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Multi Images Steganography using Neural Network
Author(s) -
Gayatri Ulhas Kadam,
Purva Ignathi Jadhav,
Trupti Shahaji Chandanshive,
Kajal Vilas Shinde,
Mrs. Ashwini Bamanikar
Publication year - 2022
Publication title -
international journal for research in applied science and engineering technology
Language(s) - English
Resource type - Journals
ISSN - 2321-9653
DOI - 10.22214/ijraset.2022.41242
Subject(s) - steganography , embedding , computer science , distortion (music) , payload (computing) , jpeg , artificial intelligence , steganalysis , filter (signal processing) , domain (mathematical analysis) , distortion function , algorithm , computer vision , theoretical computer science , pattern recognition (psychology) , mathematics , image (mathematics) , telecommunications , amplifier , computer network , mathematical analysis , decoding methods , bandwidth (computing) , network packet
Currently, the most successful approach to steganography in empirical objects, such as digital media, is to embed the payload while minimizing a suitably defined distortion function. The design of the distortion is essentially the only task left to the stegnographer since efficient practical codes exist that embed near the payload-distortion bound. The ractitioner goal is to design the distortion to obtain a scheme with a high empirical statistical detectability. In this paper, we propose a universal distortion design called universal wavelet relative distortion (UNIWARD) that can be applied for embedding in an arbitrary domain. The embedding distortion is computed as a sum of relative changes of coefficients in a directional filter bank decomposition of the cover image. The directionality forces the embedding changes to such parts of the cover object that are difficult to model in multiple directions, such as textures or noisy regions, while avoiding smooth regions or clean edges. We demonstrate 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 sideinformed JPEG domain.

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