CVCRSep 3, 2020

MIPGAN -- Generating Strong and High Quality Morphing Attacks Using Identity Prior Driven GAN

arXiv:2009.01729v315 citations
AI Analysis

This work addresses security vulnerabilities in face recognition systems, posing a high threat by enabling stronger attacks, but it is incremental as it extends an earlier framework with a novel loss function.

The authors tackled the problem of generating high-quality face morphing attacks to circumvent Face Recognition Systems (FRS), resulting in a method that produces morphed images with minimal artefacts and high resolution, demonstrating high success rates in vulnerability assessments against commercial and deep learning-based FRS.

Face morphing attacks target to circumvent Face Recognition Systems (FRS) by employing face images derived from multiple data subjects (e.g., accomplices and malicious actors). Morphed images can be verified against contributing data subjects with a reasonable success rate, given they have a high degree of facial resemblance. The success of morphing attacks is directly dependent on the quality of the generated morph images. We present a new approach for generating strong attacks extending our earlier framework for generating face morphs. We present a new approach using an Identity Prior Driven Generative Adversarial Network, which we refer to as MIPGAN (Morphing through Identity Prior driven GAN). The proposed MIPGAN is derived from the StyleGAN with a newly formulated loss function exploiting perceptual quality and identity factor to generate a high quality morphed facial image with minimal artefacts and with high resolution. We demonstrate the proposed approach's applicability to generate strong morphing attacks by evaluating its vulnerability against both commercial and deep learning based Face Recognition System (FRS) and demonstrate the success rate of attacks. Extensive experiments are carried out to assess the FRS's vulnerability against the proposed morphed face generation technique on three types of data such as digital images, re-digitized (printed and scanned) images, and compressed images after re-digitization from newly generated MIPGAN Face Morph Dataset. The obtained results demonstrate that the proposed approach of morph generation poses a high threat to FRS.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes