Jia Cheng-Kun, Liu Yong-Chao, Chen Ya-Ling
School of Electrical and Information Engineering, Hunan Institute of Traffic Engineering, Hengyang, China.
Front Neurorobot. 2023 Jun 5;17:1182375. doi: 10.3389/fnbot.2023.1182375. eCollection 2023.
Face morphing attacks have become increasingly complex, and existing methods exhibit certain limitations in capturing fine-grained texture and detail changes. To overcome these limitation, in this study, a detection method based on high-frequency features and progressive enhancement learning was proposed. Specifically, in this method, first, high-frequency information are extracted from the three color channels of the image to accurately capture the details and texture changes. Next, a progressive enhancement learning framework was designed to fuse high-frequency information with RGB information. This framework includes self-enhancement and interactive-enhancement modules that progressively enhance features to capture subtle morphing traces. Experiments conducted on the standard database and compared with nine classical technologies revealed that the proposed approach achieved excellent performance.
面部变形攻击变得越来越复杂,并且现有方法在捕捉细粒度纹理和细节变化方面存在一定局限性。为了克服这些局限性,本研究提出了一种基于高频特征和渐进增强学习的检测方法。具体而言,在该方法中,首先从图像的三个颜色通道中提取高频信息,以准确捕捉细节和纹理变化。接下来,设计了一个渐进增强学习框架,将高频信息与RGB信息融合。该框架包括自增强和交互增强模块,这些模块逐步增强特征以捕捉细微的变形痕迹。在标准数据库上进行的实验并与九种经典技术进行比较后发现,所提出的方法取得了优异的性能。