Using Machine Learning Algorithm to Describe the Connection between the Types and Characteristics of Music Signal

Music classification is conducive to online music retrieval, but the current music classification model finds it difficult to accurately identify various types of music, which makes the classification effect of the current music classification model poor. In order to improve the accuracy of music cl...

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Bibliographic Details
Main Author: Bo Sun
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/5577486
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spelling doaj-af13b75d5b8142f7922bd86eaa20f4442021-04-05T00:00:49ZengHindawi-WileyComplexity1099-05262021-01-01202110.1155/2021/5577486Using Machine Learning Algorithm to Describe the Connection between the Types and Characteristics of Music SignalBo Sun0School of ArtsMusic classification is conducive to online music retrieval, but the current music classification model finds it difficult to accurately identify various types of music, which makes the classification effect of the current music classification model poor. In order to improve the accuracy of music classification, a music classification model based on multifeature fusion and machine learning algorithm is proposed. First, we obtain the music signal, and then extract various features from the classification of the music signal, and use machine learning algorithms to describe the type of music signal and the relationship between the features. The music classifier and deep belief network machine learning models in shallow logistic regression are established, respectively. Experiments were designed for these two models to verify the applicability of the model for music classification. By comparing the experimental results, it is found that the classification accuracy of the deep confidence network model is higher than that of the logistic regression model, but the number of iterations needed for its accuracy to converge is also higher than that of the logistic regression model. Compared with other current music classification models, this model reduces the time of constructing music classifier, speeds up the speed of music classification, and can identify various types of music with high precision. The accuracy of music classification is obviously improved, which verifies the superiority of this music classification model.http://dx.doi.org/10.1155/2021/5577486
collection DOAJ
language English
format Article
sources DOAJ
author Bo Sun
spellingShingle Bo Sun
Using Machine Learning Algorithm to Describe the Connection between the Types and Characteristics of Music Signal
Complexity
author_facet Bo Sun
author_sort Bo Sun
title Using Machine Learning Algorithm to Describe the Connection between the Types and Characteristics of Music Signal
title_short Using Machine Learning Algorithm to Describe the Connection between the Types and Characteristics of Music Signal
title_full Using Machine Learning Algorithm to Describe the Connection between the Types and Characteristics of Music Signal
title_fullStr Using Machine Learning Algorithm to Describe the Connection between the Types and Characteristics of Music Signal
title_full_unstemmed Using Machine Learning Algorithm to Describe the Connection between the Types and Characteristics of Music Signal
title_sort using machine learning algorithm to describe the connection between the types and characteristics of music signal
publisher Hindawi-Wiley
series Complexity
issn 1099-0526
publishDate 2021-01-01
description Music classification is conducive to online music retrieval, but the current music classification model finds it difficult to accurately identify various types of music, which makes the classification effect of the current music classification model poor. In order to improve the accuracy of music classification, a music classification model based on multifeature fusion and machine learning algorithm is proposed. First, we obtain the music signal, and then extract various features from the classification of the music signal, and use machine learning algorithms to describe the type of music signal and the relationship between the features. The music classifier and deep belief network machine learning models in shallow logistic regression are established, respectively. Experiments were designed for these two models to verify the applicability of the model for music classification. By comparing the experimental results, it is found that the classification accuracy of the deep confidence network model is higher than that of the logistic regression model, but the number of iterations needed for its accuracy to converge is also higher than that of the logistic regression model. Compared with other current music classification models, this model reduces the time of constructing music classifier, speeds up the speed of music classification, and can identify various types of music with high precision. The accuracy of music classification is obviously improved, which verifies the superiority of this music classification model.
url http://dx.doi.org/10.1155/2021/5577486
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