中大機構典藏-NCU Institutional Repository-提供博碩士論文、考古題、期刊論文、研究計畫等下載:Item 987654321/83796
English  |  正體中文  |  简体中文  |  全文笔数/总笔数 : 80990/80990 (100%)
造访人次 : 41262260      在线人数 : 187
RC Version 7.0 © Powered By DSPACE, MIT. Enhanced by NTU Library IR team.
搜寻范围 查询小技巧:
  • 您可在西文检索词汇前后加上"双引号",以获取较精准的检索结果
  • 若欲以作者姓名搜寻,建议至进阶搜寻限定作者字段,可获得较完整数据
  • 进阶搜寻


    jsp.display-item.identifier=請使用永久網址來引用或連結此文件: http://ir.lib.ncu.edu.tw/handle/987654321/83796


    题名: 深度卷積神經網路車牌辨識;Deep Convolutional Neural Network License Plate Recognition
    作者: 簡莨蔚;Chien, Liang-Wei
    贡献者: 通訊工程學系在職專班
    关键词: 車牌辨識系統;卷積神經網路;智慧城市;License plate recognition system;convolution neural network;smart city
    日期: 2020-06-30
    上传时间: 2020-09-02 17:07:01 (UTC+8)
    出版者: 國立中央大學
    摘要: 車牌辨識系統的應用相當廣泛,例如,電子停車位管理系統、交通違規偵測系統以及被盜車輛系統。大多數的解決方法為使用典型的車牌辨識演算法,透過影像分析技術來處理,主要為三個階段,包括車牌偵測、字元切割,以及字元辨識。這些方法發展了許多年,並且不斷的改進與優化其辨識率。但是都必須著重在兩個前提情況下:一、車牌必須清晰,且不能存在汙損,光源必須均勻;二、車牌不能過於傾斜,使的拍攝角度往往需要固定其位置,否則在字元分割上將會受到影響,造成辨識不易。再者,目前的車牌辨識都採用GPU(Graphics Processing Unit)運算與高階的硬體設備,使成本過於昂貴。為了解決上述三點問題,本研究使用嵌入式系統以及採用一模型"Tiny YOLOv3"(You Only Look Once),該模型是一種機器學習(machine learning),基於深度學習(deep learning)的卷積神經網路(convolutional neural network),利用卷積層(convolution layer)來擷取目標物的特徵,進而達到物件偵測效果。整個辨識過程使用兩組神經網路,第一組從影像中偵測車牌,第二組從偵測到的車牌進行影像處理並字元分割,將分割到的字元送進Tesseract-OCR進行字元辨識。實驗結果顯示,本研究所提出的方法,無須全部滿足上述兩點情況以及使用高階的硬體設備,也能夠將車牌及其字元成功辨識。;License plate recognition systems are widely used, such as electronic parking management systems, traffic violation monitoring systems, and stolen vehicle systems. Most of the solutions are used typical license plate recognition algorithms, which are processed through image analysis techniques, which are mainly in three stages, including license plate localization, character segmentation, and character recognition. These methods have been developed for many years, and their recognition rate has been continuously improved and optimized. But all of them have two important prerequisites. First, the license plate must be clear, and there must be no fouling, and the light source must be uniform. Second, the license plate can’t be too skewed so that the angle and position of shooting view are usually the same. Otherwise the license plate detection and character segmentation will be seriously affected and then cause recognition difficulty. Furthermore, current license plate recognition uses GPU (Graphics Processing Unit) operation and high-end hardware equipment, making the cost too expensive. In order to solve these three points, our research use a model “Tiny YOLOv3” (You Only Look Once). This model is a convolutional neural network based on the deep learning in machine learning. It uses convolutional layers to get the features of object and then achieve the effect of recognition. We use a total of two models in the research. Detecting license plate from the image in the first model, and then use performs image processing and character segmentation from the detected license plates, and sends the segmented characters to Tesseract OCR to do character recognition in the second model. The results show that our research can successfully recognize the license plate and its characters without fully satisfying the above two points and using high-end hardware equipment. 
    显示于类别:[通訊工程學系碩士在職專班 ] 博碩士論文

    文件中的档案:

    档案 描述 大小格式浏览次数
    index.html0KbHTML199检视/开启


    在NCUIR中所有的数据项都受到原著作权保护.

    社群 sharing

    ::: Copyright National Central University. | 國立中央大學圖書館版權所有 | 收藏本站 | 設為首頁 | 最佳瀏覽畫面: 1024*768 | 建站日期:8-24-2009 :::
    DSpace Software Copyright © 2002-2004  MIT &  Hewlett-Packard  /   Enhanced by   NTU Library IR team Copyright ©   - 隱私權政策聲明