TL;DR
This paper introduces a hybrid deep-learning framework for JPEG steganalysis that combines domain knowledge with neural networks, significantly improving detection accuracy on large-scale datasets and demonstrating robustness and transferability.
Contribution
The paper presents a novel hybrid framework that integrates rich model domain knowledge into deep neural networks for JPEG steganalysis, enhancing performance and robustness.
Findings
Quantization and truncation boost detection performance.
Framework is robust to JPEG artifact alterations.
Model transferability across datasets and targets.
Abstract
Adoption of deep learning in image steganalysis is still in its initial stage. In this paper we propose a generic hybrid deep-learning framework for JPEG steganalysis incorporating the domain knowledge behind rich steganalytic models. Our proposed framework involves two main stages. The first stage is hand-crafted, corresponding to the convolution phase and the quantization & truncation phase of the rich models. The second stage is a compound deep neural network containing multiple deep subnets in which the model parameters are learned in the training procedure. We provided experimental evidences and theoretical reflections to argue that the introduction of threshold quantizers, though disable the gradient-descent-based learning of the bottom convolution phase, is indeed cost-effective. We have conducted extensive experiments on a large-scale dataset extracted from ImageNet. The primary…
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