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End-to-end Trained CNN Encode-Decoder Networks for Image Steganography

About

All the existing image steganography methods use manually crafted features to hide binary payloads into cover images. This leads to small payload capacity and image distortion. Here we propose a convolutional neural network based encoder-decoder architecture for embedding of images as payload. To this end, we make following three major contributions: (i) we propose a deep learning based generic encoder-decoder architecture for image steganography; (ii) we introduce a new loss function that ensures joint end-to-end training of encoder-decoder networks; (iii) we perform extensive empirical evaluation of proposed architecture on a range of challenging publicly available datasets (MNIST, CIFAR10, PASCAL-VOC12, ImageNet, LFW) and report state-of-the-art payload capacity at high PSNR and SSIM values.

Atique ur Rehman, Rafia Rahim, M Shahroz Nadeem, Sibt ul Hussain• 2017

Related benchmarks

TaskDatasetResultRank
Image SteganographyPASCAL-VOC Cover Secret 12
PSNR (Stego-Cover, dB)33.7
4
Image SteganographyLFW Cover Secret
PSNR (Stego-Cover)33.7
3
Image SteganographyImageNet Cover Secret
PSNR (Stego-Cover, dB)32.9
3
Image SteganographyPASCAL-VOC LFW Cover Secret 12
PSNR (Stego-Cover)33.8
3
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