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.
翻译:面部变形攻击探测(MAD)是当今面部识别领域最具挑战性的任务之一。 在这项工作中,我们为单一图像变形探测引入了一种新的深层次学习战略,这意味着对面部变形图像的区分,同时在复杂的分类制度中对面部识别的复杂任务进行复杂的区分。它用于学习深层面部特征,这些特征包含关于这些特征真实性的信息。我们的工作还引入了另外几项贡献:公众和易于使用的面部变形检测基准以及我们野生数据集过滤战略的结果。我们称之为MorDeephy的方法取得了艺术表现的状态,并展示了将检测任务变形到不可见情景的突出能力。