Optimization of Music Feature Recognition System for Internet of Things Environment Based on Dynamic Time Regularization Algorithm

Because of the difficulty of music feature recognition due to the complex and varied music theory knowledge influenced by music specialization, we designed a music feature recognition system based on Internet of Things (IoT) technology. The physical sensing layer of the system places sound sensors a...

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Main Author: Hong Kai
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/9562579
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author Hong Kai
author_facet Hong Kai
author_sort Hong Kai
collection DOAJ
description Because of the difficulty of music feature recognition due to the complex and varied music theory knowledge influenced by music specialization, we designed a music feature recognition system based on Internet of Things (IoT) technology. The physical sensing layer of the system places sound sensors at different locations to collect the original music signals and uses a digital signal processor to carry out music signal analysis and processing. The network transmission layer transmits the completed music signals to the music signal database in the application layer of the system. The music feature analysis module of the application layer uses a dynamic time regularization algorithm to obtain the maximum similarity between the test template and the reference. The music feature analysis module of the application layer uses the dynamic time regularization algorithm to obtain the maximum similarity between the test template and the reference template to realize the feature recognition of the music signal and determine the music pattern and music emotion corresponding to the music feature content according to the recognition result. The experimental results show that the system operates stably, can capture high-quality music signals, and can correctly identify music style features and emotion features. The results of this study can meet the needs of composers’ assisted creation and music researchers’ analysis of a large amount of music data, and the results can be further transferred to deep music learning research, human-computer interaction music creation, application-based music creation, and other fields for expansion.
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publishDate 2021-01-01
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spelling doaj-art-0e44dd1b4c314df5bac1290c875ebef02025-02-03T05:51:12ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/95625799562579Optimization of Music Feature Recognition System for Internet of Things Environment Based on Dynamic Time Regularization AlgorithmHong Kai0Department of P.E. and Art Education, Zhejiang Yuexiu University, Shaoxing 312000, Zhejiang, ChinaBecause of the difficulty of music feature recognition due to the complex and varied music theory knowledge influenced by music specialization, we designed a music feature recognition system based on Internet of Things (IoT) technology. The physical sensing layer of the system places sound sensors at different locations to collect the original music signals and uses a digital signal processor to carry out music signal analysis and processing. The network transmission layer transmits the completed music signals to the music signal database in the application layer of the system. The music feature analysis module of the application layer uses a dynamic time regularization algorithm to obtain the maximum similarity between the test template and the reference. The music feature analysis module of the application layer uses the dynamic time regularization algorithm to obtain the maximum similarity between the test template and the reference template to realize the feature recognition of the music signal and determine the music pattern and music emotion corresponding to the music feature content according to the recognition result. The experimental results show that the system operates stably, can capture high-quality music signals, and can correctly identify music style features and emotion features. The results of this study can meet the needs of composers’ assisted creation and music researchers’ analysis of a large amount of music data, and the results can be further transferred to deep music learning research, human-computer interaction music creation, application-based music creation, and other fields for expansion.http://dx.doi.org/10.1155/2021/9562579
spellingShingle Hong Kai
Optimization of Music Feature Recognition System for Internet of Things Environment Based on Dynamic Time Regularization Algorithm
Complexity
title Optimization of Music Feature Recognition System for Internet of Things Environment Based on Dynamic Time Regularization Algorithm
title_full Optimization of Music Feature Recognition System for Internet of Things Environment Based on Dynamic Time Regularization Algorithm
title_fullStr Optimization of Music Feature Recognition System for Internet of Things Environment Based on Dynamic Time Regularization Algorithm
title_full_unstemmed Optimization of Music Feature Recognition System for Internet of Things Environment Based on Dynamic Time Regularization Algorithm
title_short Optimization of Music Feature Recognition System for Internet of Things Environment Based on Dynamic Time Regularization Algorithm
title_sort optimization of music feature recognition system for internet of things environment based on dynamic time regularization algorithm
url http://dx.doi.org/10.1155/2021/9562579
work_keys_str_mv AT hongkai optimizationofmusicfeaturerecognitionsystemforinternetofthingsenvironmentbasedondynamictimeregularizationalgorithm