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研究生: 江謝朋
Peng Chianghsieh
論文名稱: 基於分離影像像素之低解析度影像放大法
Split Methods For Low-resolution Image Enlargement
指導教授: 林士傑
Shin-Chieh Lin
口試委員:
學位類別: 碩士
Master
系所名稱: 工學院 - 動力機械工程學系
Department of Power Mechanical Engineering
論文出版年: 2008
畢業學年度: 96
語文別: 中文
論文頁數: 94
中文關鍵詞: 影像放大影像退化模型分離法
外文關鍵詞: image enlargement, degradation model, split method
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  • 分離法( Split method )為一種以分離影像像素為基礎的影像放大方法,本研究主要目的為改善分離法。分離法最初是針對黑白影像所設計的,如車牌影像,因此分離法較不適用於其他影像。而原始的分離法為零階( Zero-order )分離法,在此我們提出ㄧ階( 1st order )以及二階( 2nd order )的分離法,希望分離法能夠應用於灰階度變化較複雜的影像。為了探討何種方法為較佳的影像放大方法,本研究將測試上述方法與各種常見的影像放大方法以進行比較。
      本研究所使用的測試影像共有三種類型,第一種測試影像是經由退化模型所模擬的低解析度影像;第二種測試影像是實際拍攝之低解析度影像;第三種測試影像是影像處理領域常見之影像。最後本研究再進一步討論雙立方內插法與二階分離法的優劣。由實驗結果可知本研究所提出的影像放大方法除了快速、簡單,還能夠有效的提高影像對比度,且使影像輪廓較為清晰。


    The objective of this study is to improve split method which was previously proposed for image enlargement. The split method was originally designed for image with two levels such as vehicle license image enlargement. Therefore, it might not fit for other purpose. And we noted the original split method as zero-order split method. In this study, a 1st order and 2nd order split method are proposed. For comparison, the proposed methods and several image enlarging methods are tested.
    There are three sets of test images were used in this study. The first set of images is images degraded from a referential image. The second set of images is low resolution images taken directly from camera. The third set of images is some images frequently used in literature. Further comparison is made between the proposed 2nd order split method and the bi-cubic interpolation method. Results show that the proposed methods are not only simple but also increasing image contrast and clearing image outline.

    摘要 I Abstract II 誌謝 III 目錄 IV 圖目錄 VI 表目錄 IX 第一章 緒論 1 1-1 研究背景 1 1-2 研究動機與目的 3 第二章 文獻回顧 6 2-1 動態影像重建法 6 2-2 靜態影像重建法 7 2-1-1 內插法 7 2-1-2 學習模型超解析放大法 15 2-1-3 分離法 16 2-3 影像退化模型 18 第三章 影像退化模型 28 3-1 製作標準影像 28 3-2 影像退化模型 29 3-3 實現影像退化模型 32 第四章 分離法 47 4-1 改善分離法 47 4-2 一階分離法 50 4-3 二階分離法 52 第五章 實驗結果與討論 57 5-1 放大退化模型影像 57 5-2 放大實際拍攝之低解析度影像 63 5-3 放大一般常見之影像 64 5-4 雙立方內插法與二階分離法之比較 65 第六章 結論與未來展望 90 6-1 結論 90 6-2 未來展望 91 參考文獻 93

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