Chandra Singh & Rathishchandra R. Gatti 
Modeling and Optimization of Signals Using Machine Learning Techniques [EPUB ebook] 

Ủng hộ

Explore the power of machine learning to revolutionize signal processing and optimization with cutting-edge techniques and practical insights in this outstanding new volume from Scrivener Publishing.

Modeling and Optimization of Signals using Machine Learning Techniques is designed for researchers from academia, industries, and R&D organizations worldwide who are passionate about advancing machine learning methods, signal processing theory, data mining, artificial intelligence, and optimization. This book addresses the role of machine learning in transforming vast signal databases from sensor networks, internet services, and communication systems into actionable decision systems. It explores the development of computational solutions and novel models to handle complex real-world signals such as speech, music, biomedical data, and multimedia.

Through comprehensive coverage of cutting-edge techniques, this book equips readers with the tools to automate signal processing and analysis, ultimately enhancing the retrieval of valuable information from extensive data storage systems. By providing both theoretical insights and practical guidance, the book serves as a comprehensive resource for researchers, engineers, and practitioners aiming to harness the power of machine learning in signal processing.

Whether for the veteran engineer, scientist in the lab, student, or faculty, this groundbreaking new volume is a valuable resource for researchers and other industry professionals interested in the intersection of technology and agriculture.

€194.99
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Preface

1. Land Use and Land Cover Mapping of Remotely Sensed Data Using Fuzzy Set Theory-Related Algorithm<
Adithya Kumar and Shivakumar B.R.


1.1 Introduction


1.2 Image Classification


1.3 Unsupervised Classification


1.4 Supervised Classification


1.5 Overview of Fuzzy Sets


1.6 Methodology


1.7 Results and Discussion


1.8 Conclusion


References


2. Role of AI in Mortality Prediction in Intensive Care Unit Patients
Prabhudutta Ray, Sachin Sharma, Raj Rawal and Dharmesh Shah


2.1 Introduction


2.2 Background


2.3 Objectives


2.4 Machine Learning and Mortality Prediction


2.5 Discussions


2.6 Conclusion


2.7 Future Work


2.8 Acknowledgments


2.9 Funding


2.10 Competing Interest


References


3. A Survey on Malware Detection Using Machine Learning
Devika S. P., Pooja M. R. and Arpitha M. S.


3.1 Background


3.2 Introduction


3.3 Literature Survey


3.4 Discussion


3.5 Conclusion


References


4. EEG Data Analysis for IQ Test Using Machine Learning Approaches: A Survey
Bhoomika Patel H. C., Ravikumar V. and Pavan Kumar S. P.


Introduction


4.1 Related Work


4.2 Equations


4.3 Classification


4.4 Data Set


4.5 Information Obtained by EEG Signals


4.6 Discussion


4.7 Conclusion


References


5. Machine Learning Methods in Radio Frequency and Microwave Domain
Shanthi P. and Adish K.


5.1 Introduction


5.2 Background on Machine Learning


5.3 ML in RF Circuit Modeling and Synthesis


5.4 Conclusion


References


6. A Survey: Emotion Detection Using Facial Reorganization Using Convolutional Neural Network (CNN) and Viola–Jones Algorithm
Vaibhav C. Gandhi, Dwij Kishor Siyal, Shivam Pankajkumar Patel and Arya Vipesh Shah
6.1 Introduction


6.2 Review of Literature


6.3 Report on Present Investigation


6.4 Algorithms


6.5 Viola–Jones Algorithm


on 6.6 Diagram


6.7 Results and Discussion


6.8 Limitations and Future Scope


6.9 Summary and Conclusion


References


7. Power Quality Events Classification Using Digital Signal Processing and Machine Learning Techniques
E. Fantin Irudaya Raj and M. Balaji


7.1 Introduction


7.2 Methodology for the Identification of PQ Events


7.3 Power Quality Problems Arising in the Modern Power System


7.4 Digital Signal Processing-Based Feature Extraction of PQ Events


7.5 Feature Selection and Optimization


7.6 Machine Learning-Based Classification of PQ Disturbances


7.7 Summary and Conclusion


References


8. Hybridization of Artificial Neural Network with Spotted Hyena Optimization (SHO) Algorithm for Heart Disease Detection
Shwetha N., Gangadhar N., Mahesh B. Neelagar, Sangeetha N. and Virupaxi Dalal


8.1 Introduction


8.2 Literature Survey


8.3 Proposed Methodology


8.4 Artificial Neural Network


8.5 Software Implementation Requirements


8.6 Conclusion


References


9. The Role of Artificial Intelligence, Machine Learning, and Deep Learning to Combat the Socio-Economic Impact of the Global COVID-19 Pandemic
Biswa Ranjan Senapati, Sipra Swain and Pabitra Mohan Khilar


9.1 Introduction


9.2 Discussions on the Coronavirus


9.3 Bad Impacts of the Coronavirus


9.4 Benefits Due to the Impact of COVID-19


9.5 Role of Technology to Combat the Global Pandemic COVID-19


9.6 The Role of Artificial Intelligence, Machine Learning, and Deep Learning in COVID-19


9.7 Related Studies


9.8 Conclusion


References


10. A Review on Smart Bin Management Systems
Bhoomika Patel H. C., Soundarya B. C. and Pooja M. R.


10.1 Introduction


10.2 Related Work


10.3 Challenges, Solution, and Issues


10.4 Advantages


Conclusion


References


11. Unlocking Machine Learning: 10 Innovative Avenues to Grasp Complex Concepts
K. Vidhyalakshmi and S. Thanga Ramya


11.1 Regression


11.2 Classification


11.3 Clustering


11.4 Clustering (k-means)


11.5 Reduction of Dimensionality


11.6 The Ensemble Method


11.7 Transfer of Learning


11.8 Learning Through Reinforcement


11.9 Processing of Natural Languages


11.10 Word Embeddings


11.11 Conclusion


References


12. Recognition Attendance System Ensuring COVID-19 Security
Praveen Kumar M., Ramya Poojary, Saksha S. Bhandary and Sushmitha M. Kulal


