MorDeephy: Face Morphing Detection Via Fused Classification
This addresses the challenging problem of detecting morphed face images for security in face recognition systems, representing a novel method for a known bottleneck.
The authors tackled face morphing attack detection by introducing MorDeephy, a deep learning method that achieved state-of-the-art performance and demonstrated strong generalization to unseen scenarios.
Face morphing attack detection (MAD) is one of the most challenging tasks in the field of face recognition nowadays. In this work, we introduce a novel deep learning strategy for a single image face morphing detection, which implies the discrimination of morphed face images along with a sophisticated face recognition task in a complex classification scheme. It is directed onto learning the deep facial features, which carry information about the authenticity of these features. Our work also introduces several additional contributions: the public and easy-to-use face morphing detection benchmark and the results of our wild datasets filtering strategy. Our method, which we call MorDeephy, achieved the state of the art performance and demonstrated a prominent ability for generalising the task of morphing detection to unseen scenarios.