A Dilated Convolutional Neural Network as Feature Selector for Spatial Image Steganalysis – A Hybrid Classification Scheme


연구 분야: Strategies



학회: Pattern Recognition and Image Analysis


초록

Nowadays, while steganography is the main mean of illegal secret communication, the need of detecting steganographic content and especially stego images is becoming more compulsory. Since multimedia content can be easily spread over the internet and more complicated steganography algorithms in different domains i.e. spatial, transform are utilized, the task of identifying stego images becomes very difficult. Early steganalysis methods deploy statistical attacks on stego images while more recent ones use deep learning techniques. The latter ones mainly utilize convolutional neural networks and show promising results. In this paper we propose a novel method to identify stego images derived from two different steganographic algorithms S-UNIWARD (Spatial-UNIversal WAvelet Relative Distortion) and WOW (Wavelet Obtained Weights) for various embedding rates. The proposed method initially utilizes a dilated convolutional neural network as a feature extractor and afterwards the extracted feature vector trains a random forest classifier. More specifically it is proved that in steganalysis, a dilated convolutional neural network could be an excellent feature extractor and the traditional softmax layer could be replaced by another machine learning classifier. Extensive experiments were conducted, and the proposed model was also compared against state-of the-art convolutional neural networks utilized in spatial image steganalysis, and other feature extraction methods. Results showed that the proposed method achieves high classification accuracy and outperforms other analogous steganalysis approaches.


Author Profile
K. Karampidis

Department of Information and Communication Systems Engineering University of the Aegean 83200 Karlovasi Samos Greece

Andorra
Author Profile
E. Kavallieratou

Department of Information and Communication Systems Engineering University of the Aegean 83200 Karlovasi Samos Greece

Andorra
Author Profile
G. Papadourakis

Department of Electrical and Computer Engineering Hellenic Mediterranean University 71410 Heraklion Crete Greece

Andorra

📄 논문 정보

발행 연도 2020년
인용수 0
출판 국가 Andorra
사이트 Springer
좋아요 수 0

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