Automated Detection of Semagram-Laden Images Using Adaptive Neural Networks


Digital steganography has been used extensively for electronic copyright stamping, but also for criminal or covert activities. While a variety of techniques exist for detecting steganography the identification of semagrams, messages transmitted visually in a non-textual format remain elusive. The work that will be presented describes the creation of a novel application which uses hierarchical neural network architectures to detect the likely presence of a semagram message in an image. The application was used to detect semagrams containing Morse Code messages with over 80% accuracy. These preliminary results indicate a significant advance in the detection of complex semagram patterns

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oaioai:nsuworks.nova.edu:gscis_facarticles-1477Last time updated on 7/9/2019

This paper was published in NSU Works.

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