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).
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