Feature Extraction of Music Signal Based on Adaptive Wave Equation Inversion

The digitization, analysis, and processing technology of music signals are the core of digital music technology. There is generally a preprocessing process before the music signal processing. The preprocessing process usually includes antialiasing filtering, digitization, preemphasis, windowing, and...

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Main Authors: Tianzhuo Gong, Sibing Sun
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Advances in Mathematical Physics
Online Access:http://dx.doi.org/10.1155/2021/8678853
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author Tianzhuo Gong
Sibing Sun
author_facet Tianzhuo Gong
Sibing Sun
author_sort Tianzhuo Gong
collection DOAJ
description The digitization, analysis, and processing technology of music signals are the core of digital music technology. There is generally a preprocessing process before the music signal processing. The preprocessing process usually includes antialiasing filtering, digitization, preemphasis, windowing, and framing. Songs in the popular wav format and MP3 format on the Internet are all songs that have been processed by digital technology and do not need to be digitalized. Preprocessing can affect the effectiveness and reliability of the feature parameter extraction of music signals. Since the music signal is a kind of voice signal, the processing of the voice is also applicable to the music signal. In the study of adaptive wave equation inversion, the traditional full-wave equation inversion uses the minimum mean square error between real data and simulated data as the objective function. The gradient direction is determined by the cross-correlation of the back propagation residual wave field and the forward simulation wave field with respect to the second derivative of time. When there is a big gap between the initial model and the formal model, the phenomenon of cycle jumping will inevitably appear. In this paper, adaptive wave equation inversion is used. This method adopts the idea of penalty function and introduces the Wiener filter to establish a dual objective function for the phase difference that appears in the inversion. This article discusses the calculation formulas of the accompanying source, gradient, and iteration step length and uses the conjugate gradient method to iteratively reduce the phase difference. In the test function group and the recorded music signal library, a large number of simulation experiments and comparative analysis of the music signal recognition experiment were performed on the extracted features, which verified the time-frequency analysis performance of the wave equation inversion and the improvement of the decomposition algorithm. The features extracted by the wave equation inversion have a higher recognition rate than the features extracted based on the standard decomposition algorithm, which verifies that the wave equation inversion has a better decomposition ability.
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spelling doaj-art-bb0c3bfcf2fd44b2b881cb9fa5308c3a2025-02-03T01:08:51ZengWileyAdvances in Mathematical Physics1687-91201687-91392021-01-01202110.1155/2021/86788538678853Feature Extraction of Music Signal Based on Adaptive Wave Equation InversionTianzhuo Gong0Sibing Sun1Music Collage, Capital Normal University, Beijing 100000, ChinaSchool of Music, Harbin Normal University, Harbin 150080, ChinaThe digitization, analysis, and processing technology of music signals are the core of digital music technology. There is generally a preprocessing process before the music signal processing. The preprocessing process usually includes antialiasing filtering, digitization, preemphasis, windowing, and framing. Songs in the popular wav format and MP3 format on the Internet are all songs that have been processed by digital technology and do not need to be digitalized. Preprocessing can affect the effectiveness and reliability of the feature parameter extraction of music signals. Since the music signal is a kind of voice signal, the processing of the voice is also applicable to the music signal. In the study of adaptive wave equation inversion, the traditional full-wave equation inversion uses the minimum mean square error between real data and simulated data as the objective function. The gradient direction is determined by the cross-correlation of the back propagation residual wave field and the forward simulation wave field with respect to the second derivative of time. When there is a big gap between the initial model and the formal model, the phenomenon of cycle jumping will inevitably appear. In this paper, adaptive wave equation inversion is used. This method adopts the idea of penalty function and introduces the Wiener filter to establish a dual objective function for the phase difference that appears in the inversion. This article discusses the calculation formulas of the accompanying source, gradient, and iteration step length and uses the conjugate gradient method to iteratively reduce the phase difference. In the test function group and the recorded music signal library, a large number of simulation experiments and comparative analysis of the music signal recognition experiment were performed on the extracted features, which verified the time-frequency analysis performance of the wave equation inversion and the improvement of the decomposition algorithm. The features extracted by the wave equation inversion have a higher recognition rate than the features extracted based on the standard decomposition algorithm, which verifies that the wave equation inversion has a better decomposition ability.http://dx.doi.org/10.1155/2021/8678853
spellingShingle Tianzhuo Gong
Sibing Sun
Feature Extraction of Music Signal Based on Adaptive Wave Equation Inversion
Advances in Mathematical Physics
title Feature Extraction of Music Signal Based on Adaptive Wave Equation Inversion
title_full Feature Extraction of Music Signal Based on Adaptive Wave Equation Inversion
title_fullStr Feature Extraction of Music Signal Based on Adaptive Wave Equation Inversion
title_full_unstemmed Feature Extraction of Music Signal Based on Adaptive Wave Equation Inversion
title_short Feature Extraction of Music Signal Based on Adaptive Wave Equation Inversion
title_sort feature extraction of music signal based on adaptive wave equation inversion
url http://dx.doi.org/10.1155/2021/8678853
work_keys_str_mv AT tianzhuogong featureextractionofmusicsignalbasedonadaptivewaveequationinversion
AT sibingsun featureextractionofmusicsignalbasedonadaptivewaveequationinversion