On the Impact of Face Segmentation-Based Background Removal on Recognition and Morphing Attack Detection

arXiv cs.CV / 4/23/2026

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Key Points

  • The paper examines how face background removal using segmentation affects face recognition accuracy and morphing-attack detection under realistic, unconstrained image capture conditions.
  • It is motivated by real-world biometric deployments like the European Entry/Exit System (EES), where controlled capture environments and consistent backgrounds cannot always be guaranteed.
  • The researchers evaluate multiple segmentation techniques, several families of morphing-attack detectors, and multiple face recognition models using datasets that combine controlled and in-the-wild images.
  • The results show that segmentation produces consistent effects on both recognition performance and overall face image quality, and it also systematically changes morphing-attack detection performance.
  • The study concludes that operators of large-scale biometric identification systems must carefully consider preprocessing choices because they can affect both usability (recognition) and security (attack detection).

Abstract

This study investigates the impact of face image background correction through segmentation on face recognition and morphing attack detection performance in realistic, unconstrained image capture scenarios. The motivation is driven by operational biometric systems such as the European Entry/Exit System (EES), which require facial enrolment at airports and other border crossing points where controlled backgrounds usually required for such captures cannot always be guaranteed, as well as by accessibility needs that may necessitate image capture outside traditional office environments. By analyzing how such preprocessing steps influence both recognition accuracy and security mechanisms, this work addresses a critical gap between usability-driven image normalization and the reliability requirements of large-scale biometric identification systems. Our study evaluates a comprehensive range of segmentation techniques, three families of morphing attack detection methods, and four distinct face recognition models, using databases that include both controlled and in-the-wild image captures. The results reveal consistent patterns linking segmentation to both recognition performance and face image quality. Additionally, segmentation is shown to systematically influence morphing attack detection performance. These findings highlight the need for careful consideration when deploying such preprocessing techniques in operational biometric systems.