TL;DR
This paper introduces a face morph detection method that leverages wavelet domain analysis and structured group sparsity in deep neural networks to improve detection accuracy against morphing attacks.
Contribution
It proposes a novel wavelet-based feature extraction combined with structured group sparsity regularization for enhanced face morph detection.
Findings
Effective detection on three facial morph databases
Improved accuracy over baseline methods
Demonstrated robustness to different morphing techniques
Abstract
In this paper, we consider the challenge of face morphing attacks, which substantially undermine the integrity of face recognition systems such as those adopted for use in border protection agencies. Morph detection can be formulated as extracting fine-grained representations, where local discriminative features are harnessed for learning a hypothesis. To acquire discriminative features at different granularity as well as a decoupled spectral information, we leverage wavelet domain analysis to gain insight into the spatial-frequency content of a morphed face. As such, instead of using images in the RGB domain, we decompose every image into its wavelet sub-bands using 2D wavelet decomposition and a deep supervised feature selection scheme is employed to find the most discriminative wavelet sub-bands of input images. To this end, we train a Deep Neural Network (DNN) morph detector using…
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Videos
Morph Detection Enhanced by Structured Group Sparsity· youtube
Taxonomy
MethodsFeature Selection
