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Journal ArticleDOI

Edge Adaptive Image Steganography Based on LSB Matching Revisited

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TLDR
An edge adaptive scheme which can select the embedding regions according to the size of secret message and the difference between two consecutive pixels in the cover image is proposed and can enhance the security significantly compared with typical LSB-based approaches as well as their edge adaptive ones, while preserving higher visual quality of stego images at the same time.
Abstract
The least-significant-bit (LSB)-based approach is a popular type of steganographic algorithms in the spatial domain. However, we find that in most existing approaches, the choice of embedding positions within a cover image mainly depends on a pseudorandom number generator without considering the relationship between the image content itself and the size of the secret message. Thus the smooth/flat regions in the cover images will inevitably be contaminated after data hiding even at a low embedding rate, and this will lead to poor visual quality and low security based on our analysis and extensive experiments, especially for those images with many smooth regions. In this paper, we expand the LSB matching revisited image steganography and propose an edge adaptive scheme which can select the embedding regions according to the size of secret message and the difference between two consecutive pixels in the cover image. For lower embedding rates, only sharper edge regions are used while keeping the other smoother regions as they are. When the embedding rate increases, more edge regions can be released adaptively for data hiding by adjusting just a few parameters. The experimental results evaluated on 6000 natural images with three specific and four universal steganalytic algorithms show that the new scheme can enhance the security significantly compared with typical LSB-based approaches as well as their edge adaptive ones, such as pixel-value-differencing-based approaches, while preserving higher visual quality of stego images at the same time.

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Citations
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Journal ArticleDOI

Review: Digital image steganography: Survey and analysis of current methods

TL;DR: This paper provides a state-of-the-art review and analysis of the different existing methods of steganography along with some common standards and guidelines drawn from the literature and some recommendations and advocates for the object-oriented embedding mechanism.
Journal ArticleDOI

Rich Models for Steganalysis of Digital Images

TL;DR: A novel general strategy for building steganography detectors for digital images by 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.
Journal ArticleDOI

Ensemble Classifiers for Steganalysis of Digital Media

TL;DR: This paper proposes an alternative and well-known machine learning tool-ensemble classifiers implemented as random forests-and argues that they are ideally suited for steganalysis.
Journal ArticleDOI

Universal distortion function for steganography in an arbitrary domain

TL;DR: This paper proposes a universal distortion design called universal wavelet relative distortion (UNIWARD) that can be applied for embedding in an arbitrary domain and demonstrates experimentally using rich models as well as targeted attacks that steganographic methods built using UNIWARD match or outperform the current state of the art in the spatial domain, JPEG domain, and side-informed JPEG domain.
Proceedings ArticleDOI

Designing steganographic distortion using directional filters

TL;DR: A new approach to defining additive steganographic distortion in the spatial domain, where the change in the output of directional high-pass filters after changing one pixel is weighted and then aggregated using the reciprocal Hölder norm to define the individual pixel costs.
References
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Proceedings ArticleDOI

UCID: an uncompressed color image database

TL;DR: A new dataset, UCID (pronounced "use it") - an Uncompressed Colour Image Dataset which tries to bridge the gap between standardised image databases and objective evaluation of image retrieval algorithms that operate in the compressed domain.
Journal ArticleDOI

A steganographic method for images by pixel-value differencing

TL;DR: A new and efficient steganographic method for embedding secret messages into a gray-valued cover image that provides an easy way to produce a more imperceptible result than those yielded by simple least-significant-bit replacement methods.
Journal ArticleDOI

LSB matching revisited

TL;DR: The proposed modification to the least-significant-bit (LSB) matching, a steganographic method for embedding message bits into a still image, shows better performance than traditional LSB matching in terms of distortion and resistance against existing steganalysis.
Book ChapterDOI

Attacks on Steganographic Systems

TL;DR: In this paper, the authors present both visual and statistical attacks, making use of the ability of humans to clearly discern between noise and visual patterns, and automate statistical attacks which are much easier to automate.
Journal ArticleDOI

Detecting LSB steganography in color, and gray-scale images

TL;DR: In this article, a reliable and accurate method for detecting least significant bit (LSB) nonsequential embedding in digital images is described. But this method relies on the assumption that the secret message length is derived by inspecting the lossless capacity in the LSB and shifted LSB plane.
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