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Computational Intelligence. Theory and Applications. Edition No. 1

  • Book

  • 416 Pages
  • November 2024
  • John Wiley and Sons Ltd
  • ID: 6007407
This book provides a comprehensive exploration of computational intelligence techniques and their applications, offering valuable insights into advanced information processing, machine learning concepts, and their impact on agile manufacturing systems.

Computational Intelligence presents a new concept for advanced information processing. Computational Intelligence (CI) is the principle, architecture, implementation, and growth of machine learning concepts that are physiologically and semantically inspired. Computational Intelligence methods aim to develop an approach to evaluating and creating flexible processing of human information, such as sensing, understanding, learning, recognizing, and thinking. The Artificial Neural Network simulates the human nervous system’s physiological characteristics and has been implemented numerically for non-linear mapping. Fuzzy Logic Systems simulate the human brain’s psychological characteristics and have been used for linguistic translation through membership functions and bioinformatics. The Genetic Algorithm simulates computer evolution and has been applied to solve problems with optimization algorithms for improvements in diagnostic and treatment technologies for various diseases. To expand the agility and learning capacity of manufacturing systems, these methods play essential roles. This book will express the computer vision techniques that make manufacturing systems more flexible, efficient, robust, adaptive, and productive by examining many applications and research into computational intelligence techniques concerning the main problems in design, making plans, and manufacturing goods in agile manufacturing systems.

Table of Contents

Introduction xvii

1 Computational Intelligence Theory: An Orientation Technique 1
S. Jaisiva, C. Kumar, S. Sakthiya Ram, C. Sakthi Gokul Rajan and P. Praveen Kumar

1.1 Computational Intelligence 2

1.2 Application Fields for Computational Intelligence 4

1.2.1 Neural Networks 4

1.2.1.1 Classification 4

1.2.1.2 Clustering or Compression 5

1.2.1.3 Generation of Sequences or Patterns 5

1.2.1.4 Control Systems 5

1.2.1.5 Evolutionary Computation 6

1.2.2 Fuzzy Logic 6

1.2.2.1 Fuzzy Control Systems 6

1.2.2.2 Fuzzy Systems 6

1.2.2.3 Behavioral Motivations for Fuzzy Logic 7

1.3 Computational Intelligence Paradigms 7

1.3.1 Artificial Neural Networks 7

1.3.2 Evolutionary Computation (EC) 10

1.3.3 Optimization Method 11

1.3.3.1 Optimization 11

1.4 Architecture Assortment 12

1.4.1 Swarm Intelligence 14

1.4.2 Artificial Immune Systems 14

1.5 Myths About Computational Intelligence 15

1.6 Supervised Learning in Computational Intelligence 16

1.6.1 Performance Measures 17

1.6.1.1 Accuracy 17

1.6.1.2 Complexity 18

1.6.1.3 Convergence 19

1.6.2 Performance Factors 19

1.6.2.1 Data Preparation 19

1.6.2.2 Scaling and Normalization 19

1.6.2.3 Learning Rate and Momentum 20

1.6.2.4 Learning Rate 20

1.6.2.5 Noise Injection 20

1.7 Training Set Manipulation 21

1.8 Conclusion 21

References 21

2 Nature-Inspired Algorithms for Computational Intelligence Theory - A State-of-the-Art Review 25
B. Akoramurthy, K. Dhivya and B. Surendiran

