Litcius/Paper detail

DefakeHop++: An Enhanced Lightweight Deepfake Detector

Hong-Shuo Chen, Shuowen Hu, Suya You, C.‐C. Jay Kuo

2022APSIPA Transactions on Signal and Information Processing17 citationsDOIOpen Access PDF

Abstract

On the basis of DefakeHop, an enhanced lightweight Deepfake detector called DefakeHop++ is proposed in this work. The improvements lie in two areas. First, DefakeHop examines three facial regions (i.e., two eyes and mouth) while DefakeHop++ includes eight more landmarks for broader coverage. Second, for discriminant features selection, DefakeHop uses an unsupervised approach while DefakeHop++ adopts a more effective approach with supervision, called the Discriminant Feature Test (DFT). In DefakeHop++, rich spatial and spectral features are first derived from facial regions and landmarks automatically. Then, DFT is used to select a subset of discriminant features for classifier training. As compared with MobileNet v3 (a lightweight CNN model of 1.5M parameters targeting at mobile applications), DefakeHop++ has a model of 238K parameters, which is 16% of MobileNet v3. Furthermore, DefakeHop++ outperforms MobileNet v3 in Deepfake image detection performance in a weakly-supervised setting.

Topics & Concepts

DetectorComputer scienceTelecommunicationsAnomaly Detection Techniques and ApplicationsAdvanced Neural Network Applications