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Hauptverfasser: Chandra, Shilpa, Pettenò, Matteo, Evans, Nicholas, Panariello, Michele, Todisco, Massimiliano, Bäckström, Tom, Kolossa, Dorothea, Martin, Rainer, Stafylakis, Themos, Gengembre, Nicolas
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.07291
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author Chandra, Shilpa
Pettenò, Matteo
Evans, Nicholas
Panariello, Michele
Todisco, Massimiliano
Bäckström, Tom
Kolossa, Dorothea
Martin, Rainer
Stafylakis, Themos
Gengembre, Nicolas
author_facet Chandra, Shilpa
Pettenò, Matteo
Evans, Nicholas
Panariello, Michele
Todisco, Massimiliano
Bäckström, Tom
Kolossa, Dorothea
Martin, Rainer
Stafylakis, Themos
Gengembre, Nicolas
contents The evaluation of voice anonymisation remains challenging. Current practice relies on automatic speaker verification metrics such as the equal error rate (EER). Performance estimates dependent on the classifier and operating point provide an incomplete or even misleading characterisation of privacy risk. We investigate the use of similarity rank disclosure (SRD), an information-theoretic metric, which operates on feature representations rather than classifier decisions, providing a threshold-independent assessment of privacy and analysis of both average and worst-case disclosure. We report its application to speaker embeddings, fundamental frequency, and phone embeddings using 2024 VoicePrivacy Challenge systems. The SRD reveals privacy leaks and system-specific weaknesses missed by EER-based evaluation. Findings highlight the merit of representation-level metrics and demonstrate the potential of SRD as a flexible and interpretable tool for the evaluation of voice anonymisation.
format Preprint
id arxiv_https___arxiv_org_abs_2605_07291
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Evaluating voice anonymisation using similarity rank disclosure
Chandra, Shilpa
Pettenò, Matteo
Evans, Nicholas
Panariello, Michele
Todisco, Massimiliano
Bäckström, Tom
Kolossa, Dorothea
Martin, Rainer
Stafylakis, Themos
Gengembre, Nicolas
Audio and Speech Processing
The evaluation of voice anonymisation remains challenging. Current practice relies on automatic speaker verification metrics such as the equal error rate (EER). Performance estimates dependent on the classifier and operating point provide an incomplete or even misleading characterisation of privacy risk. We investigate the use of similarity rank disclosure (SRD), an information-theoretic metric, which operates on feature representations rather than classifier decisions, providing a threshold-independent assessment of privacy and analysis of both average and worst-case disclosure. We report its application to speaker embeddings, fundamental frequency, and phone embeddings using 2024 VoicePrivacy Challenge systems. The SRD reveals privacy leaks and system-specific weaknesses missed by EER-based evaluation. Findings highlight the merit of representation-level metrics and demonstrate the potential of SRD as a flexible and interpretable tool for the evaluation of voice anonymisation.
title Evaluating voice anonymisation using similarity rank disclosure
topic Audio and Speech Processing
url https://arxiv.org/abs/2605.07291