A deep learning-based mathematical modeling strategy for classifying musical genres in musical industry

Author:

He Xiaoquan1,Dong Fang1

Affiliation:

1. Arts Academy of Shaoxing University , 312000 , Shaoxing , China

Abstract

Abstract Since the beginning of the digital music era, the number of available digital music resources has skyrocketed. The genre of music is a significant classification to use when elaborating music; the role of music tags in locating and categorizing electronic music services is essential. To categorize such a large music archive manually would be prohibitively expensive and time-consuming, rendering it obsolete. This study’s main contributions to knowledge are the following: This article will break down the music into many MIDI (music played on a digital musical instrument) movements, playing way close by analysis movement, character extraction from passages, and character sequencing from movement so that you may get a clearer picture of what you are hearing. The procedure includes the following steps: extracting the note character matrix, extracting the subject and segmentation grouping based on the note character matrix, researching and extracting beneficial characteristics based on the theme of the segments, and composing the feature sequence. It is challenging for the sorter to acquire spatial and contextual knowledge about music using traditional classification techniques due to its shallow structure. This study uses the unique pattern of input MIDI segments, which are used to probe the relationship between recurrent neural networks and attention. The approach for music classification is verified when paired with the testing precision of the same-length segment categorization; thus, gathering MIDI tracks 1920 along with genre tags from the network to construct statistics sets and perform music classification analysis.

Publisher

Walter de Gruyter GmbH

Subject

Computer Networks and Communications,General Engineering,Modeling and Simulation,General Chemical Engineering

Reference19 articles.

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4. Bogdanov D, Porter A, Herrera P, Xavier S. Cross-collection evaluation for music classification tasks. In: Mandel MI, Devaney J, Turnbull D, Tzanetakis G, editors. Proceedings of the 17th International Society for Music Information Retrieval Conference (ISMIR 2016); 2016 Aug 7–11; New York (NY), USA. ISMIR, 2016. p. 379–85.

5. Dannenberg RB, Thom B, Watson D. A machine learning approach to musical style recognition. Proceedings of the International Computer Music Conference; 1997 Sep 25-30; Thessaloniki, Greece. Michigan Publishing, 1997.

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