Research Area:  Vehicular Ad Hoc Networks
License plate is an essential characteristic to identify vehicles for the traffic management, and thus, license plate recognition is important for Internet of Vehicles. Since 5G has been widely covered, mobile devices are utilized to assist the traffic management, which is a significant part of Industry 4.0. However, there have always been privacy risks due to centralized training of models. Also, the trained model cannot be directly deployed on the mobile device due to its large number of parameters. In this article, we propose a federated learning-based license plate recognition framework (FedLPR) to solve these problems. We design detection and recognition model to apply in the mobile device. In terms of user privacy, data in individuals is harnessed on their mobile devices instead of the server to train models based on federated learning. Extensive experiments demonstrate that FedLPR has high accuracy and acceptable communication cost while preserving user privacy.
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Author(s) Name:  Xiangjie Kong; Kailai Wang; Mingliang Hou; Xinyu Hao; Guojiang Shen; Xin Chen; Feng Xia
Journal name:  IEEE Transactions on Industrial Informatics
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Publisher name:  IEEE
DOI:  10.1109/TII.2021.3067324
Volume Information:  Volume: 17, Issue: 12, Dec. 2021,Page(s): 8523 - 8530
Paper Link:   https://ieeexplore.ieee.org/abstract/document/9381655