SOTAVerified

Exploring Active Data Selection Strategies for Continuous Training in Deepfake Detection

2025-02-11Unverified0· sign in to hype

Yoshihiko Furuhashi, Junichi Yamagishi, Xin Wang, Huy H. Nguyen, Isao Echizen

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

In deepfake detection, it is essential to maintain high performance by adjusting the parameters of the detector as new deepfake methods emerge. In this paper, we propose a method to automatically and actively select the small amount of additional data required for the continuous training of deepfake detection models in situations where deepfake detection models are regularly updated. The proposed method automatically selects new training data from a redundant pool set containing a large number of images generated by new deepfake methods and real images, using the confidence score of the deepfake detection model as a metric. Experimental results show that the deepfake detection model, continuously trained with a small amount of additional data automatically selected and added to the original training set, significantly and efficiently improved the detection performance, achieving an EER of 2.5% with only 15% of the amount of data in the pool set.

Tasks

Reproductions