This book is a comprehensive overview of AI fundamentals and applications to drive creativity, innovation, and industry transformation. Generative AI stands at the forefront of artificial intelligence innovation, redefining the capabilities of machines to create, imagine, and innovate. GAI explores the domain of creative production with new and original content across various forms, including images, text, music, and more. In essence, generative AI stands as evidence of the boundless potential of artificial intelligence, transforming industries, sparking creativity, and challenging…mehr
This book is a comprehensive overview of AI fundamentals and applications to drive creativity, innovation, and industry transformation. Generative AI stands at the forefront of artificial intelligence innovation, redefining the capabilities of machines to create, imagine, and innovate. GAI explores the domain of creative production with new and original content across various forms, including images, text, music, and more. In essence, generative AI stands as evidence of the boundless potential of artificial intelligence, transforming industries, sparking creativity, and challenging conventional paradigms. It represents not just a technological advancement but a catalyst for reimagining how machines and humans collaborate, innovate, and shape the future. The book examines real-world examples of how generative AI is being used in a variety of industries. The first section explores the fundamental concepts and ethical considerations of generative AI. In addition, the section also introduces machine learning algorithms and natural language processing. The second section introduces novel neural network designs and convolutional neural networks, providing dependable and precise methods. The third section explores the latest learning-based methodologies to help researchers and farmers choose optimal algorithms for specific crop and hardware needs. Furthermore, this section evaluates significant advancements in revolutionizing online content analysis, offering real-time insights into content creation for more interactive processes. Audience The book will be read by researchers, engineers, and students working in artificial intelligence, computer science, and electronics and communication engineering as well as industry application areas.Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
R. Nidhya, PhD, is an assistant professor in the Department of Computer Science & Engineering, Madanapalle Institute of Technology & Science, affiliated with Jawaharlal Nehru Technical University, Anantapuram, India. She has published many research papers in international journals and her research interests include wireless body area networks, network security, and data mining. D. Pavithra, PhD, is an assistant professor at Dr. NGP Institute of Technology, Coimbatore, Tamil Nadu, India. Her current research interests include autism, machine learning, and deep learning. Manish Kumar, PhD, is an assistant professor at The School of Computer Science & Engineering, VIT, Chennai, India. His research interests include soft computing applications for bioinformatics problems and computational intelligence. A. Dinesh Kumar, PhD, is an associate professor at KL (Deemed to be University), Vijayawada, Andhra Pradesh, India. His current research interests include wireless body area networks, wireless sensor networks, network security, and artificial intelligence. S. Balamurugan, PhD, is the Director of Research and Development, Intelligent Research Consultancy Services (iRCS), Coimbatore, Tamil Nadu, India. He is also Director of the Albert Einstein Engineering and Research Labs (AEER Labs), as well as Vice-Chairman of the Renewable Energy Society of India (RESI), India. He has published 50+ books, 200+ international journals/conferences, and 35 patents.