2.1 Introduction 25

2.2 Related Works 27

2.3 Optimization and Its Algorithms 28

2.3.1 Definition 28

2.3.2 Mathematical Notations 28

2.3.3 Gradient-Based Algorithms 29

2.3.4 Gradient-Free Optimizers or Algorithms 31

2.4 Metaheuristic Optimization Methods 32

2.4.1 Ant Colony Algorithm 32

2.4.1.1 Ant Colony Optimization Algorithm 32

2.4.2 Flower Pollination Algorithm 34

2.4.3 Genetic Algorithms 35

2.4.4 Evolutionary Algorithm 36

2.4.5 Method Based on Bats 37

2.4.6 Cuckoo Searching Method 38

2.4.7 Firefly Algorithm 39

2.4.8 Particle Swarm Optimization Algorithm 41

2.4.9 Krill Herd Algorithm 42

2.4.10 Artificial Bee Colony (ABC) 43

2.5 Computational and Autonomous Systems 44

2.5.1 Computational Features of Nature-Inspired Computing 44

2.5.2 Comparison with Legacy Algorithms 45

2.5.3 Autonomous Criticality Systems 46

2.6 Unresolved Issues for Continued Study 47

References 49

3 AI-Based Computational Intelligence Theory 53
Jana Selvaganesan, S. Arunmozhiselvi, E. Preethi and S. Thangam

3.1 Computational Intelligence 54

3.2 Designing Expert Systems 55

3.2.1 Characteristics 56

3.3 Core of Computational Intelligence 56

3.3.1 Artificial Intelligence (AI) 56

3.3.2 Machine Learning (ML) 57

3.3.3 Neural Networks 57

3.3.4 Evolutionary Computation 58

3.3.5 Fuzzy Systems 58

3.3.6 Swarm Intelligence 59

3.3.7 Bayesian Networks 60

3.3.8 Optimization Techniques 60

3.3.9 Data Mining and Pattern Recognition 60

3.3.10 Decision Support Systems 61

3.3.11 Hybrid Approaches 61

3.4 Research and Development 62

3.4.1 Government Plans in Enriching AI-Based Computational Intelligence Theory 62

3.4.1.1 Funding and Research Initiatives 62

3.4.1.2 Policy and Regulation 62

3.4.1.3 Standards and Interoperability 63

3.4.1.4 Education and Workforce Development 63

3.4.1.5 Industry Collaboration and Partnerships 63

3.4.1.6 Ethical Guidelines and Responsible AI 63

3.4.1.7 International Collaboration and Governance 64

3.5 New Opportunities and Challenges 64

3.5.1 Explainable AI (XAI) 64

3.5.2 Adversarial Machine Learning 65

3.5.3 AI for Edge Computing 65

3.5.4 Continual Learning 67

3.5.5 Meta-Learning 68

3.5.6 AI for Cybersecurity 69

3.5.7 AI for Healthcare 70

3.5.7.1 AI for Healthcare-Based Recommendation System 72

3.5.8 Responsible AI 72

3.5.9 AI and Robotics Integration 73

3.5.10 AI for Sustainability and Climate Change 74

3.5.11 Quantum Computing and AI 75

3.5.12 Human-AI Collaboration 76

3.6 Applications 77

3.6.1 Google-Waymo Car 77

3.6.2 ChatGPT 79

3.6.3 Boston Dynamics’ Atlas 80

3.6.4 Netflix 81

3.6.5 Trinetra 82

3.6.6 Voice-Activated Backpack 83

3.7 Case Study: YOLO v7 for Object Detection in TensorFlow 84

3.7.1 Yolo V 7 84

3.7.2 Working and Its Features 85

3.7.3 Configuration to Deploy YOLO V 7 87

3.8 Results 88

3.9 Performance Analysis 89

3.10 Challenges in Automation 91

3.10.1 Marching Towards Solution 92

3.11 Conclusion 93

References 93

4 Information Processing, Learning, and Its Artificial Intelligence 97
P. Praveenkumar, Pragati M., Prathiba S., Mirthulaa G., Supriya P., Jayashree B. and Jayasri R.

