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研究生: 楊婷棋
May Ting-Chi Yang
論文名稱: 藉由Wings來重建多面體的線段圖
Reconstruction of Line Drawing Graphs of Polygonal Scenes from Wings
指導教授: 李忠謀
Lee, Chung-Mou
學位類別: 碩士
Master
系所名稱: 資訊教育研究所
Graduate Institute of Information and Computer Education
論文出版年: 1996
畢業學年度: 84
語文別: 英文
論文頁數: 79
中文關鍵詞: 線段圖線段圖分析Wing表示法知覺組織電腦視覺
英文關鍵詞: line drawing graph, line drawing analysis, wing representation, perceptual organization, computer vision, labeled line drawing graph
論文種類: 學術論文
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  •   本論文之目的在藉由Wings重建多面體的線段圖。所謂的線段圖(Line Drawing Graph)包含了影像中的稜線(edge)和頂點(vertex);而多面體線段圖,則指影像中所含的物體,其表面都是平面而非曲面。Wings是由實際影像偵測得來的稜線的片段,而且在該片段兩邊的平面方程式都已被計算出來,所以它和一般的稜線不同,除了二維空間的資訊之外,還包含了一些立體的資訊。本研究之目標就是希望由實際影像所偵測到的Wings,將完整的多面體線段圖重建回來。
    本研究共分成三部分。在第一部分中,利用完形心理學家所提出的知覺組織(Perceptual Organization)之原則將落在同一稜線上小段的Wings整合成完整的一長段;在第二部分中,假設每個稜線上至少都有偵測到一條Wing,藉由將Wings做延伸,要把完整的線段圖重建起來;在第三部分中則將第二部分的假設去掉,亦即原影像中的某些稜線可能完全沒有被偵測到,而要將完整的線段圖儘可能重新建立起來。
    經由本研究證實:雖然由影像偵測到的Wings可能不夠完整,有些稜線可能根本沒有被偵測到,甚至還會抓到一些多餘的Wings,但是藉由充份利用Wings所提供的資訊,特別是關於立體的情況,我們仍然可以將影像的線段圖相當完整的建立起來;換言之,先前李忠謀教授在其博士論文中所指出的建立影像線段圖的方法:先由影像偵測出Wings、再由Wings建立完整的線段圖,對多面體而言,確實是可行的。

    This thesis addresses the problem of reconstructing the labeled line drawing graph of a scene containing polygonal surface objects from wing samples extracted from the scene. The line drawing graph of a scene is a representation of all the visible edges and surfaces of objects in the scene. A line drawing graph is said to be labeled if all lines and regions in the graph are interpreted and the 3D locations of all vertices are recovered. The wings, which are derived from a raw fused image, are 2 1/2 D primitives encoding fragments of object boundaries and their adjacent surfaces. Since the sampled wings detected from raw fused images are often short, nearly co-curvilinear, principles of perceptual organization identified by the Gestalt Psychologists are first applied to merge co-edge wings together.
    After the preprocessing of input wing samples, two working algorithms for reconstructing the labeled line drawing graphs of polygonal scenes from wings are given to analyze scenes under various restrictive assumptions. With very idealistic assumptions about the wing samples, a reconstruction algorithm which reconstructs the complete labeled line drawing graph via deterministic rules is devised. As the strong assumptions on input wing samples being removed, a heuristic based algorithm is presented to deal with the possibilities that wings may not be sensed and be "missing" after wing detection stage. By extracting the 3D information of the wings, missing line segments are recovered whenever possible. As a result, the nearly complete labeled line drawing graph is reconstructed.
    In all, construction of labeled line drawing graphs of polygonal scenes via wing features is proven to be feasible. Although the experimental results of wing detection reveal that the sampled wings are sometimes "imperfect", yet the work in this thesis shows that even when there are missing and/or spurious wings in the set of wing samples, the labeled line drawing graph can still be reconstructed nearly completely.

    [中文] 第一章 簡介 第二章 相關文獻探討 第三章 運用知覺組織的觀念整合Wings 第四章 由理想假設下的Wings重建線段圖 第五章 由實際偵測到的Wings重建線段圖 第六章 結論及未來發展 [英文] LIST OF TABLES Ⅷ LIST OF FIGURES Ⅸ 1. Introduction 1 1.1 Definition of Special Terms 2 1.1.1 What are Wings? 4 1.1.2 What is a Line Drawing Graph (LDG) 5 1.2 Problem Definition 6 1.3 Organization of the Thesis 6 2. Literature Review 8 2.1 Survey of Line Drawing Analysis 8 2.1.1 Review of Lee's Reconstruction Algorithm 10 2.2 Perceptual Organization 11 3 Wing Clustering Based on Perceptual Organization 15 3.1 Introduction 15 3.2 Wing Clustering Based on Perceptual Organization 16 3.2.1 Removing Spurious Wings 17 3.2.2 Wing Clustering Based on Proximity Principle 17 3.2.3 Wing Clustering Based on Continuity Principle 18 3.2.4 Deleting Redundant Short Wings 20 3.2.5 Creating New Merged Wings 20 3.3 Complete Wing Clustering Algorithm: CLST 21 3.4 Experimental Wing Samples 22 3.5 Summary 26 4 Reconstruction of LLDG from Perfect Wing Samples 27 4.1 Introduction 27 4.2 Assumptions 28 4.3 New Terminology 28 4.4 Systematic Analysis of Reconstruction of LLDG from Perfect Wings 31 4.4.1 Junction Centered Analysis 32 4.4.2 Segment Centered Analysis 37 4.5 Geometric Constraint Based Decision Rules 41 4.6 Complete Reconstruction Algorithm: REC1 42 4.7 Examples 43 4.8 Summary 43 5 Reconstruction of LLDG from Imperfect Wing Samples 48 5.1 Introduction 48 5.2 Reconstruction of LLDG via Heuristic Rules 49 5.2.1 Classifying Wings into Planar Groups 49 5.2.2 Decision of Must-Segments 50 5.2.3 Collection of Extensible-Segments 55 5.2.4 Locating Probable-Junctions for Each Extensible-Segment 57 5.2.5 Formation of Maybe-Segments 62 5.2.6 Merging close-by Junctions to Form the Final LLDG 63 5.3 Heuristic Based Reconstruction Algorithm: REC2 64 5.4 Experimental Examples 65 5.5 Summary 74 6 Summary, Conclusions and Recommendations for Future Research 75 6.1 Summary and Conclusions 75 6.2 Recommendations for Future Research 76 BIBLIOGRAPHY 77

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