Automation and computational intelligence for road maintenance and management : advances and applications /: advances and applications. (2022)
- Record Type:
- Book
- Title:
- Automation and computational intelligence for road maintenance and management : advances and applications /: advances and applications. (2022)
- Main Title:
- Automation and computational intelligence for road maintenance and management : advances and applications
- Further Information:
- Note: Hamzeh Zakeri, Fereidoon Moghadas Nejad, Amir H. Gandomi.
- Authors:
- Zakeri, Hamzeh
Nejad, Fereidoon Moghadas
Gandomi, Amir Hossein - Contents:
- Dedication xiii Preface xv Author Biography xvii 1 Concepts and Foundations Automation and Emerging Technologies 1 1.1 Introduction 1 1.2 Structure and Framework of Automation and Key Performance Indexes (KPIs) 3 1.3 Advanced Image Processing Techniques 4 1.4 Fuzzy and Its Recent Advances 6 1.5 Automatic Detection and Its Applications in Infrastructure 6 1.6 Feature Extraction and Fragmentation Methods 8 1.7 Feature Prioritization and Selection Methods 8 1.8 Classification Methods and Its Applications in Infrastructure Management 10 1.9 Models of Performance Measures and Quantification in Automation 11 1.10 Nature-Inspired Optimization Algorithms (NIOAS) 12 1.11 Summary and Conclusion 14 1.12 Questions and Exercise 14 2 The Structure and Framework of Automation and Key Performance Indices (KPIs) 15 2.1 Introduction 15 2.2 Macro Plan and Architecture of Automation 16 2.2.1 Infrastructure Automation 16 2.2.2 Importance of Infrastructure Automation Evaluation 16 2.3 A General Framework and Design of Automation 17 2.4 Infrastructure Condition Index and Its Relationship with Cracking 20 2.4.1 Road Condition Index 20 2.4.2 Bridge Condition Index 28 2.4.3 Tunnel Condition Index 31 2.5 Automation, Emerging Technologies, and Futures Studies 31 2.6 Summary and Conclusion 32 2.7 Questions 32 Further Reading 32 3 Advanced Images Processing Techniques 35 Introduction 35 3.1 Preprocessing (PPS) 36 3.1.1 Edge Preservation Index (EPI) 39 3.1.2 Edge-Strength Similarity-Based Image QualityDedication xiii Preface xv Author Biography xvii 1 Concepts and Foundations Automation and Emerging Technologies 1 1.1 Introduction 1 1.2 Structure and Framework of Automation and Key Performance Indexes (KPIs) 3 1.3 Advanced Image Processing Techniques 4 1.4 Fuzzy and Its Recent Advances 6 1.5 Automatic Detection and Its Applications in Infrastructure 6 1.6 Feature Extraction and Fragmentation Methods 8 1.7 Feature Prioritization and Selection Methods 8 1.8 Classification Methods and Its Applications in Infrastructure Management 10 1.9 Models of Performance Measures and Quantification in Automation 11 1.10 Nature-Inspired Optimization Algorithms (NIOAS) 12 1.11 Summary and Conclusion 14 1.12 Questions and Exercise 14 2 The Structure and Framework of Automation and Key Performance Indices (KPIs) 15 2.1 Introduction 15 2.2 Macro Plan and Architecture of Automation 16 2.2.1 Infrastructure Automation 16 2.2.2 Importance of Infrastructure Automation Evaluation 16 2.3 A General Framework and Design of Automation 17 2.4 Infrastructure Condition Index and Its Relationship