A transferability-aware covariance alignment network for image steganalysis


연구 분야: Strategies



학회: Multimedia Tools and Applications


초록

Image steganalysis seeks to detect whether the secret information is hidden in images. Recently, to alleviate the distribution discrepancy between the training and test data, domain adaptation-based image steganalysis approaches have attracted much attention. However, existing methods ignore the evaluation of the transferability between datasets and inevitably lead to negative transfer. In this paper, we propose a Transferability-Aware Covariance Alignment Network (TA-CAN) for image steganalysis. This new solution consists of two key strategies: the transferable-aware module (TAM) and the covariance alignment loss (CAL). In TAM, we introduce a texture estimator and design a match query strategy based on texture pools, determining whether data sets can be transferred from one to another. Furthermore, to reduce the discrepancies between datasets with transferability, we leverage CAL to align second-order statistics in different domains. Extensive experiments demonstrate that our proposed algorithm can effectively handle distributional differences between training and test sets.


Author Profile
Jiao Liu

TKLNDST CS Nankai University Tianjin 300071 China

China
Author Profile
Shao-Ping Lu

TKLNDST CS Nankai University Tianjin 300071 China

China
Author Profile
Yulu Yang

TKLNDST CS Nankai University Tianjin 300071 China

China

📄 논문 정보

발행 연도 2023년
인용수 0
출판 국가 China
사이트 Springer
좋아요 수 0

연관 논문 목록 (192건)