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ODDN: Addressing Unpaired Data Challenges in Open-World Deepfake Detection on Online Social Networks

Authors :
Tao, Renshuai
Le, Manyi
Tan, Chuangchuang
Liu, Huan
Qin, Haotong
Zhao, Yao
Publication Year :
2024

Abstract

Despite significant advances in deepfake detection, handling varying image quality, especially due to different compressions on online social networks (OSNs), remains challenging. Current methods succeed by leveraging correlations between paired images, whether raw or compressed. However, in open-world scenarios, paired data is scarce, with compressed images readily available but corresponding raw versions difficult to obtain. This imbalance, where unpaired data vastly outnumbers paired data, often leads to reduced detection performance, as existing methods struggle without corresponding raw images. To overcome this issue, we propose a novel approach named the open-world deepfake detection network (ODDN), which comprises two core modules: open-world data aggregation (ODA) and compression-discard gradient correction (CGC). ODA effectively aggregates correlations between compressed and raw samples through both fine-grained and coarse-grained analyses for paired and unpaired data, respectively. CGC incorporates a compression-discard gradient correction to further enhance performance across diverse compression methods in OSN. This technique optimizes the training gradient to ensure the model remains insensitive to compression variations. Extensive experiments conducted on 17 popular deepfake datasets demonstrate the superiority of the ODDN over SOTA baselines.<br />Comment: 9 pages, 4 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.18687
Document Type :
Working Paper