LooPy: A Research-Friendly Mix Framework for Music Information Retrieval on Electronic Dance Music
Published:
Recommended citation: X. Li, ‘LooPy: A Research-Friendly Mix Framework for Music Information Retrieval on Electronic Dance Music’, *arXiv [cs.SD]*. 2023. https://arxiv.org/pdf/2305.01051.pdf
Abstract
Music information retrieval (MIR) has gone through an explosive development with the advancement of deep learning in recent years. However, music genres like electronic dance music (EDM) has always been relatively less investigated compared to others. Considering its wide range of applications, we present a Python package for automated EDM audio generation as an infrastructure for MIR for EDM songs, to mitigate the difficulty of acquiring labelled data. It is a convenient tool that could be easily concatenated to the end of many symbolic music generation pipelines. Inside this package, we provide a framework to build professional-level templates that could render a well-produced track from specified melody and chords, or produce massive tracks given only a specific key by our probabilistic symbolic melody generator. Experiments show that our mixes could achieve the same quality of the original reference songs produced by world-famous artists, with respect to both subjective and objective criteria. Our code is accessible in this repository: this https URL and the official site of the project is also online at this https URL.