Litcius/Paper detail

Personalised popular music generation using imitation and structure

Shuqi Dai, Xichu Ma, Ye Wang, Roger B. Dannenberg

2022Journal of New Music Research23 citationsDOI

Abstract

Many practices have been presented in music generation recently. While stylistic music generation using deep learning techniques has became the main stream, these models still struggle to generate music with high musicality, different levels of music structure, and controllability. In addition, more application scenarios such as music therapy require imitating more specific musical styles from a few given music examples, rather than capturing the overall genre style of a large data corpus. To address requirements that challenge current deep learning methods, we propose a statistical machine learning model that is able to capture and imitate the structure, melody, chord, and bass style from a given example seed song. An evaluation using 10 pop songs shows that our new representations and methods are able to create high-quality stylistic music that is similar to a given input song. We also discuss potential uses of our approach in music evaluation and music therapy.

Topics & Concepts

Chord (peer-to-peer)MusicalityComputer scienceBass (fish)ImitationPop music automationPopular musicStyle (visual arts)Music and emotionMusicalArtificial intelligenceMusical compositionSpeech recognitionMusic historyVisual artsArtPsychologyDistributed computingSocial psychologyEcologyBiologyMusic and Audio ProcessingMusic Technology and Sound StudiesNeuroscience and Music Perception