Yu Ju Ku
Paper download is intended for registered attendees only, and is
subjected to the IEEE Copyright Policy. Any other use is strongly forbidden.
Papers from this author
An Experimental Evaluation of Recent Face Recognition Losses for Deepfake Detection
Yu-Cheng Liu, Chia-Ming Chang, I-Hsuan Chen, Yu Ju Ku, Jun-Cheng Chen
Auto-TLDR; Deepfake Classification and Detection using Loss Functions for Face Recognition
Abstract Slides Poster Similar
Due to the recent breakthroughs of deep generative models, the fake faces, also known as deepfake which has been abused to deceive the general public, can be easily produced at scale and in very high fidelity. Many works focus on exploring various network architectures or various artifacts produced by deep generative models. Instead, in this work, we focus on the loss functions which have been shown to play a significant role in the context of face recognition. We perform a thorough study of several recent state-of-the-art losses commonly used in face recognition task for deepfake classification and detection since the current deepfake is highly related to face generation. With extensive experiments on the challenging FaceForensic++ and Celeb-DF datasets, the evaluation results provide a clear overview of the performance comparisons of different loss functions and generalization capability across different deepfake data.