Proceedings of the Korean Society of Broadcast Engineers Conference (한국방송∙미디어공학회:학술대회논문집)
- 2019.11a
- /
- Pages.58-60
- /
- 2019
Anti-Forensic Against Double JPEG Compression Detection Using Adversarial Generative Network
이중압축 검출기술에 대한 GAN 기반 안티 포렌식 기술
- Uddin, Kutub (Korea Aerospace University) ;
- Yang, Yoonmo (Korea Aerospace University) ;
- Oh, Byung Tae (Korea Aerospace University)
- Published : 2019.11.29
Abstract
Double JPEG compression detection is one of the most important ways of exposing the integrity of the JPEG image in image forensics. Several methods have been proposed for discriminating against the double JPEG image. In this paper, we propose a new method for restoring the JPEG compressed image and making the detector confused by introducing a Generative Adversarial Network (GAN). First, a generator network is designed for restoring the JPEG compressed image and analyzed the quality. Then, the restored image is tested with the double compression detector for evaluating the robustness of the proposed GAN model. The detection accuracy reduces from 98% to 58%.
Keywords