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Autori principali: Deng, Victor, Wang, Changhong, Richard, Gael, McFee, Brian
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2501.15900
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author Deng, Victor
Wang, Changhong
Richard, Gael
McFee, Brian
author_facet Deng, Victor
Wang, Changhong
Richard, Gael
McFee, Brian
contents In recent years, foundation models have significantly advanced data-driven systems across various domains. Yet, their underlying properties, especially when functioning as feature extractors, remain under-explored. In this paper, we investigate the sensitivity to audio effects of audio embeddings extracted from widely-used foundation models, including OpenL3, PANNs, and CLAP. We focus on audio effects as the source of sensitivity due to their prevalent presence in large audio datasets. By applying parameterized audio effects (gain, low-pass filtering, reverberation, and bitcrushing), we analyze the correlation between the deformation trajectories and the effect strength in the embedding space. We propose to quantify the dimensionality and linearizability of the deformation trajectories induced by audio effects using canonical correlation analysis. We find that there exists a direction along which the embeddings move monotonically as the audio effect strength increases, but that the subspace containing the displacements is generally high-dimensional. This shows that pre-trained audio embeddings do not globally linearize the effects. Our empirical results on instrument classification downstream tasks confirm that projecting out the estimated deformation directions cannot generally improve the robustness of pre-trained embeddings to audio effects.
format Preprint
id arxiv_https___arxiv_org_abs_2501_15900
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Investigating the Sensitivity of Pre-trained Audio Embeddings to Common Effects
Deng, Victor
Wang, Changhong
Richard, Gael
McFee, Brian
Machine Learning
In recent years, foundation models have significantly advanced data-driven systems across various domains. Yet, their underlying properties, especially when functioning as feature extractors, remain under-explored. In this paper, we investigate the sensitivity to audio effects of audio embeddings extracted from widely-used foundation models, including OpenL3, PANNs, and CLAP. We focus on audio effects as the source of sensitivity due to their prevalent presence in large audio datasets. By applying parameterized audio effects (gain, low-pass filtering, reverberation, and bitcrushing), we analyze the correlation between the deformation trajectories and the effect strength in the embedding space. We propose to quantify the dimensionality and linearizability of the deformation trajectories induced by audio effects using canonical correlation analysis. We find that there exists a direction along which the embeddings move monotonically as the audio effect strength increases, but that the subspace containing the displacements is generally high-dimensional. This shows that pre-trained audio embeddings do not globally linearize the effects. Our empirical results on instrument classification downstream tasks confirm that projecting out the estimated deformation directions cannot generally improve the robustness of pre-trained embeddings to audio effects.
title Investigating the Sensitivity of Pre-trained Audio Embeddings to Common Effects
topic Machine Learning
url https://arxiv.org/abs/2501.15900