학술논문

Model Inversion Attack against a Face Recognition System in a Black-Box Setting
Document Type
Conference
Source
2021 Asia-Pacific Signal and Information Processing Association Annual Summit and Conference (APSIPA ASC) Signal and Information Processing Association Annual Summit and Conference (APSIPA ASC), 2021 Asia-Pacific. :1800-1807 Dec, 2021
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Signal Processing and Analysis
Privacy
Image recognition
Target recognition
Face recognition
Perturbation methods
Information processing
Generators
Language
ISSN
2640-0103
Abstract
A DNN-based face recognition system implicitly has the information of facial characteristics of the individuals registered in it. The information could be maliciously revealed or stolen by a model inversion attack (MIA), which causes a serious privacy issue. To clarify how much the threat of MIA is real, methods to perform MIA against a face recognition system have been studied in recent years. Theoretically, MIA is formulated as a problem of finding the best image that maximizes the recognition score outputted by a target recognition system. This can be achieved by a gradient descent technique if the target system is a white box whose network structure and parameters are known, as assumed in the most existing methods. However, this assumption is not necessarily realistic. Unlike the existing methods, in this paper, we propose an MIA method that can be carried out against a black-box system. To enable the proposed method to generate natural-looking face images, we first introduce a deep face generator that generates a face image from a random feature vector, by which MIA is re-defined as a problem of finding the best feature vector instead of the best image. The proposed method solve this problem by a gradient descent technique, where we numerically approximates the gradient of the recognition score by perturbing the current feature vector several times. Our experimental results demonstrate that the proposed method can generate natural-looking face images successfully containing personal facial characteristics, whose performance is comparable to the white-box-oriented existing methods.