Abstract

Face-morphing operations allow for the generation of digital faces that simultaneously carry the characteristics of two different subjects. It has been demonstrated that morphed faces strongly challenge face-verification systems, as they typically match two different identities. This poses serious security issues in machine-assisted border control applications and calls for techniques to automatically detect whether morphing operations have been previously applied on passport photos. While many proposed approaches analyze the suspect passport photo only, our work operates in a differential scenario, i.e., when the passport photo is analyzed in conjunction with the probe image of the subject acquired at border control to verify that they correspond to the same identity. To this purpose, in this study, we analyze the locations of biologically meaningful facial landmarks identified in the two images, with the goal of capturing inconsistencies in the facial geometry introduced by the morphing process. We report the results of extensive experiments performed on images of various sources and under different experimental settings showing that landmark locations detected through automated algorithms contain discriminative information for identifying pairs with morphed passport photos. Sensitivity of supervised classifiers to different compositions on the training and testing sets are also explored, together with the performance of different derived feature transformations.

Highlights

  • Automated face recognition and verification are widely studied problems in computer vision, for which accurate solutions have been developed and commercialized [1,2]

  • A live probe image of the subject physically present at border control is acquired and compared with the image stored in his/her electronic MachineReadable Travel Documents (eMRTD) via face verification (FV) algorithms, which provide a binary output indicating whether the two images depict the same subject

  • While less timely than the single-image case in detecting anomalies, differential detection can leverage the additional information given by the acquired probe image. We address this differential scenario and focus on the use of geometric face features to determine whether the image pair contains photos of the same subject or the reference eMRTD

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Summary

Introduction

Automated face recognition and verification are widely studied problems in computer vision, for which accurate solutions have been developed and commercialized [1,2] As a result, they are used in security contexts as means for person authentication, representing an alternative to more traditional schemes based on passwords and PINs (Personal Identification Number) and to other biometric traits like fingerprints. They are used in security contexts as means for person authentication, representing an alternative to more traditional schemes based on passwords and PINs (Personal Identification Number) and to other biometric traits like fingerprints This includes applications such as face-based authentication in mobile devices and automated border controls (ABC) through passport photos [3]. In order to aid both algorithmic and human FV, photos in eMRTD must fulfil restrictive quality

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