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- Title
Pure spatial rich model features for digital image steganalysis.
- Authors
Wang, Pengfei; Wei, Zhihui; Xiao, Liang
- Abstract
The SRM (Spatial Rich Model) is a very effective steganalysis method. It uses statistics of neighboring noise residual samples as features to capture the dependency changes caused by embedding. Because the noise residuals are the high-frequency components of image and closely tied to image content, the residuals of different types of image regions have different statistical properties and effectiveness for steganalysis. In this paper, the effectiveness of the residuals is investigated. Then the effectiveness of the statistics collected from different types of neighboring residual samples is investigated from the FLD (Fisher Linear Discriminant) viewpoint, and ineffective, effective and high-effective neighboring residual samples are defined. The ineffective neighboring residual samples are not likely to change during embedding, and if they are counted in statistics, they may mix the features with noise and make the features impure. Pure SRM features are extracted based on neighboring noise residual sample selection strategy. Furthermore, multi-order statistical features are proposed to increase the statistical diversity. Steganalysis performances of the statistical features collected from different types of neighboring residual samples are investigated on three content adaptive steganographic algorithms. Experimental results demonstrate that the proposed method can achieve a more accurate detection than SRM.
- Subjects
CRYPTOGRAPHY research; CIPHERS; EMBEDDING theorems; CONFIDENTIAL communications; EDGE detection (Image processing)
- Publication
Multimedia Tools & Applications, 2016, Vol 75, Issue 5, p2897
- ISSN
1380-7501
- Publication type
Article
- DOI
10.1007/s11042-015-2521-9