Steganographer Identification

04/16/2019
by   Hanzhou Wu, et al.
0

Conventional steganalysis detects the presence of steganography within single objects. In the real-world, we may face a complex scenario that one or some of multiple users called actors are guilty of using steganography, which is typically defined as the Steganographer Identification Problem (SIP). One might use the conventional steganalysis algorithms to separate stego objects from cover objects and then identify the guilty actors. However, the guilty actors may be lost due to a number of false alarms. To deal with the SIP, most of the state-of-the-arts use unsupervised learning based approaches. In their solutions, each actor holds multiple digital objects, from which a set of feature vectors can be extracted. The well-defined distances between these feature sets are determined to measure the similarity between the corresponding actors. By applying clustering or outlier detection, the most suspicious actor(s) will be judged as the steganographer(s). Though the SIP needs further study, the existing works have good ability to identify the steganographer(s) when non-adaptive steganographic embedding was applied. In this chapter, we will present foundational concepts and review advanced methodologies in SIP. This chapter is self-contained and intended as a tutorial introducing the SIP in the context of media steganography.

READ FULL TEXT
research
10/29/2018

Feature Bagging for Steganographer Identification

Traditional steganalysis algorithms focus on detecting the existence of ...
research
05/02/2023

Outlier galaxy images in the Dark Energy Survey and their identification with unsupervised machine learning

The Dark Energy Survey is able to collect image data of an extremely lar...
research
01/07/2021

Automatic identification of outliers in Hubble Space Telescope galaxy images

Rare extragalactic objects can carry substantial information about the p...
research
01/05/2023

CAT: LoCalization and IdentificAtion Cascade Detection Transformer for Open-World Object Detection

Open-world object detection (OWOD), as a more general and challenging go...
research
08/25/2022

Aggression and "hate speech" in communication of media users: analysis of control capabilities

Analyzing the possibilities of mutual influence of users in new media, t...
research
04/10/2023

Learning to Detect Touches on Cluttered Tables

We present a novel self-contained camera-projector tabletop system with ...
research
11/09/2017

CogSciK: Clustering for Cognitive Science Motivated Decision Making

Computational models of decisionmaking must contend with the variance of...

Please sign up or login with your details

Forgot password? Click here to reset