A Novel Feature-Aware Chaotic Image Encryption Scheme For Data Security and Privacy in IoT and Edge Networks
Muhammad Shahbaz Khan, Ahmed Al-Dubai, Jawad Ahmad, Nikolaos, Pitropakis, Baraq Ghaleb

TL;DR
This paper introduces a feature-aware chaotic image encryption scheme tailored for IoT and edge networks, combining pixel segmentation, chaotic permutation, and confusion to enhance security and efficiency for resource-limited devices.
Contribution
It presents a novel encryption method integrating feature-aware pixel segmentation with chaotic permutation and confusion, optimized for real-time, resource-constrained IoT environments.
Findings
Significantly reduces pixel correlation to near zero
Achieves high entropy values close to 8
Resists differential cryptographic attacks
Abstract
The security of image data in the Internet of Things (IoT) and edge networks is crucial due to the increasing deployment of intelligent systems for real-time decision-making. Traditional encryption algorithms such as AES and RSA are computationally expensive for resource-constrained IoT devices and ineffective for large-volume image data, leading to inefficiencies in privacy-preserving distributed learning applications. To address these concerns, this paper proposes a novel Feature-Aware Chaotic Image Encryption scheme that integrates Feature-Aware Pixel Segmentation (FAPS) with Chaotic Chain Permutation and Confusion mechanisms to enhance security while maintaining efficiency. The proposed scheme consists of three stages: (1) FAPS, which extracts and reorganizes pixels based on high and low edge intensity features for correlation disruption; (2) Chaotic Chain Permutation, which employs…
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