Rich Models for Steganalysis of Digital Images
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Abstract
We describe a novel general strategy for building steganography detectors for digital images. The process starts with assembling a rich model of the noise component as a union of many diverse submodels formed by joint distributions of neighboring samples from quantized image noise residuals obtained using linear and nonlinear high-pass filters. In contrast to previous approaches, we make the model assembly a part of the training process driven by samples drawn from the corresponding cover- and stego-sources. Ensemble classifiers are used to assemble the model as well as the final steganalyzer due to their low computational complexity and ability to efficiently work with high-dimensional feature spaces and…
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2Topics & keywords
Topics
Keywords
- Steganalysis
- Computer science
- Steganography
- Artificial intelligence
- Embedding
- Algorithm
- Theoretical computer science
- Pattern recognition (psychology)
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