A Novel Pseudo-Random Number Generator Based on Multi-Objective Optimization for Image-Cryptographic Applications
Takreem Haider, Sa\'ul A. Blanco, Umar Hayat

TL;DR
This paper introduces a new image-dependent pseudo-random number generator that combines elliptic curves and multi-objective genetic algorithms to improve security and randomness for image cryptography.
Contribution
It proposes an innovative ECGA method that uses the input image as a seed, optimizing randomness and security while reducing computational cost.
Findings
Enhanced randomness and security of the PRNG.
Improved resistance to differential attacks.
Reduced computational cost due to better initial population.
Abstract
Pseudo-random number generators (PRNGs) play an important role to ensure the security and confidentiality of image cryptographic algorithms. Their primary function is to generate a sequence of numbers that possesses unpredictability and randomness, which is crucial for the algorithms to work effectively and provide the desired level of security. However, traditional PRNGs frequently encounter limitations like insufficient randomness, predictability, and vulnerability to cryptanalysis attacks. To overcome these limitations, we propose a novel method namely an elliptic curve genetic algorithm (ECGA) for the construction of an image-dependent pseudo-random number generator (IDPRNG) that merges elliptic curves (ECs) and a multi-objective genetic algorithm (MOGA). The ECGA consists of two primary stages. First, we generate an EC-based initial sequence of random numbers using pixels of a…
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Taxonomy
TopicsChaos-based Image/Signal Encryption
