Automated license plate authentication framework using multi-view vehicle images

M. A. Ganesh, S. Saravana Perumaal, S.M. Gomathi Sankar
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Abstract

The current framework for detecting Fake License Plates (FLP) in real-time is not robust enough for patrol teams. The objective of this paper is to develop a robust license plate authentication framework, based on the Vehicle Make and Model Recognition (VMMR) and the License Plate Recognition (LPR) algorithms that is implementable at the edge devices. The contributions of this paper are (i) Development of license plate database for 547 Indian cars, (ii) Development of an image dataset with 3173 images of 547 Indian cars in 8 classes, (iii) Development of an ensemble model to recognize vehicle make and model from frontal, rear, and side images, and (iv) Development of a framework to authenticate the license plates with frontal, rear, and side images. The proposed ensemble model is compared with the state-of-the-art networks from the literature. Among the implemented networks for VMMR, the Ensembling model with a size of 303.2 MB achieves the best accuracy of 89% . Due to the limited memory size, Easy OCR is chosen to recognize license plate. The total size of the authentication framework is 308 MB. The performance of the proposed framework is compared with the literature. According to the results, the proposed framework enhances FLP recognition due to the recognition of vehicles from side images. The dataset is made public at https://www.kaggle.com/ganeshmailecture/datasets.
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使用多视角车辆图像的车牌自动认证框架
目前用于实时检测假车牌(FLP)的框架对于巡逻队来说不够强大。本文的目的是基于车辆制造商和型号识别(VMMR)和车牌识别(LPR)算法,开发一种可在边缘设备上实现的强大的车牌认证框架。本文的贡献在于:(i) 开发了 547 辆印度汽车的车牌数据库;(ii) 开发了一个包含 8 类 547 辆印度汽车的 3173 张图像的图像数据集;(iii) 开发了一个集合模型,用于从正面、背面和侧面图像识别车辆品牌和型号;以及 (iv) 开发了一个框架,用于通过正面、背面和侧面图像验证车牌。建议的集合模型与文献中最先进的网络进行了比较。在已实现的 VMMR 网络中,303.2 MB 大小的集合模型达到了 89% 的最佳准确率。由于内存容量有限,因此选择 Easy OCR 来识别车牌。认证框架的总大小为 308 MB。建议框架的性能与文献进行了比较。结果表明,由于可以从侧面图像识别车辆,因此建议的框架增强了 FLP 识别能力。数据集在 https://www.kaggle.com/ganeshmailecture/datasets 上公开。
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