基于树莓派的ANPR智能访问

C. Fernandez, R. R. Porle
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引用次数: 1

摘要

自动车牌识别(ANPR)是指一种获取车辆图像并识别车牌上字符的系统。本文的目的是研究如何使用基于树莓派的智能门禁ANPR系统来取代传统的高层居民门禁系统。之所以选择车牌识别系统,是因为其安全性高。车牌识别过程分为四个阶段:图像采集和预处理、提取、分割和字符识别。预处理包括将RGB转换为灰度,用高斯滤波器滤除噪声,并用自适应阈值法增强图像。车牌提取步骤包括形态学操作、图像二值化和轮廓提取。分割中使用的技术是连接成分分析(CCA)和边界盒分析(BBA)。使用KNN方法进行字符识别是最后一个阶段。主要硬件包括树莓派模型4、树莓派相机和伺服电机。实验中总共使用了24辆不同汽车的120个车牌。车牌分为训练和测试两类,其中约83%用于训练,其中包括来自四辆不同汽车的约100个车牌。17%,即来自四辆不同汽车的大约20个车牌,被用于测试目的。该实验确定了捕捉车牌的最佳距离、角度和高度。在两米的地方,系统识别出车牌。该系统的设计准确率为85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Raspberry Pi based ANPR for Smart Access
Automated Number Plate Recognition (ANPR) is a term that refers to a system that acquire image of a vehicle and recognises the characters on the number plate. The purpose of this paper is to investigate how a Raspberry Pi-based ANPR system for smart access can be used to replace the traditional access system for high-rise residents. Number plate recognition was chosen over other systems due to its high level of security. The process of recognising number plates is divided into four stages: image acquisition and preprocessing, extraction, segmentation, and character recognition. Preprocessing involves converting RGB to Grayscale, filtering out noise with a Gaussian Filter, and enhancing the image with Adaptive Thresholding. The number plate extraction step includes morphological operations, image binarization, and contour extraction. The techniques used in segmentation are Connected Component Analysis (CCA) and Boundary Box Analysis (BBA). Character recognition using the KNN method is the final stage. The primary hardware consists of a Raspberry Pi model 4, a Raspberry Pi camera, and servo motors. A total of 120 number plates from 24 different cars were used in the experiments. The number plates are divided into two categories: training and testing, with approximately 83 percent being used for training, which includes approximately 100 plates from four different cars. 17 percent, or approximately 20 number plates from four different cars, are used for testing purposes. The experiment establishes the optimal distance, angle, and height from which to capture the licence plate. At two metres, the system recognises the number plate. The system's design is 85 percent accurate.
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