INR-Based Generative Steganography by Point Cloud Representation
Zhong Yangjie, Liu Jia, Luo Peng, Ke Yan, Cai Shen

TL;DR
This paper introduces a novel INR-based generative steganography method using point cloud representation, enabling universal data format handling, resolution independence, and high message extraction accuracy.
Contribution
It pioneers the application of point cloud data in generative steganography, solving model size issues and enhancing universality and security.
Findings
Stego-images have an average PSNR > 65.
Message extraction accuracy exceeds 99%.
Method is applicable to various data types and resolutions.
Abstract
Generative steganography (GS) directly generates stego-media through secret message-driven generation. It makes the hiding capacity of GS higher than that of traditional steganography, as well as more resistant to classical steganalysis. However, the generators and extractors of existing GS methods can only target specific formats and types of data and lack of universality. Besides, the model size is usually related to the underlying grid resolution, and the transmission behavior of the extractor is susceptible to suspicion of steganalysis. Implicit neural representation(INR) is a technique for representing data in a continuous manner. Inspired by this, we propose an INR-based generative steganography by point cloud representation (INR-GSPC). By using the function generator, the problem of the generator model size growing exponentially with the increase of gridded data has been solved.…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Advanced Steganography and Watermarking Techniques · Image and Video Stabilization