with Cracking 20 2.4.1 Road Condition Index 20 2.4.2 Bridge Condition Index 28 2.4.3 Tunnel Condition Index 31 2.5 Automation, Emerging Technologies, and Futures Studies 31 2.6 Summary and Conclusion 32 2.7 Questions 32 Further Reading 32 3 Advanced Images Processing Techniques 35 Introduction 35 3.1 Preprocessing (PPS) 36 3.1.1 Edge Preservation Index (EPI) 39 3.1.2 Edge-Strength Similarity-Based Image Quality Metric (ESSIM) 39 3.1.3 QILV Index 40 3.1.4 Structural Content Index (SCI) 40 3.1.5 Signal-To-Noise Ratio Index (PSNR) 41 3.1.6 Computational time index (CTI) 41 3.2 Preprocessing Using Single-Level Methods 41 3.2.1 Single-Level Methods 42 3.2.2 Linear Location Filter (LLF) 42 3.2.3 Median Filter 44 3.2.4 Wiener Filter 45 3.3 Preprocessing Using Multilevel (Multiresolution) Methods 49 3.3.1 Wavelet Method 49 3.3.2 Ridgelet Transform 57 3.3.3 Curvelet Transform 62 3.3.4 Decompaction and Reconstruction Images Using Shearlet Transform (SHT) 66 3.3.5 Discrete Shearlet Transform (DST) 67 3.3.6 Shearlet Decompaction and Reconstruction 69 3.3.7 Shearlet and Wavelet Comparison 71 3.3.8 Complex Shearlet Transform 74 3.3.9 Complex Shearlet Transform for Image Enhancement 78 3.3.10 Low and High frequencies of Complex Shearlet Transform for Image Denoising 79 3.4 General Comparison of Single/Multilevel Methods and Selection of Methods for Noise Removal and Image Enhancement 87 3.5 Application of Preprocessing 88 3.5.1 Pavement Surface Drainage Condition Assessment 88 3.6 Summary and Conclusion 93 3.7 Questions and Exercises 94 4 Fuzzy and Its Recent Advances 97 4.1 Introduction 97 4.1.1 Type-1 Fuzzy Set Theory 97 4.1.2 Type-2 Fuzzy Set Theory 98 4.1.3 α-Plane Representation of General Type-2 Fuzzy Sets 99 4.1.4 Type-Reduction 101 4.1.5 Defuzzification 103 4.1.6 Type-3 Fuzzy Logic Sets 105 4.2 Ambiguity Modeling in the Fuzzy Methods 106 4.2.1 Background of General Type-2 Fuzzy Sets 106 4.3 Theory of Automatic Methods for MF Generation 110 4.3.1 Automatic Procedure to Generate a 3D Membership Function 110 4.4 Steps and Components of General 3D Type-2 Fuzzy Logic Systems (G3DT2 FL) 111 4.4.1 General 3D Type-2 Fuzzy Logic Systems (G3DT2 FL) 111 4.5 General 3D Type-2 Polar Fuzzy Method 118 4.5.1 Automatic MF Generator 118 4.5.2 A Measure of Ultrafuzziness 119 4.5.3 Theoretic Operations of 3D Type-2 Fuzzy Sets in the Polar Frame 122 4.5.4 Representation of Fuzzy 3D Polar Rules 123 4.5.5 ϑ-Slice and α − Planes 123 4.6 Computational Performance (CP) 128 4.7 Application of G3DT2FLS in Pattern Recognition 129 4.7.1 Examples of the Application of Fuzzy Methods in Infrastructure Management 129 4.8 Summary and Conclusion 136 4.9 Questions and Exercises 138 Further Reading 138 5 Automatic Detection and Its Applications in Infrastructure 141 5.1 Introduction 141 5.1.1 Photometric Hypotheses (PH) 142 5.1.2 Geometric and Photometric Hypotheses (GPH) 143 5.1.3 Geometric Hypotheses (GH) 143 5.1.4 Transform Hypotheses (TH) 143 5.2 The Framework for Automatic Detection of Abnormalities in Infrastructure Images 144 5.2.1 Wavelet Method 144 5.2.2 High Amplitude Wavelet Coefficient Percentage (HAWCP) 144 5.2.3 High-Frequency Wavelet Energy Percentage (HFWEP) 146 