Abstract

Modern steganalysis has been widely investigated, most of which mainly focus on dealing with the problem of detecting whether an inquiry image contains hidden information. However, few articles in the literature study the location of secret bits hidden by modern adaptive steganography. In this paper, we propose a novel algorithm for locating steganographic payload in the spatial domain. We first predict the steganographic scheme and its payload, which is used for generating a random bitstream. Then, the random bits are embedded in the stego image based on the cost matrix in the framework of Syndrome-Trellis Codes (STCs). Next, relying on the differences between two stego images, the extended modification map in couple with the neighboring weight algorithm can be acquired, leading to the location of the hidden bits. Compared with the prior art, the extensive experiments verify that our proposed locating algorithm performs better, in terms of locating accuracy and efficiency.

Highlights

  • Steganography is the science and art of covertly transmitting the secret message in a carrier, such as widely adopted multimedia content

  • To deal with that trade-off problem, we propose improving the performance of locating hidden bits based on the neighboring weight algorithm

  • To comprehensively evaluate the performance of the steganographic payload location algorithm, we propose using the following metrics: (i) Precision VP is defined as the percentage of correctly located samples among the total number of samples

Read more

Summary

Introduction

Steganography is the science and art of covertly transmitting the secret message in a carrier, such as widely adopted multimedia content. One of the most successful adaptive models rather treats the message embedding as a source coding problem with a fidelity constraint [1], instead of taking the cover source distribution into account. In this framework of minimizing the distortion caused by embedding, the establishment of the cost function becomes fundamentally important for the steganographer who prefers hiding information in the texture region of a cover image

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call