Inhaltsangabe
Preface xiii 1 Exploring the Creative Frontiers: Generative AI Unveiled 1 Generated Using ChatGPT 1.1 Introduction 1 1.2 Foundational Concepts 4 1.3 Applications Across Domains 7 1.4 Ethical Considerations 13 1.5 Future Prospects and Challenges 15 1.6 Conclusion 16 2 An Efficient Infant Cry Detection System Using Machine Learning and Neuro Computing Algorithms 19 Swarna Kuchibhotla, Kantheti Mohana, Alapati Yomitha, Sruthi Yedavalli, Hima Deepthi Vankayalapati and Kyamakya Kyandoghere 2.1 Introduction 20 2.2 Literature Survey 21 2.3 Methodology 23 2.4 Experimental Results 33 2.5 Conclusion 35 3 Improved Brain Tumor Segmentation Utilizing a Layered CNN Model 39 Bilal Hikmat Rasheed and P. Sudhakaran 3.1 Introduction 40 3.2 Related Works 41 3.3 Methodology 42 3.4 Numerical Results 45 3.5 Conclusion 49 4 Natural Language Processing in Generative Adversarial Network 53 P. Dhivya, A. Karthikeyan, S. Pradeep and H. Umamaheswari 4.1 Introduction 54 4.2 Literature Survey 57 4.3 The Implementation of NLP in GAN for Generating Images and Summaries 61 4.4 Conclusion 77 5 Modeling A Deep Learning Network Model for Medical Image Panoptic Segmentation 81 Jyothsna Devi Koppagiri and Gouranga Mandal 5.1 Introduction 81 5.2 Related Works 84 5.3 Methodology 85 5.4 Numerical Results and Discussion 87 5.5 Conclusion 91 6 A Hybrid DenseNet Model for Dental Image Segmentation Using Modern Learning Approaches 93 Pulipati Nagaraju and S. V. Sudha 6.1 Introduction 94 6.2 Related Works 95 6.3 Methodology 96 6.4 Numerical Results and Discussion 100 6.5 Conclusion 104 7 Modeling A Two-Tier Network Model for Unconstraint Video Analysis Using Deep Learning 107 P. Naga Bhushanam and Selva Kumar S. 7.1 Introduction 108 7.2 Related Works 109 7.3 Methodology 110 7.4 Numerical Results and Discussion 113 7.5 Conclusion 117 8 Detection of Peripheral Blood Smear Malarial Parasitic Microscopic Images Utilizing Convolutional Neural Network 121 Tamal Kumar Kundu, Smritilekha Das and R. Nidhya 8.1 Introduction 122 8.2 Malaria 124 8.3 Literature Survey 125 8.4 Proposed Methodology and Algorithm 130 8.5 Result Analysis 135 8.6 Discussion 139 8.7 Conclusion 139 8.8 Future Scope 139 9 Exploring the Efficacy of Generative AI in Constructing Dynamic Predictive Models for Cybersecurity Threats: A Research Perspective 143 T. Manasa and K. Padmanaban 9.1 Introduction 144 9.2 Related Works 145 9.3 Methodology 146 9.4 Numerical Results and Discussion 149 9.5 Conclusion 152 10 Poultry Disease Detection: A Comparative Analysis of CNN, SVM, and YOLO v3 Algorithms for Accurate Diagnosis 155 Spoorthi Shetty and Mangala Shetty 10.1 Introduction 156 10.2 Literature Review 157 10.3 Objectives 158 10.4 Methodology 159 10.5 Results and Discussion 165 10.6 Conclusion 169 11 Generative AI-Enhanced Deep Learning Model for Crop Type Analysis Based on Clustered Feature Vectors and Remote Sensing Imagery 173 B. Bazeer Ahamed, D. Yuvaraj and Saif Saad Alnuaimi 11.1 Introduction 174 11.2 Related Works 176 11.3 Methodology 178 11.4 Numerical Results and Discussion 184 11.5 Conclusion 190 12 Cardiovascular Disease Prediction with Machine Learning: An Ensemble-Based Regressive Neighborhood Model 197 Yuvaraj Duraisamy, Salar Faisal Noori and Shakir Mahoomed Abas 12.1 Introduction 197 12.2 Related Works 200 12.3 Methodology 