Tempo estimation via neural networks - a comparative analysis

Autor: Mila Soares de Oliveira de Souza, Pedro Nuno de Souza Moura, Jean-Pierre Briot
Rok vydání: 2021
Zdroj: Anais do XVIII Simpósio Brasileiro de Computação Musical (SBCM 2021).
DOI: 10.5753/sbcm.2021.19420
Popis: This paper presents a comparative analysis on two artificial neural networks (with different architectures) for the task of tempo estimation. For this purpose, it also proposes the modeling, training and evaluation of a B-RNN (Bidirectional Recurrent Neural Network) model capable of estimating tempo in bpm (beats per minutes) of musical pieces, without using external auxiliary modules. An extensive database (12,333 pieces in total) was curated to conduct a quantitative and qualitative analysis over the experiment. Percussion-only tracks were also included inthe dataset. The performance of the B-RNN is compared to that of state-of-the-art models. For further comparison, a state-of-the-art CNN was also retrained with the same datasets used for the B-RNN training. Evaluation results for each model and datasets are presented and discussed, as well as observations and ideas for future research. Tempo estimation was more accurate for the percussion-only dataset, suggesting that the estimation can be more accurate for percussion-only tracks, although further experiments (with more of such datasets) should be made to gather stronger evidence.
Databáze: OpenAIRE