基于稳定性评分和k均值聚类算法的车牌自动识别系统

B. Dhanalakshmi, R. Ramesh, D. Raguraman, R. Menaka
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引用次数: 0

摘要

由于车辆使用量的增加,为了安全目的,由人类监控、分析车辆是一项具有挑战性的任务。由于现在很多地方都有车辆检查站,因此需要自动车辆识别系统,以追踪被盗车辆并监控交通违规行为。车牌格式不同、尺度不同、照度不同等问题都存在。在不确定的情况下,可以使用自动车牌识别系统来分析在光线不足和交通状况较差的情况下识别车牌。采用车牌号边缘查找技术,方便地识别车牌号。收集了包含200个车牌的数据集作为识别、估计和识别的训练数据集,与现有工作相比,提高了系统的识别精度。训练输入样本包括从交通部门获取的车辆号牌图像。采用k-means聚类算法对车辆号码自动识别系统的稳定性评分进行估计,提高了系统的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Vehicle Number Plate Recognition System using Stability Score and K-Means Clustering Algorithm
Due to the increase in vehicle usage, itis a challenging task to monitor, analyze the vehicles by a human for security purposes. There is a need for an automatic vehicle recognition system since various places nowadays have checkpoints for vehicles, to track the stolen vehicles, and to monitor traffic violations. The problem exists when the vehicle number plate is encountered in different formats, different scales, and illumination to number-plates. In the case of an indeterminate situation, identifying vehicle number plates in poor lighting conditions and worse traffic situations can be analyzed using an automatic vehicle number plate recognition system. The vehicle name board edge finding techniques are used to easily identify the vehicle number in the name board. A dataset with 200 license plates has been collected as training datasets for recognition, estimation, and identification, thus improving system accuracy of recognition when compared to existing works. The training input samples include images of vehicle number plates taken from the traffic department. The automated vehicle number recognition system is improvised in terms of accuracy by estimating stability score and using the k-means clustering algorithm.
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