IET Image Processing (Feb 2024)

ADFF: Adaptive de‐morphing factor framework for restoring accomplice's facial image

  • Min Long,
  • Jun Zhou,
  • Le‐Bing Zhang,
  • Fei Peng,
  • Dengyong Zhang

DOI
https://doi.org/10.1049/ipr2.12962
Journal volume & issue
Vol. 18, no. 2
pp. 470 – 480

Abstract

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Abstract Morphing attacks (MAs) pose a substantial security threat to the Automatic Border Control (ABC) system. While a few morphing attack detection (MAD) methods have been proposed, the face morphing accomplice's facial restoration has not received sufficient attention. Due to the inability to foresee the morphing factor used for a particular morphed image, selecting the appropriate de‐morphing factor becomes a challenging problem in the restoration of the accomplice's facial image. If the morphing factor cannot be chosen reasonably, achieving the desired restoration effect is difficult. Therefore, this paper presents an adaptive de‐morphing factor framework (ADFF) architecture for restoring the accomplice's facial image. By exploiting the morphed images stored in the electronic passport system and the real‐time captured criminal's images, ADFF can effectively restore the accomplice's facial image. Experimental results and analysis show that ADFF can significantly reduce the security threats of MAs on ABC.

Keywords