CVSep 7, 2022

Facial De-morphing: Extracting Component Faces from a Single Morph

arXiv:2209.02933v119 citationsh-index: 71
Originality Incremental advance
AI Analysis

This addresses a security vulnerability in biometric systems by enabling recovery of identities from morph attacks, which is an incremental improvement over existing methods that require reference images.

The paper tackles the problem of extracting individual face images from a single morphed face image without needing a reference image, achieving high visual realism and biometric similarity in the recovered images.

A face morph is created by strategically combining two or more face images corresponding to multiple identities. The intention is for the morphed image to match with multiple identities. Current morph attack detection strategies can detect morphs but cannot recover the images or identities used in creating them. The task of deducing the individual face images from a morphed face image is known as \textit{de-morphing}. Existing work in de-morphing assume the availability of a reference image pertaining to one identity in order to recover the image of the accomplice - i.e., the other identity. In this work, we propose a novel de-morphing method that can recover images of both identities simultaneously from a single morphed face image without needing a reference image or prior information about the morphing process. We propose a generative adversarial network that achieves single image-based de-morphing with a surprisingly high degree of visual realism and biometric similarity with the original face images. We demonstrate the performance of our method on landmark-based morphs and generative model-based morphs with promising results.

Foundations

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