- Presents the latest advances in Deep Learning for data analytics and biomedical engineering applications.- Discusses Deep Learning techniques as they are being applied in the real world of biomedical engineering and data science, including Deep Learning networks, deep feature learning, deep learning toolboxes, performance evaluation, Deep Learning optimization, deep auto-encoders, and deep neural networks- Provides readers with an introduction to Deep Learning, along with coverage of deep belief networks, convolutional neural networks, Restricted Boltzmann Machines, data analytics basics, enterprise data science, predictive analysis, optimization for Deep Learning, and feature selection using Deep Learning
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Section I Deep Learning Basics and Mathematical Background 1. Introduction to Deep Learning 2. Probability and information Theory 3. Deep Learning Basics 4. Deep Architectures 5. Deep Auto-Encoders 6. Multilayer Perceptron 7. Artificial Neural Network 8. Deep Neural Network 9. Deep Belief Network 10. Recurrent Neural Networks 11. Convolutional Neural Networks 12. Restricted Boltzmann Machines
Section II Deep Learning in Data Science 13. Data Analytics Basics 14. Enterprise Data Science 15. Predictive Analysis 16. Scalability of deep learning methods 17. Statistical learning for mining and analysis of big data 18. Computational Intelligence Methodology for Data Science 19. Optimization for deep learning (e.g. model structure optimization, large-scale optimization, hyper-parameter optimization, etc) 20. Feature selection using deep learning 21. Novel methodologies using deep learning for classification, detection and segmentation
Section III Deep Learning in Engineering Applications 22. Deep Learning for Pattern Recognition 23. Deep Learning for Biomedical Engineering 24. Deep Learning for Image Processing 25. Deep Learning for Image Classification 26. Deep Learning for Medical Image Recognition 27. Deep learning for Remote Sensing image processing 28. Deep Learning for Image and Video Retrieval 29. Deep Learning for Visual Saliency 30. Deep Learning for Visual Understanding 31. Deep Learning for Visual Tracking 32. Deep Learning for Object Segmentation and Shape Models 33. Deep Learning for Object Detection and Recognition 34. Deep Learning for Human Actions Recognition 35. Deep Learning for Facial Recognition 36. Deep Learning for Scene Understanding 37. Deep Learning for Internet of Things 38. Deep Learning for Big Data Analytics 39. Deep Learning for Clinical and Health Informatics 40. Deep Learning foe Sentiment Analysis
Himansu Das is working as an as Assistant Professor in the School of Computer Engineering, KIIT University, Bhubaneswar, Odisha, India. He has received his B. Tech and M. Tech degree from Biju Pattnaik University of Technology (BPUT), Odisha, India. He has published several research papers in various international journals and conferences. He has also edited several books of international repute. He is associated with different international bodies as Editorial/Reviewer board member of various journals and conferences. He is a proficient in the field of Computer Science Engineering and served as an organizing chair, publicity chair and act as member of program committees of many national and international conferences. He is also associated with various educational and research societies like IACSIT, ISTE, UACEE, CSI, IET, IAENG, ISCA etc., His research interest includes Grid Computing, Cloud Computing, and Machine Learning. He has also 10 years of teaching and research experience in different engineering colleges.
Chittaranjan Pradhan is working at School of Computer Engineering, KIIT University, India. He obtained his Bachelors, Masters and PhD degree in Computer Science & Engineering stream. His research are includes Information Security, Image Processing, Data Analytics and Multimedia Systems. Dr. Pradhan has published more than 40 articles in the national and international journals and conferences. Also, he has been associated to a number of events organized at national and international level. He is also associated with various educational and research societies like IACSIT, ISTE, UACEE, CSI, IET, IAENG, ISCA etc. He has also experience of more than 10 years in teaching and research activities.
Dr. Nilanjan Dey is an Asst. Professor in the Department of Information Technology in Techno India College of Technology,
Rajarhat, Kolkata, India. He holds an honorary position of Visiting Scientist at Global Biomedical Technologies Inc., CA, USA
and Research Scientist of Laboratory of Applied Mathematical Modeling in Human Physiology, Territorial Organization OfSgientifig and Engineering Unions, Bulgaria, Associate Researcher of Laboratoire RIADI, University of Manouba, Tunisia. He is
the Editor-in-Chief of International Journal of Ambient Computing and Intelligence (IGI Global), US, International Journal of
Rough Sets and Data Analysis (IGI Global), US, and the International Journal of Synthetic Emotions (IJSE), IGI Global, US. He is
Series Editor of Advances in Geospatial Technologies (AGT) Book Series, (IGI Global), US, Executive Editor of International
Journal of Image Mining (IJIM), Inderscience, Regional Editor-Asia of International Journal of Intelligent Engineering
Informatics (IJIEI), Interscience and Associated Editor of International Journal of Service Science, Management, Engineering,
and Technology, IGI Global. His research interests include Medical Imaging, Soft computing, Data mining, Machine learning,
Rough set, Mathematical Modeling and Computer Simulation, Modeling of Biomedical Systems, Robotics and Systems,
Information Hiding, Security, Computer Aided Diagnosis, and Atherosclerosis. He has published a dozen books and more than
200 international conferences and journal papers. He is a life member of IE, UACEE, and ISOC.