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Visual Privacy Auditing with Diffusion Models

Authors :
Schwethelm, Kristian
Kaiser, Johannes
Knolle, Moritz
Rueckert, Daniel
Kaissis, Georgios
Ziller, Alexander
Schwethelm, Kristian
Kaiser, Johannes
Knolle, Moritz
Rueckert, Daniel
Kaissis, Georgios
Ziller, Alexander
Publication Year :
2024

Abstract

Image reconstruction attacks on machine learning models pose a significant risk to privacy by potentially leaking sensitive information. Although defending against such attacks using differential privacy (DP) has proven effective, determining appropriate DP parameters remains challenging. Current formal guarantees on data reconstruction success suffer from overly theoretical assumptions regarding adversary knowledge about the target data, particularly in the image domain. In this work, we empirically investigate this discrepancy and find that the practicality of these assumptions strongly depends on the domain shift between the data prior and the reconstruction target. We propose a reconstruction attack based on diffusion models (DMs) that assumes adversary access to real-world image priors and assess its implications on privacy leakage under DP-SGD. We show that (1) real-world data priors significantly influence reconstruction success, (2) current reconstruction bounds do not model the risk posed by data priors well, and (3) DMs can serve as effective auditing tools for visualizing privacy leakage.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438535231
Document Type :
Electronic Resource