4.5 Article

A New Image Encryption Algorithm Based on DNA State Machine for UAV Data Encryption

期刊

DRONES
卷 7, 期 1, 页码 -

出版社

MDPI
DOI: 10.3390/drones7010038

关键词

drone security; drone-based surveillance; DNA; finite state machine; image encryption; key scheduling; unmanned aerial vehicle; UAV

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This paper presents a novel algorithm based on DNA computing and a finite state machine (FSM) for encrypting digital images sent from drones. The proposed algorithm meets the requirements for use in drone-based surveillance applications by exhibiting strong security and high efficiency.
Drone-based surveillance has become widespread due to its flexibility and ability to access hazardous areas, particularly in industrial complexes. As digital camera capabilities improve, more visual information can be stored in high-resolution images, resulting in larger image sizes. Therefore, algorithms for encrypting digital images sent from drones must be both secure and highly efficient. This paper presents a novel algorithm based on DNA computing and a finite state machine (FSM). DNA and FSM are combined to design a key schedule with high flexibility and statistical randomness. The image encryption algorithm is designed to achieve both confusion and diffusion properties simultaneously. The DNA bases themselves provide diffusion, while the random integers extracted from the DNA bases contribute to confusion. The proposed algorithm underwent a thorough set of statistical analyses to demonstrate its security. Experimental findings show that the proposed algorithm can resist many well-known attacks and encrypt large-sized images at a higher throughput compared to other algorithms. High experimental results for the proposed algorithm include correlation coefficients of 0.0001 and Shannon entropy of 7.999. Overall, the proposed image encryption algorithm meets the requirements for use in drone-based surveillance applications.

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