A High-Performance Fractal Encryption Framework and Modern Innovations for Secure Image Transmission
Sura Khalid Salsal, Eman Shaker Mahmood, Farah Tawfiq Abdul Hussien, Maryam Mahdi Alhusseini, Azhar Naji Alyahya, Nikolai Safiullin

TL;DR
This paper introduces a fractal encryption method based on Fourier transforms to improve security, efficiency, and image quality in digital image transmission, outperforming traditional encryption techniques.
Contribution
It proposes a novel fractal encryption framework utilizing Fourier transforms, enhancing encryption speed and image fidelity over existing methods.
Findings
Improved encryption and decryption times
Enhanced image fidelity compared to traditional methods
Demonstrated superior efficiency and security
Abstract
The current digital era, driven by growing threats to data security, requires a robust image encryption technique. Classical encryption algorithms suffer from a trade-off among security, image fidelity, and computational efficiency. This paper aims to enhance the performance and efficiency of image encryption. This is done by proposing Fractal encryption based on Fourier transforms as a new method of image encryption, leveraging state-of-the-art technology. The new approach considered here intends to enhance both security and efficiency in image encryption by comparing Fractal Encryption with basic methods. The suggested system also aims to optimise encryption/ decryption times and preserve image quality. This paper provides an introduction to Image Encryption using the fractal-based method, its mathematical formulation, and its comparative efficiency against publicly known traditional…
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Taxonomy
TopicsChaos-based Image/Signal Encryption · Advanced Technologies and Applied Computing · Brain Tumor Detection and Classification
