Biometric Template Protection for Neural-Network-based Face Recognition Systems: A Survey of Methods and Evaluation Techniques

10/11/2021
by   Vedrana Krivokuća Hahn, et al.
0

This paper presents a survey of biometric template protection (BTP) methods for securing face templates in neural-network-based face recognition systems. The BTP methods are categorised into two types: Non-NN and NN-learned. Non-NN methods use a neural network (NN) as a feature extractor, but the BTP part is based on a non-NN algorithm applied at image-level or feature-level. In contrast, NN-learned methods specifically employ a NN to learn a protected template from the unprotected face image/features. We present examples of Non-NN and NN-learned face BTP methods from the literature, along with a discussion of the two categories' comparative strengths and weaknesses. We also investigate the techniques used to evaluate these BTP methods, in terms of the three most common criteria: recognition accuracy, irreversibility, and renewability/unlinkability. As expected, the recognition accuracy of protected face recognition systems is generally evaluated using the same (empirical) techniques employed for evaluating standard (unprotected) biometric systems. On the contrary, most irreversibility and renewability/unlinkability evaluations are based on theoretical assumptions/estimates or verbal implications, with no empirical validation in a practical face recognition context. So, we recommend a greater focus on empirical evaluation strategies, to provide more concrete insights into the irreversibility and renewability/unlinkability of face BTP methods in practice. An exploration of the reproducibility of the studied BTP works, in terms of the public availability of their implementation code and evaluation datasets/procedures, suggests that it would currently be difficult for the BTP community to faithfully replicate (and thus validate) most of the reported findings. So, we advocate for a push towards reproducibility, in the hope of furthering our understanding of the face BTP research field.

READ FULL TEXT
research
04/23/2022

MLP-Hash: Protecting Face Templates via Hashing of Randomized Multi-Layer Perceptron

Applications of face recognition systems for authentication purposes are...
research
07/27/2021

Feature Fusion Methods for Indexing and Retrieval of Biometric Data: Application to Face Recognition with Privacy Protection

Computationally efficient, accurate, and privacy-preserving data storage...
research
04/06/2021

IronMask: Modular Architecture for Protecting Deep Face Template

Convolutional neural networks have made remarkable progress in the face ...
research
07/16/2018

An Extensive Review on Spectral Imaging in Biometric Systems: Challenges and Advancements

Spectral imaging has recently gained traction for face recognition in bi...
research
12/31/2013

A Novel Approach For Generating Face Template Using Bda

In identity management system, commonly used biometric recognition syste...
research
03/09/2022

Evaluating Proposed Fairness Models for Face Recognition Algorithms

The development of face recognition algorithms by academic and commercia...
research
10/01/2021

Towards Protecting Face Embeddings in Mobile Face Verification Scenarios

This paper proposes PolyProtect, a method for protecting the sensitive f...

Please sign up or login with your details

Forgot password? Click here to reset