License Plate Detection Based on Convolutional Neural Network: Support Vector Machine (CNN-SVM)

Gamma Kosala, A. Harjoko, S. Hartati
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引用次数: 4

Abstract

Automatic License Plate Recognition (ALPR) implementation can be used in many applications, such as road traffic monitoring, automatic toll payments, and parking management. License plate detection is the first and very critical stage in the ALPR system. Locating the license plate in the image becomes more difficult in the complex backgrounds such as the highways. This research develops the plate detection method in a complex environment in two stages: plate candidate extraction, and plate area selection. We use Sobel operator for vertical edge detection, closing morphological operation, and Connected Component Analysis (CCA) for contour detection in plate candidate extraction stage. Plate area selection is implemented by using Convolutional Neural Network -- Support Vector Machine (CNN - SVM). CNN acts as feature extraction method whereas SVM as a classifier. Compared to some other machine learning architecture, CNN-SVM reached the highest accuracy by 93%.
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基于卷积神经网络的车牌检测:支持向量机(CNN-SVM)
自动车牌识别(ALPR)的实现可用于许多应用,如道路交通监控、自动收费和停车管理。车牌检测是自动识别系统的第一步,也是非常关键的一步。在高速公路等复杂背景下,车牌在图像中的定位变得更加困难。本研究将复杂环境下的平板检测方法分为两个阶段:候选平板提取和平板面积选择。在候选板提取阶段,我们使用Sobel算子进行垂直边缘检测,闭合形态学操作,连接成分分析(CCA)进行轮廓检测。采用卷积神经网络-支持向量机(CNN - SVM)实现板面积选择。CNN作为特征提取方法,SVM作为分类器。与其他机器学习架构相比,CNN-SVM的准确率最高,达到93%。
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