Arsam Mashhadi
Advanced music classification using a combination of capsule neural network by upgraded ideal gas molecular movement algorithm
Scientific Reports
Music genre classification
Capsule neural network
Ideal gas molecular movement
UIGMM
Deep learning
Metaheuristic algorithm
title Advanced music classification using a combination of capsule neural network by upgraded ideal gas molecular movement algorithm
title_full Advanced music classification using a combination of capsule neural network by upgraded ideal gas molecular movement algorithm
title_fullStr Advanced music classification using a combination of capsule neural network by upgraded ideal gas molecular movement algorithm
title_full_unstemmed Advanced music classification using a combination of capsule neural network by upgraded ideal gas molecular movement algorithm
title_short Advanced music classification using a combination of capsule neural network by upgraded ideal gas molecular movement algorithm
title_sort advanced music classification using a combination of capsule neural network by upgraded ideal gas molecular movement algorithm
topic Music genre classification
Capsule neural network
Ideal gas molecular movement
UIGMM
Deep learning
Metaheuristic algorithm
url https://doi.org/10.1038/s41598-024-81700-8
work_keys_str_mv AT peiyanchen advancedmusicclassificationusingacombinationofcapsuleneuralnetworkbyupgradedidealgasmolecularmovementalgorithm
AT jichizhang advancedmusicclassificationusingacombinationofcapsuleneuralnetworkbyupgradedidealgasmolecularmovementalgorithm
AT arsammashhadi advancedmusicclassificationusingacombinationofcapsuleneuralnetworkbyupgradedidealgasmolecularmovementalgorithm