研究生: |
吳建忠 Chien-Chung Wu |
---|---|
論文名稱: |
於未設限環境中車牌辨識系統模擬與分析 Simulation and Analysis of Vehicle License Plate Recognition in an Unrestricted Environment |
指導教授: |
王乃堅
Nai-Jian Wang |
口試委員: |
姚立德
none 白宏達 none 鍾順平 none 陳建中 none |
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: | 2006 |
畢業學年度: | 94 |
語文別: | 中文 |
論文頁數: | 62 |
中文關鍵詞: | 車牌定位 、車牌辨識 、倒傳遞神經網路 |
外文關鍵詞: | Localization, Recognition, Back propagation neural networks |
相關次數: | 點閱:487 下載:5 |
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本論文以實現嵌入式平台為設計考量,選用運算複雜度較低的影像處理技術或演算法,盡可能利用簡單的數學運算減少運算時間,以降低嵌入式系統負擔。影像處理程序分成定位處理階段、前置處理階段及辨識處理階段。定位處理階段的工作就是擷取車牌的部份,其處理步驟為灰階轉換、影像強化、邊緣偵測、密度計算及車牌定位;前置處理階段的目的是輔助提升字元辨識率,其處理步驟為影像二值化、車牌四邊頂點估測、車牌傾斜矯正、影像細化及字元分割;辨識處理階段採用倒傳遞神經網路做為字元辨識演算法,其處理步驟為字元正規化及字元辨識。本論文採用1026張大小為384x256接近現實未設限環境影像進行驗證,將影像依其車牌亮度、影像複雜度、車牌拍攝距離、車牌拍攝角度、車牌傾斜角度及車牌周圍色調等特性加以分類。依照其正確率探討失敗步驟與原因、字元辨識率及平均執行時間,評估系統效能並且提供影像處理步驟或演算法修改前後比較的基準。利用分析結果找出系統在設限環境的屬性、探討未設限環境對系統造成的影響及針對可能面臨的問題找出可行的解決方案。最後找出適當的車牌定位與字元辨識系統之影像處理程序,以期在未設限環境中增加系統應用領域或實用性,使其更符合實際應用。
In this thesis, we design a method for the localization and recognition of vehicle license plates system. In order to be implemented on an embedded platform, we apply algorithm with simple mathematical operation to reduce the require computation. The proposed method consist of three parts: localization, preprocessing, and recognition. Localization seeks out probable position of vehicle license plates. Preprocessing helps next stage to increase recognition rate. It applies back propagation neural networks to identify each character of vehicle license plates in recognition. We take 1026 images in unrestricted environment each with 384x256 pixel to test our method. These images are classified by illumination, complexity, distance, shooting angle, tilted angle of vehicle license plates, and color of vehicle license plates background. Then, we analyze the recognition rate, average execution time, and reasons for failure in different image classes. Also, the efficiency of each step in our algorithm is studied. It provides us with information about the critical steps. This will be useful to improve the system in the future.
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