Phase-Aware Joint Beat and Downbeat Estimation Based on Periodicity of Metrical Structure

Main Authors: Takehisa Oyama, Ryoto Ishizuka, Kazuyoshi Yoshii
Format: Proceeding eJournal
Terbitan: ISMIR , 2021
Online Access: https://zenodo.org/record/5624517
Daftar Isi:
  • This paper describes a phase-aware joint beat and downbeat estimation method mainly intended for popular music with a periodic metrical structure and steady tempo. The conventional approach to beat estimation is to train a deep neural network (DNN) that estimates the beat presence probability at each frame. This approach, however, relies heavily on a periodicity-aware post-processing step that detects beat times from the noisy probability sequence. To mitigate this problem, we have designed a DNN that estimates the beat phase at each frame whose period is equal to the beat interval. The estimation losses computed at all frames not limited to a fewer number of beat frames can thus be effectively used for backpropagation-based supervised training, whereas a DNN has conventionally been trained such that it constantly outputs zero at all non-beat frames. The same applies to downbeat estimation. We also modify the post-processing method for the estimated phase sequence. For joint beat and downbeat detection, we investigate multi-task learning architectures that output beat and downbeat phases in this order, in reverse order, and in parallel. The experimental results demonstrate the importance of phase modeling for stable beat and downbeat estimation.