4.7 Article

Explicit Optimization of min max Steganographic Game

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIFS.2020.3021913

关键词

Steganography; steganalysis; game theory; distortion function

资金

  1. French National Research Agency [ANR-18-ASTR-0009]
  2. ALASKA Project
  3. French ANR DEFALS Program [ANR-16-DEFA-0003]
  4. OP VVV under Project Research Center for Informatics [CZ.02.1.01/0.0/0.0/16_019/0000765]
  5. Czech Ministry of Education [19-29680L]
  6. HPC Resources of IDRIS by Grand Equipement National de Calcul Intensif (GENCI) [2019-AD011011259]
  7. Agence Nationale de la Recherche (ANR) [ANR-18-ASTR-0009] Funding Source: Agence Nationale de la Recherche (ANR)

向作者/读者索取更多资源

The proposed algorithm aims to enhance the practical security of classical steganographic methods by selecting the least detectable stego image to simulate the game between Alice and Eve. Through extensive evaluation, the algorithm shows potential to increase practical security by effectively hiding information from classifiers.
This article proposes an algorithm which allows Alice to simulate the game played between her and Eve. Under the condition that the set of detectors that Alice assumes Eve to have is sufficiently rich (e.g. CNNs), and that she has an algorithm enabling to avoid detection by a single classifier (e.g adversarial embedding, gibbs sampler, dynamic STCs), the proposed algorithm converges to an efficient steganographic algorithm. This is possible by using a min max strategy which consists at each iteration in selecting the least detectable stego image for the best classifier among the set of Eve's learned classifiers. The algorithm is extensively evaluated and compared to prior arts and results show the potential to increase the practical security of classical steganographic methods. For example the error probability P-err of XU-Net on detecting stego images with payload of 0.4 bpnzAC embedded by J-Uniward and QF 75 starts at 7.1% and is increased by +13.6% to reach 20.7% after eight iterations. For the same embedding rate and for QF 95, undetectability by XU-Net with J-Uniward embedding is 23.4%, and it jumps by +25.8% to reach 49.2% at iteration 3.

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