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StegNet: Mega Image Steganography Capacity with Deep Convolutional Network

机译:StegNet:具有深度卷积网络的巨型图像隐写功能

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Traditional image steganography often leans interests towards safely embedding hidden information into cover images with payload capacity almost neglected. This paper combines recent deep convolutional neural network methods with image-into-image steganography. It successfully hides the same size images with a decoding rate of 98.2% or bpp (bits per pixel) of 23.57 by changing only 0.76% of the cover image on average. Our method directly learns end-to-end mappings between the cover image and the embedded image and between the hidden image and the decoded image. We further show that our embedded image, while with mega payload capacity, is still robust to statistical analysis.
机译:传统的图像隐写术通常倾向于将隐藏信息安全地嵌入到封面图像中,而有效载荷容量几乎被忽略了。本文将最新的深度卷积神经网络方法与图像到图像隐写术相结合。通过平均仅改变封面图像的0.76%,它可以成功隐藏相同大小的图像,其解码率为98.2%或bpp(每像素位数)为23.57。我们的方法直接学习封面图像和嵌入图像之间以及隐藏图像和解码图像之间的端到端映射。我们进一步表明,尽管嵌入图像具有巨大的有效负载容量,但仍对统计分析具有鲁棒性。

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