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E-raamat: Machine Vision and Augmented Intelligence: Select Proceedings of MAI 2023

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This book comprises the proceedings of the International Conference on Machine Vision and Augmented Intelligence (MAI 2023). The conference proceedings encapsulate the best deliberations held during the conference. The diversity of participants in the event from academia, industry, and research reflects in the articles appearing in the volume. The book theme encompasses all industrial and non-industrial applications in which a combination of hardware and software provides operational guidance to devices in the execution of their functions based on the capture and processing of images. This book covers a wide range of topics such as modeling of disease transformation, epidemic forecast, COVID-19, image processing and computer vision, augmented intelligence, soft computing, deep learning, image reconstruction, artificial intelligence in healthcare, brain-computer interface, cybersecurity, and social network analysis, natural language processing, etc.

Chapter 1:Ultra-Energy Efficient Reliable and Robust DLJLFET Based-PUF
for IoT Devices.
Chapter 2:Dopingless JLFET Based 8TSRAM Cell Design for
Enhanced Performance and Stability.
Chapter 3: Survey on robustness of deep
learning techniques on adversarial attacks in WBAN .
Chapter 4: Synergizing
Collaborative and Content-Based Filtering for Enhanced Movie
Recommendations.
Chapter 5:Exploring Transformer-Based Approaches for
Hyperspectral Image Classification: A Comparative Analysis.
Chapter 7:Deep
Learning for Cognitive Task and Seizure Classification with Hilbert-Huang
Transform and Variational Mode Decomposition.-Chapter 8:Tracking of Ship and
Plane in Satellite Videos Using A Convolutional Regression Network with Deep
Features.-Chapter 9:Tumor Detection and Analysis from Brain MRI Images Using
Deep Learning.-Chapter 10:Software Maintenance Prediction Using Stack
Ensemble Deep Learning Algorithms.
Chapter 11:Resource Allocation in 6G
network for High-Speed Train using D2D Outband Communication.
Chapter
12:Controlling the Band-to-band Tunneling Effect in Charge Plasma Based
Dopingless Transistor.
Chapter 13:Comparison of Different CIC filter
architectures on the basis of a novel parameter called Noise Factor for
Sigma-Delta based ADCs.
Chapter 14:The Scientific Analysis on Effective Yoga
Posture Recognition Techniques.
Chapter 15:Impact of Gamma Rays on Emerging
Devices for Photonic Applications.
Chapter 16:Shaft Rotation Monitoring
Using Radar Signal Processing and Wavelet Transform.
Chapter 17:Slow-wave
Structure Based on Inter-digital Capacitor and Its Application to
Miniaturization of Gysel Power Divider.
Chapter 18:Noise Estimation and
Removal in Fundus Images using Pyramid Real Image Denoising Network.
Chapter
19:Evaluation of Hybrid Encryption Method to Secure Healthcare Data.-Chapter
20:Multimodal Face Recognition System using Hybrid Deep Learning Feature.
Koushlendra Kumar Singh is currently working as an assistant professor in the Department of Computer Science and Engineering at the National Institute of Technology, Jamshedpur, India. He completed his doctoral degree and master's program from the Indian Institute of Information Technology, Design, and Manufacturing, Jabalpur, India, in 2016 and 2011, respectively. Dr. Singh graduated in computer science and engineering from Bhagalpur College of Engineering, Bhagalpur, in 2008. He has published several papers in international refereed journals and conferences. His current research interest areas are image processing, biometrics, and different applications of fractional derivatives, computational modeling, epidemic forecasting, etc.





Sangeeta Singh is an Assistant Professor in the Department of Electronics and Communication Engineering, NIT Patna, India. Her researches interests include beyond CMOS Devices Green Electronics steep switching transistors and soft computing techniques and applications. She has been recognized as an eminent scholar in the field of Electronics & Computer Engineering. She is editing two books. She is a member of IEEE, IEEE EDS Society, IET, etc.  She received her Ph.D. degree in Electronics and communication engineering from IIITDM Jabalpur, India.  She has handled many research projects and more than 100 research articles are in her credit. 





Dr.Subodh Srivastava is working as an Assistant Professor in the Department of Electronics and Communications Engineering, and Professor-In charge of IEEE SB NIT Patna, Bihar, India. He has around 60 publications in reputed Journals and conferences. 01 Indian Patent(Granted) and 12 Book chapters to his credit. He is a member of the IEEE, and is also connected with the Indian Society of Technical Education through life. He received projects from BIRAC, TEQIP and WellM  in the field of AI and medical Image Processing. He is also the reviewer of many International Journals and Conferences. He received his Ph.D. from IIT (BHU) in 2014. His research interests include Image processing, biomedical image analysis, pattern recognition, machine learning, computer vision, and their medical applications. 





Manish Kumar Bajpai is an Associate professor in the Department of Computer Science and Engineering at the National Institute of Technology Warangal. Dr. Bajpai has published over 50 publications in international journals and conferences. He has several sponsored research and consultancy projects funded by agencies such as SPARC, MHRD, DST, USIEF, ATAL, BRNS, and NVIDIA. 11 students have completed/pursuing their Ph.D. under his supervision. His areas of research are augmented intelligence, machine vision, brain-computer interface, medical imaging, and parallel algorithms design. Dr. Bajpai is a senior member of IEEE and a life member of the Indian Science Congress and Indian Nuclear Society.