4.1 Introduction - Artificial Intelligence 98

4.2 Artificial Intelligence and Its Learning 99

4.3 Artificial Intelligence’s Effects on IT 100

4.4 Examples of Artificial Intelligence 101

4.4.1 Smart Learning Content 101

4.4.2 Intelligent Tutorial System Future 103

4.4.3 Virtual Facilitators and Learning Environment 104

4.4.4 Content Analytics 105

4.5 Data Processing and AI in Human-Centered Manufacturing 106

4.6 Information Learning 107

4.6.1 Information Learning Through AI - Chatbots 107

4.6.2 Information Learning Through AI - Virtual Reality (vr) 108

4.6.3 Information Learning Through AI - Management of Learning (LMS) 110

4.6.4 Information Learning Through AI - Robotics 111

4.6.5 AI Invoice Processing is Not Fantastical - It is Fantastic 113

4.7 Results 113

4.8 Conclusion 114

References 114

5 Computational Intelligence Approach for Exploration of Spatial Co-Location Patterns 117
S. LourduMarie Sophie, S. Siva Sathya, S. Sharmiladevi and J. Dhakshayani

5.1 Introduction 118

5.2 Spatial Data Mining 120

5.2.1 Spatial Co-Location Pattern Mining 120

5.3 Preliminaries 123

5.3.1 Basic Concepts 123

5.3.1.1 Feature Instance 124

5.3.1.2 Participation Ratio (PR) 124

5.3.1.3 Participation Index (PI) 125

5.3.1.4 Neighbor Relation 125

5.3.1.5 Conditional Neighborhood 126

5.3.2 Apache Hadoop - MapReduce 126

5.3.3 Related Work 128

5.4 Proposed Grid-Conditional Neighborhood Algorithm 130

5.4.1 Module Description 131

5.4.1.1 Search Neighbor 131

5.4.1.2 Group Neighbors 132

5.4.1.3 Pattern Search 133

5.4.1.4 Top K Pattern Generation 133

5.5 Experimental Setup and Analysis 134

5.5.1 Dataset Used 134

5.5.2 Performance Analysis 136

5.6 Discussion and Conclusion 138

References 140

6 Computational Intelligence-Based Optimal Feature Selection Techniques for Detecting Plant Diseases 145
Karthickmanoj R., S. Aasha Nandhini and T. Sasilatha

6.1 Introduction 145

6.2 Literature Survey 146

6.3 Proposed Framework 151

6.4 Simulation Results 152

6.5 Summary 156

References 156

7 Protein Structure Prediction Using Convolutional Neural Networks Augmented with Cellular Automata 159
Pokkuluri Kiran Sree, Prasun Chakrabarti, Martin Margala and SSSN Usha Devi N.

7.1 Introduction 160

7.2 Methods 162

7.3 Design of the Model 164

7.4 Results and Comparisons 167

7.5 Conclusion 172

References 172

8 Modeling and Approximating Renewable Energy Systems Using Computational Intelligence 175
B. Balaji, P. Hemalatha, T. Rampradesh, G. Anbarasi and A. Eswari

8.1 Introduction 176

8.2 Expert System 178

8.3 Artificial Neural Networks 179

8.4 ANN in Renewable Energy Systems 182

8.5 Conclusion 185

References 186

9 Computational Intelligence and Deep Learning in Health Informatics: An Introductory Perspective 189
J. Naskath, R. Rajakumari, Hamza Aldabbas and Zaid Mustafa

