Transformation of Nonmultiple Cluster Music Cyclic Shift Topology to Music Performance Style

Music is an abstract art form that uses sound as its means of expression. It has deeply affected our lives. This paper proposes a method for extracting segment features from nonmultiple cluster music files. We divide each piece of music into multiple segments and extract the features of each segment...

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Main Author: Jing Li
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/5590503
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author Jing Li
author_facet Jing Li
author_sort Jing Li
collection DOAJ
description Music is an abstract art form that uses sound as its means of expression. It has deeply affected our lives. This paper proposes a method for extracting segment features from nonmultiple cluster music files. We divide each piece of music into multiple segments and extract the features of each segment. The specific process includes nonmultiple cluster music file note extraction, main melody extraction, segment division, and segment feature extraction. The segment feature is extracted from a segment of a piece of music, contains the main melody and accompaniment information of the segment, and can reflect the sequence relationship of the notes. This paper proposes a performance style conversion network based on recurrent neural network and convolutional neural network. The bidirectional recurrent neural network based on Gated Recurrent Unit (GRU) is used to extract different styles of note feature vector sequences, and the extracted note feature vector sequence is used to predict the intensity of a specific style, and the intensity changes of different styles of nonmultiple cluster music are better learned. Through the comparison, the multiclassification strategy of “one-to-the-rest” is selected, and the fuzzy recurrent neural network is applied to the shortcomings of the unrecognizable area. Finally, according to the feature extraction method and the principle of the classifier algorithm studied in this paper, a music style classification system is implemented in the MATLAB environment. Experimental simulation shows that this system can effectively classify music performance styles.
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spelling doaj-art-28de45612a854dd79e56d4ece54b7e132025-08-20T02:03:54ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/55905035590503Transformation of Nonmultiple Cluster Music Cyclic Shift Topology to Music Performance StyleJing Li0Institute of Education, Chongqing University of Arts and Sciences, Chongqing 402160, ChinaMusic is an abstract art form that uses sound as its means of expression. It has deeply affected our lives. This paper proposes a method for extracting segment features from nonmultiple cluster music files. We divide each piece of music into multiple segments and extract the features of each segment. The specific process includes nonmultiple cluster music file note extraction, main melody extraction, segment division, and segment feature extraction. The segment feature is extracted from a segment of a piece of music, contains the main melody and accompaniment information of the segment, and can reflect the sequence relationship of the notes. This paper proposes a performance style conversion network based on recurrent neural network and convolutional neural network. The bidirectional recurrent neural network based on Gated Recurrent Unit (GRU) is used to extract different styles of note feature vector sequences, and the extracted note feature vector sequence is used to predict the intensity of a specific style, and the intensity changes of different styles of nonmultiple cluster music are better learned. Through the comparison, the multiclassification strategy of “one-to-the-rest” is selected, and the fuzzy recurrent neural network is applied to the shortcomings of the unrecognizable area. Finally, according to the feature extraction method and the principle of the classifier algorithm studied in this paper, a music style classification system is implemented in the MATLAB environment. Experimental simulation shows that this system can effectively classify music performance styles.http://dx.doi.org/10.1155/2021/5590503
spellingShingle Jing Li
Transformation of Nonmultiple Cluster Music Cyclic Shift Topology to Music Performance Style
Complexity
title Transformation of Nonmultiple Cluster Music Cyclic Shift Topology to Music Performance Style
title_full Transformation of Nonmultiple Cluster Music Cyclic Shift Topology to Music Performance Style
title_fullStr Transformation of Nonmultiple Cluster Music Cyclic Shift Topology to Music Performance Style
title_full_unstemmed Transformation of Nonmultiple Cluster Music Cyclic Shift Topology to Music Performance Style
title_short Transformation of Nonmultiple Cluster Music Cyclic Shift Topology to Music Performance Style
title_sort transformation of nonmultiple cluster music cyclic shift topology to music performance style
url http://dx.doi.org/10.1155/2021/5590503
work_keys_str_mv AT jingli transformationofnonmultipleclustermusiccyclicshifttopologytomusicperformancestyle