Project Details
Abstract
Reversible data hiding (lossless data hiding) is the technique that guarantees
cover-media will fully restored without any distortion after extracting hidden
messages from stego-image. Reversible data hiding is suitable for applications in
specific domains, such as medical, military, forensic and fine art images. Due to
the rapid evolution in digital technology, the application of steganography in various
fields continues growing. However, the concern about illegal usage of
steganographic techniques for malicious users is also increasing.
Stegnalysis is the art of breaking steganographic schemes. The main objectives
of steganalysis are filtering out the secret communication and detecting the presence
of hidden messages in various medium. Usually, steganalysis has been classified as
target-based steganalysis and universal steganalysis methods. Target-based
steganalysis can reveal secret message with the knowledge of the steganography
algorithm. Universal steganalysis can detect the secret message independent of the
steganography algorithm.
This project is aims to develop steganalysis schemes against to the novel
reversible steganographic methods including difference expansion, histogram
shifting and multiple predictors. This project will borrow the ideas from
computational intelligence techniques, such as fuzzy clustering, self-organizing
feature map networks (SOFM), adaptive resonance theory (ART) to extend the ability
of the proposed steganalysis system. The goal of this project is to integrated
statistical theories and computational intelligence techniques developing high
performance steganalysis schemes with the reliability, flexibility, and practicality
for unknown steganographic methods.
Project IDs
Project ID:PB10207-1913
External Project ID:NSC102-2221-E182-013
External Project ID:NSC102-2221-E182-013
Status | Finished |
---|---|
Effective start/end date | 01/08/13 → 31/07/14 |
Keywords
- Information hiding
- steganography
- lossless steganography
- reversible
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