9.1 Introduction 190

9.2 Mobile Application in Health Informatics Using Deep Learning 191

9.3 Health Informatics Wearables Using Deep Learning 197

9.4 Electroencephalogram 202

9.5 Conclusion 203

References 207

10 Computational Intelligence for Human Activity Recognition (HAR) 213
Thangapriya and Nancy Jasmine Goldena

10.1 Introduction 214

10.2 Fuzzy Logic in Human Judgment and Decision-Making 215

10.2.1 FL Algorithm 216

10.2.2 Applications of FL 217

10.2.3 Advantages of FL 217

10.2.4 Disadvantages of FL 218

10.2.5 Utilizing FLS and FIS in HAR Research and Health Monitoring 218

10.3 Artificial Neural Networks: From Perceptrons to Modern Applications 219

10.3.1 ANN Algorithm 221

10.3.2 Applications of ANN 222

10.3.3 Advantages of ANN 222

10.3.4 Disadvantages of ANN 222

10.3.5 Artificial Neural Networks in HAR Research 223

10.4 Swarm Intelligence 223

10.4.1 SI Algorithm 224

10.4.2 Applications of SI 224

10.4.3 Advantages of SI 225

10.4.4 Disadvantages of SI 225

10.4.5 Swarm Intelligence Techniques in HAR Research 225

10.5 Evolutionary Computing 226

10.5.1 EC Algorithm 226

10.5.2 Applications of EC 227

10.5.3 Advantages of EC 228

10.5.4 Disadvantages of EC 228

10.5.5 Harnessing Evolutionary Computation for HAR Research 228

10.6 Artificial Immune System 228

10.6.1 AIS Algorithm 229

10.6.2 Applications of AIS 230

10.6.3 Advantages of AIS 230

10.6.4 Disadvantages of AIS 230

10.6.5 Harnessing AIS for Preventive Measures 231

10.7 Conclusion 231

References 232

11 Computational Intelligence for Multimodal Analysis of High-Dimensional Image Processing in Clinical Settings 235
B. Balaji, P. Pugazhendiran, N. Sivanantham, N. Velammal and P. Vimala

11.1 Basics of Machine Learning 236

11.2 Feature Extraction 237

11.3 Selection of Features 238

11.4 Statistical Classifiers 239

11.5 Neural Networks 242

11.6 Biometric Analysis 244

11.7 Data from High-Resolution Medical Imaging 251

11.8 Computational Architectures 255

11.9 Timing and Uncertainty 256

11.10 AI and Risk of Harm 258

11.11 Conclusion 259

References 259

12 A Review of Computational Intelligence-Based Biometric Recognition Methods 263
T. IlamParithi, K. Antony Sudha and D. Jessintha

12.1 Introduction 263

12.1.1 Objective 264

12.2 Computational Intelligence 264

12.3 CI-Based Biometric Recognition 266

12.3.1 Acquisition 266

12.3.2 Segmentation 266

12.3.3 Quality Assessment 269

12.3.4 Enhancement 270

12.3.5 Feature Extraction 270

12.3.6 Matching 271

12.3.7 Classification 272

12.3.8 Score Normalization 272

12.3.9 Anti-Spoofing 272

12.3.10 Privacy 273

12.4 Applications 273

12.4.1 Business 273

12.4.2 Education 274

12.4.3 Military 275

12.4.4 Health Care 276

12.4.5 Banking 276

12.5 Conclusion 277

References 277

13 Seeing the Unseen: An Automated Early Breast Cancer Detection Using Hyperspectral Imaging 281
Sravan Kumar Sikhakolli, Suresh Aala, Sunil Chinnadurai and Inbarasan Muniraj

13.1 Introduction 282

13.1.1 Conventional Imaging Methods for Detecting BC 283

13.1.2 Optical Imaging Techniques to Detect BC 284

13.2 Hyperspectral Imaging (HSI) 285

13.2.1 How Does HSI Setup Look Like? 286

13.3 State-of-the-Art Techniques for BC Detection 287

13.3.1 Breast Cancer Ex Vivo Analysis 287

13.3.2 Breast Cancer In Vivo Analysis 290

13.4 Artificial Intelligence in BC Detection Using HSI 291

13.4.1 Deep Learning in HSI 291

13.4.2 Convolutional Neural Networks 292

13.4.3 Deep Belief Networks Using HSI 293

13.4.4 Residual Networks 293

13.5 Discussion and Conclusion 293

References 294

14 Shedding Light into the Dark: Early Oral Cancer Detection Using Hyperspectral Imaging 301
Suresh Aala, Sravan Kumar Sikhakolli, Inbarasan Muniraj and Sunil Chinnadurai

