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研究生: 蕭博文
Bo-wen Hsiao
論文名稱: 以SVM為基礎之偽鈔辨識
SVM based counterfeit banknote recognition
指導教授: 許新添
Hsin-teng Hsu
口試委員: 施慶隆
Ching-long Shih
陳雅淑
Ya-shu Chen
學位類別: 碩士
Master
系所名稱: 電資學院 - 電機工程系
Department of Electrical Engineering
論文出版年: 2009
畢業學年度: 97
語文別: 中文
論文頁數: 109
中文關鍵詞: 支撐向量機鄰近灰階相依矩陣偽鈔辨識主量分析
外文關鍵詞: neighboring gray level dependence matrix, paper currency recognition, banknote recognition
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  • 隨著科技的進步,製造偽鈔的手法也越來越逼真,現今的各種鈔票防偽設計皆一一被破解,一般民眾及商家使用市售的簡單檢驗工具,例如驗鈔筆、紫外光燈管已不敷使用,因此如何準確的檢出偽鈔使其無所遁形,便成為當下重要的課題。我們將發展一套新的以機器視覺為基礎的偽鈔辨識機,改善現有的偽鈔辨識機制。
    早期以機器視覺為基礎的鈔票辨識系統皆以類神經網路為辨識核心,且對於鈔票之特徵描述皆無詳細的研究探討,然而類神經網路的架構存在許多問題,本論文擬針對國內新台幣紙鈔的紋理特性,結合簡單的背光設備作詳細紋理特徵的分析,包含色彩紋理、灰階紋理與空間結構特徵,並提出PCA可變樣板比對之演算法檢測鈔票,搭配擁有強大學習能力的SVM辨識鈔票的真偽,改善類神經網路結果為區域最小解的風險,實作一套即時的自動光學偽鈔辨識系統,提高以機器視覺為基礎的偽鈔辨識系統辨識率與效率。


    With the advance in technology, the method of making counterfeit banknote is getting more and more sophisticated that leads to the failure of many banknotes detectors, such as banknote verification pen and ultraviolet tube that ordinary people and stores use. Therefore, the problem on how to detect counterfeit banknotes correctly has become an important issue. We will develop a new counterfeit banknote recognition system based on machine vision to alleviate the current technologies.
    In the early years, machine learning based banknote recognition systems are based on neural network, and researches on the description of features for banknotes have not been fully discussed. This study proposes an analysis method according to the texture features of NT banknotes in combination with simple backlight device, inclusive of color texture, grayscale texture and spatial structure features, and use PCA variable template matching algorithm to do banknote detection. Unlike NN which may converge to a local minimum, our method implements a real-time automatic optical counterfeit banknote recognition system which is machine vision based to increase the recognition rate and performance.

    英文摘要.....................................................................I 中文摘要....................................................................II 誌 謝...................................................................III 目 錄....................................................................IV 圖表索引....................................................................VI 第一章 緒論.................................................................1 1.1 研究背景與動機......................................................1 1.2 相關文獻探討........................................................6 1.3 研究方法............................................................9 1.4 論文架構...........................................................10 第二章 基礎理論............................................................11 2.1 紋理分析...........................................................11 2.1.1 灰階共生矩陣..................................................12 2.1.2 鄰近灰階相依矩陣..............................................15 2.2 主量分析...........................................................20 2.3 支撐向量機.........................................................26 2.3.1 線性支撐向量機................................................26 2.3.2 非線性支撐向量機..............................................32 2.3.3 支撐向量機參數模型之正確率評估................................35 2.3.4 多類支撐向量機................................................36 第三章 偽鈔辨識系統架構....................................................39 3.1 系統流程...........................................................39 3.2 硬體平台設備.......................................................41 3.3 物件切割...........................................................42 3.4 影像前處理.........................................................46 3.5 PCA可變樣板檢測....................................................50 3.6 特徵擷取...........................................................53 3.6.1 視窗安全線與浮水印之空間特徵..................................54 3.6.2 視窗安全線與浮水印之紋理特徵..................................58 3.6.3 特徵擷取流程圖................................................60 第四章 實驗結果............................................................61 4.1 特徵擷取實驗結果與討論.............................................64 4.1.1 各種輸入之情況................................................64 4.1.2 真偽鈔特徵之比較..............................................74 4.2 支撐向量機辨識器實驗結果與討論.....................................77 4.2.1 支撐向量機核函數與其參數之選擇................................77 4.2.2 使用階段實驗結果..............................................82 4.3 實驗結果討論.......................................................88 第五章 結論與未來研究方向..................................................90 5.1 結論...............................................................90 5.2 未來研究方向.......................................................91 參考文獻....................................................................92

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