Image Encryption via Data-Identified Discrete Chaotic Maps
Abstract
In this work, we propose a data-driven image encryption framework that identifies chaotic maps directly from data using the SINDy-PI algorithm. Unlike conventional encryption schemes relying on predefined maps, our method learns the full explicit dynamics -- including cross-terms and higher-order nonlinearities -- from observational data. The validity of this approach is verified on three distinct chaotic systems: the H{\'e}non map, the three-dimensional logistic map, and the piecewise-linear Lozi map, demonstrating its generality. The encryption key consists solely of initial conditions; the map structure itself becomes data-dependent, introducing an extra layer of security. Moreover, even when the initial conditions are fixed, different training data (e.g., with a tiny noise seed) lead to slightly different maps, which produce completely different ciphertexts (NPCR , UACI ). Numerical experiments on the H{\'e}non system show near-ideal information entropy ( bits), negligible inter-pixel correlation, and extreme sensitivity to initial conditions: a perturbation of causes total decryption failure. The scheme resists both differential and statistical attacks, with NPCR and UACI values matching theoretical ideals. Our results establish a new paradigm for chaos-based cryptography beyond fixed maps.
Keywords
Cite
@article{arxiv.2605.21118,
title = {Image Encryption via Data-Identified Discrete Chaotic Maps},
author = {Wenyuan Li and Xiao-Yun Wang and Zhigang Zhu and Xiaofeng Zhang and Li Zhang},
journal= {arXiv preprint arXiv:2605.21118},
year = {2026}
}
Comments
16 pages, 6 figures