14.1 Introduction 302

14.2 HSI in HNC Detection 305

14.3 Deep Learning in In Vivo HSI 313

14.3.1 Endoscopic 313

14.4 Conclusion and Future Research Directions 315

References 316

15 Machine Learning Techniques for Glaucoma Screening Using Optic Disc Detection 321
V. Subha, S. Niraja P. Rayen and Manivanna Boopathi

15.1 Introduction 322

15.1.1 Ophthalmic Process 324

15.1.2 Digital Imaging 324

15.1.2.1 Image Processing 325

15.1.3 Eye and Its Parts 326

15.1.3.1 Optic Disc 327

15.1.3.2 Aqueous Humor 327

15.1.3.3 Choroid 327

15.1.3.4 Ciliary Body 327

15.1.3.5 Ciliary Muscle 327

15.1.3.6 Iris 328

15.1.3.7 Pupil 328

15.1.3.8 Retina 328

15.1.3.9 Photoreceptor Cells 328

15.1.3.10 Retinal Blood Vessels 328

15.1.3.11 Sclera 329

15.1.3.12 Uvea 329

15.1.3.13 Visual Axis 329

15.1.3.14 Visual Cortex 329

15.1.3.15 Visual Fields 329

15.1.3.16 Vitreous 329

15.1.3.17 Zonules 330

15.1.3.18 Macula (Yellow Spot) 330

15.1.3.19 Optic Nerve 330

15.1.4 Eye Diseases 330

15.1.4.1 Myopia 330

15.1.4.2 Hyperopia 330

15.1.4.3 Astigmatism 330

15.1.4.4 Presbyopia 331

15.1.4.5 Strabismus 331

15.1.4.6 Amblyopia 331

15.1.4.7 Cataracts 331

15.1.4.8 Glaucoma 332

15.1.5 Indications of Glaucoma 332

15.1.6 Causes of Glaucoma 332

15.1.6.1 Dietary 332

15.1.6.2 Ethnicity and Gender 332

15.1.6.3 Genetics 333

15.1.7 Analytical Methods of Glaucoma 333

15.2 Glaucoma Screening with Optic Disc and Classification 334

15.2.1 Optic Disc Detection 335

15.2.2 Cropping ROI 337

15.2.3 Optic Disc Segmentation 338

15.2.4 Optic Cup Segmentation 338

15.2.5 Post-Processing 340

15.2.5.1 Cup-Disc Ratio 340

15.2.5.2 Evaluation of the NRR Area in the ISNT Quadrants 341

15.2.5.3 Superpixel Method 341

15.2.5.4 Level Set Method 342

15.3 Experimental Section 342

15.3.1 Dataset Description 342

15.3.2 Experimental Images 343

15.3.3 Experimental Testing Phase 343

15.3.4 Performance Analysis 344

15.4 Conclusion 345

References 346

16 Role of Artificial Intelligence in Marketing 349
G. Muruganantham and R.S. Aswanth

16.1 Introduction 350

16.1.1 Impact of AI in Marketing 351

16.1.2 Benefits of AI in Marketing 352

16.1.3 AI in Marketing Functions 354

16.1.4 Applications of AI in Marketing 354

16.1.5 Challenges of AI in Marketing 356

16.1.6 Future of AI in Marketing 357

16.2 New Trends of AI in Marketing 358

16.2.1 Companies Using AI in Marketing 359

16.3 Aspects of AI in Marketing across Different Industries 362

16.4 Conclusion 364

References 365

About the Editors 369

Index 371

Authors

T. Ananth Kumar Anna University, Chennai, India. E. Golden Julie Anna University, Tirunelveli, India. Venkata Raghuveer Burugadda Abhishek Kumar Chandigarh University, Punjab, India. Puneet Kumar Chandigarh University, Mohali, India.