Detection of Morphed Face Images Using Discriminative Wavelet Sub-bands
Poorya Aghdaie, Baaria Chaudhary, Sobhan Soleymani, Jeremy Dawson,, Nasser M. Nasrabadi

TL;DR
This paper presents a novel morphing attack detection method using discriminative wavelet sub-bands and entropy-based divergence measures, achieving high accuracy across multiple datasets.
Contribution
It introduces a wavelet-based approach with entropy analysis and KL-divergence for selecting discriminative features to detect face morphing attacks.
Findings
Effective detection on VISAPP17, LMA, and MorGAN datasets.
22 discriminative wavelet sub-bands identified.
Deep Neural Network achieves high accuracy.
Abstract
This work investigates the well-known problem of morphing attacks, which has drawn considerable attention in the biometrics community. Morphed images have exposed face recognition systems' susceptibility to false acceptance, resulting in dire consequences, especially for national security applications. To detect morphing attacks, we propose a method which is based on a discriminative 2D Discrete Wavelet Transform (2D-DWT). A discriminative wavelet sub-band can highlight inconsistencies between a real and a morphed image. We observe that there is a salient discrepancy between the entropy of a given sub-band in a bona fide image, and the same sub-band's entropy in a morphed sample. Considering this dissimilarity between these two entropy values, we find the Kullback-Leibler divergence between the two distributions, namely the entropy of the bona fide and the corresponding morphed images.…
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