"This book discusses the technological aspects for the implementation of Society 5.0. The foundation and recent advances of emerging technologies such as Artificial Intelligence, Data Science, Internet of Things, and Big Data for the realization of Society 5.0 are covered. Practical solutions to existing problems, examples, and case studies are also offered. Society 5.0 and the Future of Emerging Computational Technologies: Practical Solutions, Examples, and Case Studies discusses technologies such as Machine Learning, Artificial Intelligence, Internet of Things for the implementation of Society 5.0. It offers a firm foundation and understanding of the recent advancements in various domains such as data analytics, neural networks, computer vision, and robotics along with practical solutions to existing problems in fields such as healthcare, manufacturing industries, security, and infrastructure management. Applications and implementations are highlighted along with the correlation between technologies. Examples and case studies are presented throughout the book to help with reading comprehension. The book can be used by research scholars in the engineering domain who wish to gain knowledge and contribute towards a modern and secure future society. The book will also be useful as a reference at universities for postgraduate students who are interested in technological advancements"--
It discusses the technological aspects for the implementation of Society 5.0. The recent advances of emerging technologies such as Artificial Intelligence, Data Science, Internet of Things, and Big Data for the realization of Society 5.0 are covered. Practical solutions to existing problems, examples, and case studies are also offered.
Preface |
|
ix | |
Editor Biographies |
|
xi | |
Contributors List |
|
xiii | |
|
Chapter 1 Liquefied Petroleum Gas Level Monitoring and Leakage Detection Using Internet of Things |
|
|
1 | (14) |
|
|
|
|
|
Chapter 2 An In-Depth Analysis of Convolutional Neural Networks for Agricultural Purposes |
|
|
15 | (20) |
|
|
|
Chapter 3 Implementation of Blockchain Technology in Indian Banking Sector: A Descriptive Study |
|
|
35 | (10) |
|
|
|
Chapter 4 A Case Study of Trust Management for Authorization and Authentication in IoT Devices Using Layered Approach |
|
|
45 | (18) |
|
|
|
|
|
Chapter 5 Enthralling Aspects in Automation of Face Recognition and Aging |
|
|
63 | (22) |
|
|
Chapter 6 The Potential of Machine Learning and Artificial Intelligence (AI) in the Health Care Sector |
|
|
85 | (12) |
|
|
|
|
|
|
Chapter 7 Applications of Artificial Intelligence in Modern Health Care and Its Future Scope |
|
|
97 | (26) |
|
|
|
|
|
|
|
Chapter 8 En-Fuzzy-ClaF: A Machine Learning-Based Stack-Ensembled Fuzzy Classification Framework for Diagnosing Coronavirus |
|
|
123 | (16) |
|
|
|
|
|
Chapter 9 Efficient Approach for Lung Cancer Detection Using Artificial Intelligence |
|
|
139 | (34) |
|
|
|
Chapter 10 Cancerous or Non-Cancerous Cell Detection on a Field-Programmable Gate Array Medical Image Segmentation Using Xilinx System |
|
|
173 | (26) |
|
|
Prasannavenkatesan Theerthagiri |
|
|
|
Chapter 11 A Deep Learning and Multilayer Neural Network Approach for Coronary Heart Disease Detection |
|
|
199 | (14) |
|
|
|
|
|
|
Chapter 12 Energy-Efficient Green Cities: A Mechanism for Nature-Based Solutions for Future Cities |
|
|
213 | (16) |
|
|
|
|
Chapter 13 Improving Suspicious URL Detection through Ensemble Machine Learning Techniques |
|
|
229 | (20) |
|
|
|
|
Chapter 14 Finger Vein Authentication Using Convolutional Neural Networks and Feature Extraction |
|
|
249 | (14) |
|
Prasannavenkatesan Theerthagiri |
|
|
|
Chapter 15 Facial Expression Recognition in Real Time Using Swarm Intelligence and Deep Learning Model |
|
|
263 | (18) |
|
|
|
|
Chapter 16 Adversarial Attacks and Defenses against Deep Learning in Cybersecurity |
|
|
281 | (16) |
|
|
Index |
|
297 | |
Neeraj Mohan is working as Assistant Professor in Computer Science & Engineering Department in I.K. Gujral Punjab Technical University, Kapurthala (Punjab) India. He has a rich and quantitative academic experience of 19 years at various positions. He did his Doctoral degree from I.K. Gujral Punjab Technical University, Kapurthala (Punjab) India in the year 2016. He is an active researcher with more than 50 research papers in reputed journals and conferences. His research interest areas are network traffic management and image processing. He has guided one Ph.D. Thesis and 17 M.Tech. Thesis till date.
Surbhi Gupta holds a B. Tech. degree and Ph.D. from I.K. Gujral Punjab Technical University, Punjab, India. She received a merit for her masters degree at Punjab Agricultural University, Punjab, India. She is presently working as an Assistant Professor - Computer Science and Engineering at Punjab Agricultural University, Ludhiana, India. She is involved in research on applications of image analysis using machine learning. She has authored over 40 international journal and conference papers. She has contributed as a reviewer for reputed journals like Journal of Visual Communication and Image Representation (Elsevier), Imaging Science (Taylor & Francis), and Journal of Electronic Imaging (SPIE).
Chuan-Ming Liu is a professor in the Department of Computer Science and Information Engineering (CSIE), National Taipei University of Technology (Taipei Tech), TAIWAN, where he was the Department Chair from 2013-2017. Dr. Liu received his Ph.D. in Computer Science from Purdue University in 2002 and joined the CSIE Department in Taipei Tech in the spring of 2003. In 2010 and 2011, he has held visiting appointments with Auburn University, Auburn, AL, USA, and the Beijing Institute of Technology, Beijing, China. He has services in many journals, conferences and societies as well as published more than 100 papers in many prestigious journals and international conferences. Dr. Liu was the co-recipients of ICUFN 2015 Excellent Paper Award, ICS 2016 Outstanding Paper Award, MC 2017 Best Poster Award, WOCC 2018 Best Paper Award and MC 2019 Best Poster Award. His current research interests include big data management and processing, uncertain data management, data science, spatial data processing, data streams, ad-hoc and sensor networks, location-based services.