Applied Sciences (Aug 2023)

ATOSE: Audio Tagging with One-Sided Joint Embedding

  • Jaehwan Lee,
  • Daekyeong Moon,
  • Jik-Soo Kim,
  • Minkyoung Cho

DOI
https://doi.org/10.3390/app13159002
Journal volume & issue
Vol. 13, no. 15
p. 9002

Abstract

Read online

Audio auto-tagging is the process of assigning labels to audio clips for better categorization and management of audio file databases. With the advent of advanced artificial intelligence technologies, there has been increasing interest in directly using raw audio data as input for deep learning models in order to perform tagging and eliminate the need for preprocessing. Unfortunately, most current studies of audio auto-tagging cannot effectively reflect the semantic relationships between tags—for instance, the connection between “classical music” and “cello”. In this paper, we propose a novel method that can enhance audio auto-tagging performance via joint embedding. Our model has been carefully designed and architected to recognize the semantic information within the tag domains. In our experiments using the MagnaTagATune (MTAT) dataset, which has high inter-tag correlations, and the Speech Commands dataset, which has no inter-tag correlations, we showed that our approach improves the performance of existing models when there are strong inter-tag correlations.

Keywords