Tempo vs. Pitch: understanding self-supervised tempo estimation
Giovana V Morais (University of São Paulo); Matthew Davies (INESTEC); Marcelo Queiroz (University of São Paulo); Magdalena Fuentes (New York University)
-
SPS
IEEE Members: $11.00
Non-members: $15.00
Self-supervision methods learn representations by solving pretext tasks that do not require human generated labels, alleviating the need for time-consuming annotations. These methods have been applied in computer vision, natural language processing, environmental sound analysis, and recently in music information retrieval, e.g. for pitch estimation. Particularly in the context of music, there are few insights about the fragility of these models regarding different distributions of data, and how they could be mitigated. In this paper, we explore these questions by dissecting a self-supervised model for pitch estimation but adapted for tempo estimation via rigorous experimentation with synthetic data. Specifically, we study the relationship between the input representation and data distribution for self-supervised tempo estimation.