English

Computer Audition: From Task-Specific Machine Learning to Foundation Models

Sound 2025-07-29 v2 Audio and Speech Processing

Abstract

Foundation models (FMs) are increasingly spearheading recent advances on a variety of tasks that fall under the purview of computer audition -- the use of machines to understand sounds. They feature several advantages over traditional pipelines: among others, the ability to consolidate multiple tasks in a single model, the option to leverage knowledge from other modalities, and the readily-available interaction with human users. Naturally, these promises have created substantial excitement in the audio community, and have led to a wave of early attempts to build new, general-purpose foundation models for audio. In the present contribution, we give an overview of computational audio analysis as it transitions from traditional pipelines towards auditory foundation models. Our work highlights the key operating principles that underpin those models, and showcases how they can accommodate multiple tasks that the audio community previously tackled separately.

Keywords

Cite

@article{arxiv.2407.15672,
  title  = {Computer Audition: From Task-Specific Machine Learning to Foundation Models},
  author = {Andreas Triantafyllopoulos and Iosif Tsangko and Alexander Gebhard and Annamaria Mesaros and Tuomas Virtanen and Björn Schuller},
  journal= {arXiv preprint arXiv:2407.15672},
  year   = {2025}
}

Comments

Accepted for publication to the Proceedings of the IEEE