博碩士論文 945402012 詳細資訊




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姓名 顏志平(Chih-Ping Yen)  查詢紙本館藏   畢業系所 資訊工程學系
論文名稱 利用直覺模糊集合為基礎之整體與局部特徵及其在彩色紋理分析之應用
(Global and Local Features Based on Intuitionistic Fuzzy Sets for Color Texture Analysis and Application)
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摘要(中) 紋理分類技術在電腦視覺的應用上,扮演相當重要的角色,在過去幾年儘管已有許多這方面技術的提出,但克服因環境變動如旋轉及缩放所造成紋理分類不一致的現象,仍是最主要的課題。
基於「直覺模糊集合」(intuitionistic fuzzy sets, IFSs)我們提出嶄新的整體與局部特徵,此兩個特徵能描述3個像點間的微紋理結構及其統計資訊,這整體特徵稱為「模糊樣式直方圖」(fuzzy motif histogram, FMH),而局部特徵稱為「模糊樣式頻譜」(fuzzy motif spectrum, FMS);同時,我們也設計出系統架構與直覺模糊集合的相似度比對,透過實驗證明,我們提出的方法不僅有高準確率,並且對旋轉及缩放亦具強韌度。
此外,經實證發現,一些最新的紋理分類方法在利用直覺模糊集合為基礎之下,均較原來提昇準確率。最後,我們的方法也應用在彩色雷射印表機列印來源的鑑識研究,除證明極佳的辨識效果,並建議未來建立印表機列印紋理專屬資料庫的可行性,以提供資料鑑識與犯罪偵查的使用。
摘要(英) Texture classification plays an important role in computer vision and has a wide variety of applications. Many methods of color texture analysis have been developed over the years; however, a major problem is that textures in the real world are often not uniform owing to variations in rotation and scale.
In this thesis, we propose novel features at both the global and local levels—namely, the fuzzy motif histogram (FMH) and the fuzzy motif spectrum (FMS)—using statistics and microtexture information spread across three pixels (i.e., higher-order statistics). Thus, this method achieves texture classification based on the intuitionistic fuzzy sets (IFSs) theory. Furthermore, we offer a system framework and a similarity measure between two IFSs. By conducting many experiments, we explored the effectiveness of the proposed methods, as well as their robustness against image changes, such as changes in rotation and scale.
Additionally, it was found empirically that for texture classification, several state-of-the-art IFS-based methods always achieve higher accuracy than non-IFS-based methods. Finally, we used our proposed system for color laser print identification and conducted a feasibility study to examine the system’s potential for use in digitizing a subject-specific, laser print database as part of data forensics and crime investigation operations.
關鍵字(中) ★ 直覺模糊集合
★ 紋理分類
★ 模糊樣式直方圖
★ 模糊樣式頻譜
★ 資料鑑識
關鍵字(英) ★ intuitionistic fuzzy sets (IFSs)
★ texture classification
★ fuzzy motif histogram (FMH)
★ fuzzy motif spectrum (FMS)
★ data forensics
論文目次 摘要 .................................................. I
Abstract ............................................. II
誌謝 .................................................. III
List of Figures ...................................... VI
List of Tables ....................................... IX
Chapter 1 Introduction ............................... 1
1.1 Motivation ....................................... 1
1.2 Challenges ....................................... 2
1.3 Review of Related Work ........................... 3
1.4 Main Contributions ............................... 12
1.5 Organization of This Thesis ...................... 13
Chapter 2 IFS-based Texture Classification ........... 14
2.1 The Proposed System Framework .................... 14
2.2 Intuitionistic Fuzzy Image Processing ............ 16
2.2.1 Color Model Selection .......................... 16
2.2.2 Intuitionistic Fuzzy Image ..................... 17
2.2.3 Intuitionistic Fuzzy Entropy (IFE) ............. 22
2.3 Global Feature Extraction and Similarity Matching 23
2.3.1 Fuzzy Motif Histogram (FMH) .................... 24
2.3.2 Similarity Measures Between Two FMHs ........... 36
2.3.3 Multiscale FMH ................................. 38
2.4 Local Feature Extraction and Similarity Matching . 40
2.4.1 Motif Unit (MU) Based on IFS ................... 41
2.4.2 Motif Unit Number (MUN) Based on IFS ........... 42
2.4.3 Fuzzy Motif Spectrum (FMS) ..................... 43
2.4.4 Multiscale FMS ................................. 47
2.5 The Integration of FMH and FMS Features .......... 47
2.6 Dimensional Reduction Using Principal Component Analysis (PCA) ................................................ 49
2.7 Estimation of Fuzzification Parameter T .......... 50
Chapter 3 Analysis on Color Texture Classification ... 52
3.1 Classification Methods and Experimental Database . 52
3.1.1 Classification Methods and Notations ........... 52
3.1.2 Classifier and Cross-Validation ................ 55
3.1.3 Colored Brodatz Texture (CBT) Database and Setups 55
3.2 Analysis on IFS-based and non-IFS-based Methods .. 60
3.3 Performance Experiment ........................... 62
3.3.1 Comparative Analysis of Texture Classification Methods ...................................................... 62
3.3.2 Comparative Analysis of Computational Time and Accuracy ............................................. 65
3.3.3 Comparative Analysis of Multi-Fold Cross-Validation ...................................................... 66
3.3.4 Analysis on Integration of Multiscale FMH and Multiscale FMS ....................................... 67
3.3.5 Comparative Analysis with and without image .. 68
3.3.6 Analysis on parameter of IFG ................. 70
3.4 Robustness Experiment ............................ 71
3.4.1 Analysis on Rotation ........................... 72
3.4.2 Analysis on Scale .............................. 77
Chapter 4 Application in Color Laser Print Identification ...................................................... 83
4.1 Scenario and Print Identification Processing ..... 83
4.2 Color Laser Print (CLP) Database and Setups ...... 86
4.2.1 Gathering Color Laser Print via Stereo Microscope ...................................................... 86
4.2.2 Experimental Setup ............................. 89
4.3 Comparative Analysis of Texture Classification Methods ...................................................... 92
Chapter 5 Conclusions and Future Work ................ 94
5.1 Conclusions ...................................... 94
5.2 Future Work ...................................... 94
Reference ............................................ 97
Appendix ............................................. 106
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指導教授 范國清、鄧少華(Kuo-Chin Fan Shao-Hua Deng) 審核日期 2014-7-28
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