Traffic Sign Classification for Autonomous Vehicles Using Split and Federated Learning Underlying 5G

被引:2
作者
Padaria, Ali Asgar [1 ]
Mehta, Aryan Alpesh [1 ]
Jadav, Nilesh Kumar [1 ]
Tanwar, Sudeep [1 ]
Garg, Deepak [2 ]
Singh, Anupam [3 ]
Pau, Giovanni [4 ]
Sharma, Gulshan [5 ]
机构
[1] Nirma Univ, Inst Technol, Dept Comp Sci & Engn, Ahmadabad 382481, India
[2] SR Univ, Sch Comp Sci & Artificial Intelligence, Warangal 506371, India
[3] Graph Era Hill Univ, Dept Comp Sci & Engn, Dehra Dun 248002, India
[4] Kore Univ Enna, Fac Engn & Architecture, I-94100 Enna, Italy
[5] Univ Johannesburg, Dept Elect Engn Technol, ZA-2006 Johannesburg, South Africa
来源
IEEE OPEN JOURNAL OF VEHICULAR TECHNOLOGY | 2023年 / 4卷
关键词
5G; artificial intelligence (AI); deep learning; federated learning (FL); German Traffic Sign Research Benchmark (GTSRB); split learning; traffic sign recognition; RECOGNITION;
D O I
10.1109/OJVT.2023.3326286
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
By enabling self-driving capabilities, autonomous vehicles (AVs) are revolutionizing transportation. Artificial intelligence (AI) integrating with AVs improves their perception, decision-making, and control systems. Despite AVs' remarkable growth and acceleration, two significant challenges emerge, i.e., distributed data and computational overhead. To address these challenges, we proposed a novel architecture combining split and federated learning (FL) for traffic sign classification in AVs. Our method distributes deep learning (DL) models across multiple AV systems, allowing efficient DL model training and usage. To mitigate computational overhead on vehicular clients, split learning partitions have been applied between the vehicular clients and a server. Additionally, FL advances this approach by simultaneously addressing data decentralization concerns and constructing a strong traffic sign detection model. It achieves this by training the model individually on each client and on that individual client's data and transmitting only crucial weight parameters of the DL model; it also adds a layer of security by avoiding the direct transfer of location-revealing image data. To send model weight parameters in a timely manner, we employed the staggering benefits of a 5G network, which improves the accuracy of applied DL models in each communication round. The proposed architecture offers efficient and real-time model training and utilization for accurate traffic sign identification in AVs by harnessing the capabilities of split learning, FL, and 5G networks. The experimental findings show that our architecture is effective, with a maximum accuracy of 99.54 % on the German Traffic Sign Research Benchmark (GTSRB) dataset with five client architectures, contributing to improving AV technology and developing intelligent transportation systems. Further, we analyze the performance of a 5G network in terms of phase noise and modulation; it is depicted from the experiment that the 5G network is showing noteworthy performance than the 4G network.
引用
收藏
页码:877 / 892
页数:16
相关论文
共 50 条
[41]   Predicting Downlink Retransmissions in 5G Networks using Deep Learning [J].
Bouk, Safdar Hussain ;
Omoniwa, Babatunji ;
Shetty, Sachin .
2024 IEEE 21ST CONSUMER COMMUNICATIONS & NETWORKING CONFERENCE, CCNC, 2024, :1056-1057
[42]   A Survey of Collaborative Machine Learning Using 5G Vehicular Communications [J].
Balkus, Salvador, V ;
Wang, Honggang ;
Cornet, Brian D. ;
Mahabal, Chinmay ;
Ngo, Hieu ;
Fang, Hua .
IEEE COMMUNICATIONS SURVEYS AND TUTORIALS, 2022, 24 (02) :1280-1303
[43]   Optimal 5G network slicing using machine learning and deep learning concepts [J].
Abidi, Mustufa Haider ;
Alkhalefah, Hisham ;
Moiduddin, Khaja ;
Alazab, Mamoun ;
Mohammed, Muneer Khan ;
Ameen, Wadea ;
Gadekallu, Thippa Reddy .
COMPUTER STANDARDS & INTERFACES, 2021, 76
[44]   Deep learning-based path tracking control using lane detection and traffic sign detection for autonomous driving [J].
Jaiswal, Swati ;
Mohan, B. Chandra .
WEB INTELLIGENCE, 2024, 22 (02) :185-207
[45]   Anticipatory analysis of AGV trajectory in a 5G network using machine learning [J].
Alberto Mozo ;
Stanislav Vakaruk ;
J. Enrique Sierra-García ;
Antonio Pastor .
Journal of Intelligent Manufacturing, 2024, 35 :1541-1569
[46]   Anticipatory analysis of AGV trajectory in a 5G network using machine learning [J].
Mozo, Alberto ;
Vakaruk, Stanislav ;
Sierra-Garcia, J. Enrique ;
Pastor, Antonio .
JOURNAL OF INTELLIGENT MANUFACTURING, 2024, 35 (04) :1541-1569
[47]   A novel method to increase the security in 5G networks using deep learning [J].
Rajasekar, A. ;
Ramamoorthi, R. ;
Ramya, M. ;
Arunachalam, Vinod .
INTERNATIONAL JOURNAL OF ELECTRONIC SECURITY AND DIGITAL FORENSICS, 2025, 17 (03) :419-431
[48]   Beam-Selection for 5G/B5G Networks Using Machine Learning: A Comparative Study [J].
Chatzoglou, Efstratios ;
Goudos, Sotirios K. K. .
SENSORS, 2023, 23 (06)
[49]   A lightweight federated learning based privacy preserving B5G pandemic response network using unmanned aerial vehicles: A proof-of-concept [J].
Nasser, Nidal ;
Fadlullah, Zubair Md ;
Fouda, Mostafa M. ;
Ali, Asmaa ;
Imran, Muhammad .
COMPUTER NETWORKS, 2022, 205
[50]   A comprehensive review on landmine detection using deep learning techniques in 5G environment: open issues and challenges [J].
Barnawi, Ahmed ;
Budhiraja, Ishan ;
Kumar, Krishan ;
Kumar, Neeraj ;
Alzahrani, Bander ;
Almansour, Amal ;
Noor, Adeeb .
NEURAL COMPUTING & APPLICATIONS, 2022, 34 (24) :21657-21676