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HyperSteg: Hyperbolic Learning for Deep Steganography

Shivam Agarwal (University of Illinois Urbana-Champaign); Ritesh Singh Soun (Sri Venkateswara College); Rahul Shivani (M.B.M. Engineering College, Jodhpur); Vishnuvardhan Varanasi V (IIT Kanpur); Navroop Gill (Scaler ); Ramit Sawhney (IIIT Delhi)

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07 Jun 2023

Steganography is the art of hiding a secret message signal inside a publicly visible carrier with minimum perceptual loss in the carrier. In order to better hide information, it is critical to optimally represent the message-carrier wave interference while blending the message with the carrier. We propose HyperSteg: a novel steganography method in the hyperbolic space grounded in the hyperbolic properties of wave interference. Through hyperbolic learning, HyperSteg learns to better represent the hyperbolic properties of message-carrier interference with minimum additional computational cost. Through extensive experiments over image and audio datasets, we introduce HyperSteg as a practical, model and modality agnostic approach for information hiding.

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