TY - EJOU AU - Alissa, Khalid A. AU - Maray, Mohammed AU - Malibari, Areej A. AU - Alazwari, Sana AU - Alqahtani, Hamed AU - Nour, Mohamed K. AU - Obbaya, Marwa AU - Shamseldin, Mohamed A. AU - Duhayyim, Mesfer Al TI - Optimal Deep Learning Model Enabled Secure UAV Classification for Industry 4.0 T2 - Computers, Materials \& Continua PY - 2023 VL - 74 IS - 3 SN - 1546-2226 AB - Emerging technologies such as edge computing, Internet of Things (IoT), 5G networks, big data, Artificial Intelligence (AI), and Unmanned Aerial Vehicles (UAVs) empower, Industry 4.0, with a progressive production methodology that shows attention to the interaction between machine and human beings. In the literature, various authors have focused on resolving security problems in UAV communication to provide safety for vital applications. The current research article presents a Circle Search Optimization with Deep Learning Enabled Secure UAV Classification (CSODL-SUAVC) model for Industry 4.0 environment. The suggested CSODL-SUAVC methodology is aimed at accomplishing two core objectives such as secure communication via image steganography and image classification. Primarily, the proposed CSODL-SUAVC method involves the following methods such as Multi-Level Discrete Wavelet Transformation (ML-DWT), CSO-related Optimal Pixel Selection (CSO-OPS), and signcryption-based encryption. The proposed model deploys the CSO-OPS technique to select the optimal pixel points in cover images. The secret images, encrypted by signcryption technique, are embedded into cover images. Besides, the image classification process includes three components namely, Super-Resolution using Convolution Neural Network (SRCNN), Adam optimizer, and softmax classifier. The integration of the CSO-OPS algorithm and Adam optimizer helps in achieving the maximum performance upon UAV communication. The proposed CSODL-SUAVC model was experimentally validated using benchmark datasets and the outcomes were evaluated under distinct aspects. The simulation outcomes established the supreme better performance of the CSODL-SUAVC model over recent approaches. KW - Unmanned Aerial Vehicles; Artificial Intelligence; emerging technologies; Deep Learning; Industry 4.0; image steganography DO - 10.32604/cmc.2023.033532