200 12.4 Numerical Results and Discussion 203 12.5 Conclusion 206 13 Detection of IoT Attacks Using Hybrid RNN-DBN Model 209 Pavithra D., Bharathraj R., Poovizhi P., Libitharan K. and Nivetha V. 13.1 Introduction 210 13.2 Related Work 212 13.3 Methodology 216 13.4 Experiments and Results 221 13.5 Conclusion and Future Scope 224 14 Identification of Foliar Pathologies in Apple Foliage Utilizing Advanced Deep Learning Techniques 227 Tamal Kumar Kundu, Smritilekha Das and R. Nidhya 14.1 Introduction 228 14.2 Literature Survey 229 14.3 Different Diseases of Leaves 233 14.4 Dataset 236 14.5 Proposed Methodology 239 14.6 Data Analysis 240 14.7 Pre-Processing Technique 241 14.8 Data Visualization 242 14.9 Evolutionary Progression and Genesis of Model 242 15 Enhancing Cloud Security Through AI-Driven Intrusion Detection Utilizing Deep Learning Methods and Autoencoder Technology 249 P.V. Sivarambabu, Richa Agrawal, Arepalli Tirumala, Shaik Mahaboob Subani, Veeraswamy Parisae and S. V. L. Sowjanya Nukala 15.1 Introduction 250 15.2 Related Work 251 15.3 Proposed Methodology 253 15.4 Results and Discussion 254 15.5 Conclusion 262 16 YouTube Comment Analysis Using LSTM Model 265 Pavithra D., Poovizhi P., Rokeshkumar G., Bharathvaj T. and Mageshkumar M. 16.1 Introduction 266 16.2 Related Work 266 16.3 Literature Survey 267 16.4 Existing System 272 16.5 Methodology 273 16.6 Result and Discussion 275 16.7 Conclusion 280 References 280 Index 283
Preface xiii 1 Exploring the Creative Frontiers: Generative AI Unveiled 1 Generated Using ChatGPT 1.1 Introduction 1 1.2 Foundational Concepts 4 1.3 Applications Across Domains 7 1.4 Ethical Considerations 13 1.5 Future Prospects and Challenges 15 1.6 Conclusion 16 2 An Efficient Infant Cry Detection System Using Machine Learning and Neuro Computing Algorithms 19 Swarna Kuchibhotla, Kantheti Mohana, Alapati Yomitha, Sruthi Yedavalli, Hima Deepthi Vankayalapati and Kyamakya Kyandoghere 2.1 Introduction 20 2.2 Literature Survey 21 2.3 Methodology 23 2.4 Experimental Results 33 2.5 Conclusion 35 3 Improved Brain Tumor Segmentation Utilizing a Layered CNN Model 39 Bilal Hikmat Rasheed and P. Sudhakaran 3.1 Introduction 40 3.2 Related Works 41 3.3 Methodology 42 3.4 Numerical Results 45 3.5 Conclusion 49 4 Natural Language Processing in Generative Adversarial Network 53 P. Dhivya, A. Karthikeyan, S. Pradeep and H. Umamaheswari 4.1 Introduction 54 4.2 Literature Survey 57 4.3 The Implementation of NLP in GAN for Generating Images and Summaries 61 4.4 Conclusion 77 5 Modeling A Deep Learning Network Model for Medical Image Panoptic Segmentation 81 Jyothsna Devi Koppagiri and Gouranga Mandal 5.1 Introduction 81 5.2 Related Works 84 5.3 Methodology 85 5.4 Numerical Results and Discussion 87 5.5 Conclusion 91 6 A Hybrid DenseNet Model for Dental Image Segmentation Using Modern Learning Approaches 93 Pulipati Nagaraju and S. V. Sudha 6.1 Introduction 94 6.2 Related Works 95 6.3 Methodology 96 6.4 Numerical Results and Discussion 100 6.5 Conclusion 104 7 Modeling A Two-Tier Network Model for Unconstraint Video Analysis Using Deep Learning 107 P. Naga Bhushanam and Selva Kumar S. 7.1 Introduction 108 7.2 Related Works 109 7.3 Methodology 110 7.4 Numerical Results and Discussion 113 7.5 Conclusion 117 8 Detection of Peripheral Blood Smear Malarial