Fr. 166.00

Beginner s Guide to Medical Application Development With Deep - Convolutional Neural Network

English · Hardback

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Description

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This book serves as source of introductory material and reference for medical application development and related technologies by providing the detailed implementation of the cutting-edge deep learning methodologies. It targets the cloud based advanced medical application developments using open-source python based deep learning libraries.


List of contents










1. Introduction to Medical Data and Image Analysis 2. The Convolutional Neural Network 3. The Detection of COVID-19 Pneumonia Using Inception V3 and Custom Designed Bi-Modal Looping DCNN via Analysis of X-Ray Images 4. Detection of Pneumonia from a Small-Scale Dataset of X-Ray Images of Lungs by Using a Compound Batch-Normalizing Convolutional Neural Feature Extracting Random Forest Classifier 5. An Adaptive Profound Transfer Learning Strategy for Malaria Cell Parasite Classification and Detection 6. Implementation of a Deep Convolutional Auto-Encoding Image-Reconstruction Network (DCARN) to Visualize Distinct Categories of COVID-19 and Pneumonia X-Ray Image Features 7. Super Resolution Generative Adversarial Neural Network (SR-GANN) with Bi-Modal Multi-Perceptron Layers for Medical X-Ray Images 8. Conclusion


About the author










Snehan Biswas, is a Senior System Analyst in the department of Machine Learning and IoT, IEMA Research & Development Private Limited, India. He is a graduate in Electronics & Communication Engineering from University of Engineering and Management, Kolkata, India. His research interest includes Medical Image Processing, Machine Learning, Deep Learning, DevOps, Edge and Cloud computing. He has written several research articles in the field of Deep Learning, Machine learning, and Cloud Computing.
Amartya Mukherjee, is Head of the Department in the Department of CSE(AIML), Institute of Engineering & Management, Kolkata, India. He is currently doing his research at the Maulana Abul Kalam Azad University of Technology, West Bengal, India. He holds a master's degree in Computer Science and Engineering from the NIT, Durgapur, West Bengal, India. His research interest includes Machine Learning, Deep Learning, IoT, Wireless communication, Sensor networks, healthcare. He has written many research articles and books in the domain of IoT, Machine learning, Bio medical systems, Sensor networks.
Nilanjan Dey, is an Associate Professor in Department of Computer Science & Engineering at Techno International New Town, New Town, Kolkata, India. He is a visiting fellow of the University of Reading, UK. He is a Visiting Professor at Wenzhou Medical University, China and Duy Tan University, Vietnam, He was an honorary Visiting Scientist at Global Biomedical Technologies Inc., CA, USA (2012-2015). He was awarded his PhD. from Jadavpur Univeristy in 2015. He has authored/edited more than 45 books with several reputed publishers, and published more than 300 papers. His main research interests include Medical Imaging, Machine learning, Computer Aided Diagnosis, Data Mining etc. He is the Indian Ambassador of International Federation for Information Processing (IFIP) - Young ICT Group. Recently, he has been awarded as one among the top 10 most published academics in the field of Computer Science in India (2015-17).


Summary

This book serves as source of introductory material and reference for medical application development and related technologies by providing the detailed implementation of the cutting-edge deep learning methodologies. It targets the cloud based advanced medical application developments using open-source python based deep learning libraries.

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