LGCVMar 3, 2022

Label-Only Model Inversion Attacks via Boundary Repulsion

arXiv:2203.01925v1104 citationsh-index: 30
Originality Highly original
AI Analysis

This addresses a practical security vulnerability for machine learning models, particularly in privacy-sensitive domains like face recognition, by demonstrating a novel attack in a more restrictive scenario.

The paper tackles the problem of model inversion attacks in the label-only setting, where attackers only have access to predicted labels without confidence measures, and introduces BREP-MI, which successfully reconstructs private training data, outperforming blackbox attacks and achieving results comparable to whitebox attacks.

Recent studies show that the state-of-the-art deep neural networks are vulnerable to model inversion attacks, in which access to a model is abused to reconstruct private training data of any given target class. Existing attacks rely on having access to either the complete target model (whitebox) or the model's soft-labels (blackbox). However, no prior work has been done in the harder but more practical scenario, in which the attacker only has access to the model's predicted label, without a confidence measure. In this paper, we introduce an algorithm, Boundary-Repelling Model Inversion (BREP-MI), to invert private training data using only the target model's predicted labels. The key idea of our algorithm is to evaluate the model's predicted labels over a sphere and then estimate the direction to reach the target class's centroid. Using the example of face recognition, we show that the images reconstructed by BREP-MI successfully reproduce the semantics of the private training data for various datasets and target model architectures. We compare BREP-MI with the state-of-the-art whitebox and blackbox model inversion attacks and the results show that despite assuming less knowledge about the target model, BREP-MI outperforms the blackbox attack and achieves comparable results to the whitebox attack.

Code Implementations1 repo
Foundations

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