Parasitic Microscopic Images Utilizing Convolutional Neural Network 121 Tamal Kumar Kundu, Smritilekha Das and R. Nidhya 8.1 Introduction 122 8.2 Malaria 124 8.3 Literature Survey 125 8.4 Proposed Methodology and Algorithm 130 8.5 Result Analysis 135 8.6 Discussion 139 8.7 Conclusion 139 8.8 Future Scope 139 9 Exploring the Efficacy of Generative AI in Constructing Dynamic Predictive Models for Cybersecurity Threats: A Research Perspective 143 T. Manasa and K. Padmanaban 9.1 Introduction 144 9.2 Related Works 145 9.3 Methodology 146 9.4 Numerical Results and Discussion 149 9.5 Conclusion 152 10 Poultry Disease Detection: A Comparative Analysis of CNN, SVM, and YOLO v3 Algorithms for Accurate Diagnosis 155 Spoorthi Shetty and Mangala Shetty 10.1 Introduction 156 10.2 Literature Review 157 10.3 Objectives 158 10.4 Methodology 159 10.5 Results and Discussion 165 10.6 Conclusion 169 11 Generative AI-Enhanced Deep Learning Model for Crop Type Analysis Based on Clustered Feature Vectors and Remote Sensing Imagery 173 B. Bazeer Ahamed, D. Yuvaraj and Saif Saad Alnuaimi 11.1 Introduction 174 11.2 Related Works 176 11.3 Methodology 178 11.4 Numerical Results and Discussion 184 11.5 Conclusion 190 12 Cardiovascular Disease Prediction with Machine Learning: An Ensemble-Based Regressive Neighborhood Model 197 Yuvaraj Duraisamy, Salar Faisal Noori and Shakir Mahoomed Abas 12.1 Introduction 197 12.2 Related Works 200 12.3 Methodology 200 12.4 Numerical Results and Discussion 203 12.5 Conclusion 206 13 Detection of IoT Attacks Using Hybrid RNN-DBN Model 209 Pavithra D., Bharathraj R., Poovizhi P., Libitharan K. and Nivetha V. 13.1 Introduction 210 13.2 Related Work 212 13.3 Methodology 216 13.4 Experiments and Results 221 13.5 Conclusion and Future Scope 224 14 Identification of Foliar Pathologies in Apple Foliage Utilizing Advanced Deep Learning Techniques 227 Tamal Kumar Kundu, Smritilekha Das and R. Nidhya 14.1 Introduction 228 14.2 Literature Survey 229 14.3 Different Diseases of Leaves 233 14.4 Dataset 236 14.5 Proposed Methodology 239 14.6 Data Analysis 240 14.7 Pre-Processing Technique 241 14.8 Data Visualization 242 14.9 Evolutionary Progression and Genesis of Model 242 15 Enhancing Cloud Security Through AI-Driven Intrusion Detection Utilizing Deep Learning Methods and Autoencoder Technology 249 P.V. Sivarambabu, Richa Agrawal, Arepalli Tirumala, Shaik Mahaboob Subani, Veeraswamy Parisae and S. V. L. Sowjanya Nukala 15.1 Introduction 250 15.2 Related Work 251 15.3 Proposed Methodology 253 15.4 Results and Discussion 254 15.5 Conclusion 262 16 YouTube Comment Analysis Using LSTM Model 265 Pavithra D., Poovizhi P., Rokeshkumar G., Bharathvaj T. and Mageshkumar M. 16.1 Introduction 266 16.2 Related Work 266 16.3 Literature Survey 267 16.4 Existing System 272 16.5 Methodology 273 16.6 Result and Discussion 275 16.7 Conclusion 280 References 280 Index 283
Es gelten unsere Allgemeinen Geschäftsbedingungen: www.buecher.de/agb
Impressum
www.buecher.de ist ein Internetauftritt der buecher.de internetstores GmbH
Geschäftsführung: Monica Sawhney | Roland Kölbl | Günter Hilger
Sitz der Gesellschaft: Batheyer Straße 115 - 117, 58099 Hagen
Postanschrift: Bürgermeister-Wegele-Str. 12, 86167 Augsburg
Amtsgericht Hagen HRB 13257
Steuernummer: 321/5800/1497
USt-IdNr: DE450055826