12.1 Introduction


12.2 Literature Survey


12.3 Software Requirements


12.4 Hardware Requirements


12.5 Methodology


12.6 Building the Database


12.7 Pi Camera for Extracting Face Features


12.8 Real-Time Testing on Raspberry Pi


12.9 Contactless Body Temperature Monitoring


12.10 Raspberry-Pi Setting Up an SMTP Email


12.11 Uploading to the Database


12.12 Updating the Website


12.13 Report Generation


12.14 Result


12.15 Discussion


12.16 Conclusion


References


13. Real-Time Industrial Noise Cancellation for the Extraction of Human Voice
Vinayprasad M. S., Chandrashekar Murthy B. N. and Yashwanth S. D.


13.1 Introduction


13.2 Literature Survey


13.3 Methodology


13.4 Experimental Results


13.5 Conclusion


References


14. Machine Learning-Based Water Monitoring System Using Io T
T. Kesavan, E. Kaliappan, K. Nagendran and M. Murugesan


14.1 Introduction


14.2 Smart Water Monitoring System


14.3 Sensors and Hardware


14.4 Power BI Reports


14.5 Conclusion


References


15. Design and Modelling of an Automated Driving Inspector Powered by Arduino and Raspberry Pi
Raghunandan K. R., Dilip Kumar K., Krishnaraj Rao N.S. Krishnaprasad Rao and Bhavya K.


15.1 Introduction


15.2 Literature Survey


15.3 Results


15.4 Conclusion


References


16. Kalman Filter-Based Seizure Prediction Using Concatenated Serial-Parallel Block Technique
Purnima P. S. and Suresh M.


16.1 Introduction


16.2 Prior Work


16.3 Proposed Method


16.4 Serial-Parallel Block Concatenation Approach


16.5 Algorithm


16.6 Kalman Filter


16.7 Results and Discussion


16.8 Conclusion


References


17. Current Advancements in Steganography: A Review
Mallika Garg, Jagpal Singh Ubhi and Ashwani Kumar Aggarwal


17.1 Introduction


17.2 Evaluation Parameters


17.3 Types of Steganography


17.4 Traditional Steganographic Techniques


17.5 CNN-Based Steganographic Techniques


17.6 GAN-Based Steganographic Techniques


17.7 Steganalysis


17.8 Applications


17.9 Dataset Used for Steganography


17.10 Conclusion


References


18. Human Emotion Recognizing Intelligence System Using Machine Learning
Bhakthi P. Alva, Krishma Bopanna N., Prajwal S., Varun A. Naik and Lahari Vaidya
18.1 Introduction


18.2 Literature Review


18.3 Problem Statement


18.4 Methodology


18.5 Results


18.6 Applications


18.7 Conclusion


18.8 Future Work


References


19. Computing in Cognitive Science Using Ensemble Learning
Om Prakash Singh
19.1 Introduction


19.2 Recognition of Human Activities


19.3 Methodology


19.4 Applying the Boosting-Based Ensemble Learning


19.5 Human Activity Features Computability


19.6 Conclusion


References


About the Editors


Index

Giới thiệu về tác giả

Chandra Singh is an assistant professor in the Department of Electronics and Communication Engineering at Sahyadri College of Engineering and Management, Mangalore, India, and is pursuing a Ph D from VTU Belagavi, India. He has four patents, he has published over 25 papers in scientific journals, and he is the editor of seven books.
Rathishchandra R. Gatti, Ph D, is an associate professor at Jawaharlal Nehru University, Delhi, India. With over 20 years of industrial, research, and teaching experience under his belt, he also has four patents, has published over 40 papers in scientific journals, and is the editor of seven research books and one journal.
K.V.S.S.S.S.SAIRAM, Ph D, is a professor and Head of the Electronics and Communication Engineering Department at the NMAM Institute of Technology, Nitte, India. He has 25 years of experience in teaching and research and has published over 50 papers in international journals and conferences. He is also a reviewer for several journals.
Manjunatha Badiger, Ph D, is an assistant professor at Sahyadri College of Engineering and Management, Adyar, Mangalore, Karnataka, India. He has over 12 years of experience in academics, research, and administration. He earned his Ph D in machine learning in 2024 at Visvesvaraya Technological University.
Naveen Kumar S., MTech, is an assistant professor at the Sahyadri College of Engineering and Management. Previously he was an assistant professor at JSS Academy of Technical Education, Noida, India. He obtained his MTech in automotive electronics from Sri Jayachamarajendra College of Engineering, Mysore, India.
Varun Saxena, Ph D, received his Ph D in electromagnetic ion traps from IIT Delhi, New Delhi, in 2018. He is currently an assistant professor at the School of Engineering, Jawaharlal Nehru University, New Delhi.
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Ngôn ngữ Anh ● định dạng EPUB ● Trang 583 ● ISBN 9781119847694 ● Kích thước tập tin 44.1 MB ● Biên tập viên Chandra Singh & Rathishchandra R. Gatti ● Nhà xuất bản Wiley-Scrivener ● Quốc gia US ● Được phát hành 2024 ● Phiên bản 1 ● Có thể tải xuống 24 tháng ● Tiền tệ EUR ● TÔI 9612610 ● Sao chép bảo vệ Adobe DRM
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