Deep Belief Network-Based Multifeature Fusion Music Classification Algorithm and Simulation

In this paper, the multifeature fusion music classification algorithm and its simulation results are studied by deep confidence networks, the multifeature fusion music database is established and preprocessed, and then features are extracted. The simulation is carried out using multifeature fusion m...

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Main Author: Tianzhuo Gong
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/8861896
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author Tianzhuo Gong
author_facet Tianzhuo Gong
author_sort Tianzhuo Gong
collection DOAJ
description In this paper, the multifeature fusion music classification algorithm and its simulation results are studied by deep confidence networks, the multifeature fusion music database is established and preprocessed, and then features are extracted. The simulation is carried out using multifeature fusion music data. The multifeature fusion music preprocessing includes endpoint detection, framing, windowing, and pre-emphasis. In this paper, we extracted the rhythm features, sound quality features, and spectral features, including energy, cross-zero rate, fundamental frequency, harmonic noise ratio, and 12 statistical features, including maximum value, mean value, and linear slope. A total of 384-dimensional statistical features was extracted and compared with the classification ability of different emotional features. The deficiencies of the traditional classification algorithm are first studied, and then by introducing confusion, constructing multilevel classifiers, and tuning each level of the classifier, better recognition rates than traditional primary classification are obtained. This paper introduces label information for supervised training to further improve the features of multifunctional fusion music. Experiments show that this information has excellent performance in multifunctional fusion music recognition. The experiments compare the multilevel classifier with primary classification, and the multilevel classification with the primary classification and the classification performance is improved, and the recognition rate of the multilevel classification algorithm is also improved over the multilevel classification algorithm, proving that the excellent performance with multiple levels of classification.
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spelling doaj-art-ad6dd06cb8cd419f8b3b75d4a2d6b5ee2025-08-20T03:39:40ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/88618968861896Deep Belief Network-Based Multifeature Fusion Music Classification Algorithm and SimulationTianzhuo Gong0Music Collage, Harbin Normal University, Harbin 150000, ChinaIn this paper, the multifeature fusion music classification algorithm and its simulation results are studied by deep confidence networks, the multifeature fusion music database is established and preprocessed, and then features are extracted. The simulation is carried out using multifeature fusion music data. The multifeature fusion music preprocessing includes endpoint detection, framing, windowing, and pre-emphasis. In this paper, we extracted the rhythm features, sound quality features, and spectral features, including energy, cross-zero rate, fundamental frequency, harmonic noise ratio, and 12 statistical features, including maximum value, mean value, and linear slope. A total of 384-dimensional statistical features was extracted and compared with the classification ability of different emotional features. The deficiencies of the traditional classification algorithm are first studied, and then by introducing confusion, constructing multilevel classifiers, and tuning each level of the classifier, better recognition rates than traditional primary classification are obtained. This paper introduces label information for supervised training to further improve the features of multifunctional fusion music. Experiments show that this information has excellent performance in multifunctional fusion music recognition. The experiments compare the multilevel classifier with primary classification, and the multilevel classification with the primary classification and the classification performance is improved, and the recognition rate of the multilevel classification algorithm is also improved over the multilevel classification algorithm, proving that the excellent performance with multiple levels of classification.http://dx.doi.org/10.1155/2021/8861896
spellingShingle Tianzhuo Gong
Deep Belief Network-Based Multifeature Fusion Music Classification Algorithm and Simulation
Complexity
title Deep Belief Network-Based Multifeature Fusion Music Classification Algorithm and Simulation
title_full Deep Belief Network-Based Multifeature Fusion Music Classification Algorithm and Simulation
title_fullStr Deep Belief Network-Based Multifeature Fusion Music Classification Algorithm and Simulation
title_full_unstemmed Deep Belief Network-Based Multifeature Fusion Music Classification Algorithm and Simulation
title_short Deep Belief Network-Based Multifeature Fusion Music Classification Algorithm and Simulation
title_sort deep belief network based multifeature fusion music classification algorithm and simulation
url http://dx.doi.org/10.1155/2021/8861896
work_keys_str_mv AT tianzhuogong deepbeliefnetworkbasedmultifeaturefusionmusicclassificationalgorithmandsimulation