研究生: |
蘇侑晨 Su, Yu-Chen |
---|---|
論文名稱: |
基於支持向量機及邊緣差異之印章辨識 Seal Imprint Verification Using SVM and Edge Difference |
指導教授: |
翁詠祿
Ueng, Yeong-Luh |
口試委員: |
鍾偉和
Chung, Wei-ho 林彥宇 Lin, Yen-Yu 吳牧恩 Wu, Mu-En |
學位類別: |
碩士 Master |
系所名稱: |
電機資訊學院 - 電機工程學系 Department of Electrical Engineering |
論文出版年: | 2019 |
畢業學年度: | 107 |
語文別: | 英文 |
論文頁數: | 47 |
中文關鍵詞: | 支持向量機 、印章 、邊緣差異 |
外文關鍵詞: | SVM, seal imprint, edge difference |
相關次數: | 點閱:2 下載:0 |
分享至: |
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在東方國家,印章在金融、行政方面被廣泛地用於驗證個人或組織的身份,
因此有效地識別印章真偽的能力是不可或缺的。
本文針對方形章及圓形章分別提出不同的參考點定位方法,
並在定位後進行幾何轉換以實現圖像配准,
修正圖像取得過程中可能存在的視角不一致所造成的幾何畸變。
藉由分析印章圖像組內差異的來源,我們提出了一個合理的假設,
並定義數種相似度以量化印章圖像間之差異。
取得參考圖像及待測圖像間的邊緣差異後,
我們藉由距離變換產生我們所定義的數種加權矩陣,
最終利用加權矩陣及邊緣差異圖形計算相似度,
並將其作為支援向量機的輸入向量,以判斷印章真偽。
實驗結果顯示不論是以用戶依存或非用戶依存的訓練方法,
我們所提出方法都具有一定的辨識能力。
In Asian countries, seals are widely used for authenticating the identity of a person or organization. Therefore, the ability to efficiently verify whether a seal is either genuine or forged is important.
We use different method to approximate pairs of reference points in reference image and detected imprint image for rectangular and circular imprint, respectively.
Then, geometric transformation is performed to align
the perspective of the detected imprint image with the reference
imprint.
After the edge-difference images between the reference image
and the detected image are created, distance transformation is applied to get several kinds of weighting matrices.
Finally, the edge-difference images are weighted element-wisely with the edge-difference images to calculate some predefined similarities which are used as the input vector of the SVM (support vector machine).
The imprint is then determined to be either genuine or forged. The experimental results show the effectiveness of the proposed verification approach.
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