Data quality issues such as off-topic samples, near duplicates, and label errors often limit the performance of audio-based systems. This paper addresses these issues by adapting SelfClean, a representation-to-rank data auditing framework, from the image to the audio domain. This approach leverages self-supervised audio representations to identify common data quality issues, creating ranked review lists that surface distinct issues within a single, unified process. The method is benchmarked on the ESC-50, GTZAN, and a proprietary industrial dataset, using both synthetic and naturally occurring corruptions. The results demonstrate that this framework achieves state-of-the-art ranking performance, often outperforming issue-specific baselines and enabling significant annotation savings by efficiently guiding human review.
@article{arxiv.2509.26291,
title = {Representation-Based Data Quality Audits for Audio},
author = {Alvaro Gonzalez-Jimenez and Fabian Gröger and Linda Wermelinger and Andrin Bürli and Iason Kastanis and Simone Lionetti and Marc Pouly},
journal= {arXiv preprint arXiv:2509.26291},
year = {2025}
}