Wireless Communications and Mobile Computing Multitrack Music Generation Network Based on Music Rules

Author:

Tie Yun12,Wang Tao1ORCID,Jin Cong3,Li Xiaobing2ORCID,Yang Ping4

Affiliation:

1. School of Information and Engineering, Zhengzhou University, 450001, China

2. Department of Music Artificial Intelligence, Central Conservatory of Music, 100031, China

3. School of Information and Communication Engineering, Communication University of China, 100024, China

4. Beijing Polytechnic, 100029, China

Abstract

Multitrack music generation technology is becoming more and more mature, but the existing generation technology cannot reach the desired effect in terms of harmony and matching degree, and most of the generated music does not conform to the music theory knowledge. In order to solve these problems, we propose a multitrack music generation network based on transformer to produce music with high musicality under the guidance of music theory rules. This paper uses an improved version of transformer to learn the information inside a single-track sequence and between different tracks. Then, a combination of music theory rules and crossentropy loss is used to guide the training of the generated network, and the well-designed loss objective function is optimized while the discrimination network is trained. Compared with other multitrack music generation models, the validity of our model is proved.

Funder

Fundamental Research Funds for the Central Universities

Publisher

Hindawi Limited

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Information Systems

Reference20 articles.

1. MuseGAN: Multi-track Sequential Generative Adversarial Networks for Symbolic Music Generation and Accompaniment

2. A Style-Specific Music Composition Neural Network

3. SampleRNN: an unconditional end-to-end neural audio 291 generation model;S. Mehri,2016

4. An intelligent music generation based on variational autoencoder;T. Wang

5. Song from PI: a musically plausible network for pop music generation;H. Chu,2016

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