5.2.4 Wavelet Standard Deviation (WSTD) 147 5.2.5 Moments of Wavelet 148 5.2.6 High Amplitude Shearlet Coefficient Percentage (HASHCP) 148 5.2.7 High-Frequency Shearlet Energy Percentage (HFSHEP) 156 5.2.8 Fractal Index 160 5.2.9 Moments of Complex Shearlet 164 5.2.10 Central Moments q 168 5.2.11 Hu Moments 169 5.2.12 Bamieh Moments 174 5.2.13 Zernike Moments 177 5.2.14 Statistic of Complex Shearlet 186 5.2.15 Contrast of Complex Shearlet 186 5.2.16 Correlation of Complex Shearlet 189 5.2.17 Uniformity of Complex Shearlet 189 5.2.18 Homogeneity of Complex Shearlet 189 5.2.19 Entropy of Complex Shearlet 191 5.2.20 Local Standard Deviation of Complex Shearlet Index (F_Local_STD) 193 5.3 Summary and Conclusion 197 5.4 Questions and Exercises 202 Further Reading 203 6 Feature Extraction and Fragmentation Methods 213 6.1 Introduction 213 6.2 Low-Level Feature Extraction Methods 213 6.3 Shape-Based Feature (SBF) 216 6.3.1 Center of Gravity (COG) or Center of Area (COA) 216 6.3.2 Axis of Least Inertia (ALI) 217 6.3.3 Average Bending Energy 218 6.3.4 Eccentricity Index (ECI) 218 6.3.5 Circularity Ratio (CIR) 220 6.3.6 Ellipse Variance Feature (EVF) 220 6.3.7 Rectangularity Feature (REF) 222 6.3.8 Convexity Feature (COF) 223 6.3.9 Euler Number Feature (ENF) 223 6.3.10 Profiles Feature (PRF) 224 6.4 1D Function-Based Features for Shape Representation 225 6.4.1 Complex Coordinates Feature (CCF) 226 6.4.2 Extracting Edge Characteristics Using Complex Coordinates 226 6.4.3 Edge Detection Using Even and Odd Shearlet Symmetric Generators 228 6.4.4 Object Detection and Isolation Using the Shearlet Coefficient Feature (SCF) 230 6.5 Polygonal-Based Features (PBF) 231 6.6 Spatial Interrelation Feature (SIF) 231 6.7 Moments Features (MFE) 231 6.8 Scale Space Approaches for Feature Extraction (SSA) 231 6.9 Shape Transform Features (STF) 231 6.9.1 Radon Transform Features (RTF) 231 6.9.2 Linear Radon Transform 233 6.9.3 Translation of RT 235 6.9.4 Scaling of RT 235 6.9.5 Point and Line Transform Using RT 235 6.9.6 RT in Sparse Objects 238 6.9.7 Point and Line in RT 238 6.10 Various Case-Based Examples in Infrastructures Management 241 6.10.1 Case 1: Feature Extraction from Polypropylene Modified Bitumen Optical Microscopy Images 241 6.10.2 Ratio of Number of Black Pixels to the Number of Total Pixels (RBT) 245 6.10.3 Ratio of Number of Black Pixels to the Number of Total Pixels in Watershed Segmentation (RWS) 246 6.10.4 Number and Average Area of the White Circular Objects in the Binary Image (The number of circular objects [NCO] & ACO) 250 6.10.5 Entropy of the Image 250 6.10.6 Radon Transform Maximum Value (RTMV) 252 6.10.7 Entropy of Rado … (more)
- Edition:
- 1st
- Publisher Details:
- Hoboken : John Wiley & Sons, Inc
- Publication Date:
- 2022
- Extent:
- 1 online resource
- Subjects:
- 363.12560285
Road construction industry -- Automation
Computational intelligence - Languages:
- English
- ISBNs:
- 9781119800668
- Related ISBNs:
- 9781119800644
- Notes:
- Note: Includes bibliographical references and index.
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- British Library HMNTS - ELD.DS.825278
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