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© 2021

Biomedical Signal Processing

Innovation and Applications

  • Iyad Obeid
  • Ivan Selesnick
  • Joseph Picone
Book
  • 301 Downloads

Table of contents

  1. Front Matter
    Pages i-viii
  2. M. Abid, Y. Ouakrim, A. Mitiche, P. A. Vendittoli, N. Hagemeister, N. Mezghani
    Pages 33-61
  3. A. Parekh, I. W. Selesnick, A. Baroni, O. M. Bubu, A. W. Varga, D. M. Rapoport et al.
    Pages 63-84
  4. Chelsea Amanatides, Stephen Hansen, Ariana S. Levitt, Yuqiao Liu, Patrick O’Neill, Damiano Patron et al.
    Pages 85-128
  5. Md Khurshidul Azad, John D’Angelo, Peshala T. Gamage, Shehab Ismail, Richard H. Sandler, Hansen A. Mansy
    Pages 129-159
  6. Steve J. A. Majerus, Rohan Sinha, Binit Panda, Hossein Miri Lavasani
    Pages 161-194
  7. Vinit Shah, Meysam Golmohammadi, Iyad Obeid, Joseph Picone
    Pages 223-255
  8. Back Matter
    Pages 257-261

About this book

Introduction

This book provides an interdisciplinary look at emerging trends in signal processing and biomedicine found at the intersection of healthcare, engineering, and computer science. It examines the vital role signal processing plays in enabling a new generation of technology based on big data, and looks at applications ranging from medical electronics to data mining of electronic medical records. Topics covered include analysis of medical images, machine learning, biomedical nanosensors, wireless technologies, and instrumentation and electrical stimulation. Biomedical Signal Processing: Innovation and Applications presents tutorials and examples of successful applications, and will appeal to a wide range of professionals, researchers, and students interested in applications of signal processing, medicine, and biology.

·Presents an interdisciplinary look at research trends in signal processing and biomedicine;

·Promotes collaboration between healthcare practitioners and signal processing researchers;

·Includes tutorials and examples of successful applications.

Keywords

Adaptive Filtering Big Data Bioinformatics Biomedical Engineering Biomedical Instrumentation Biomedical Nanosensors Data Classification Data Mining Linear Filtering and Prediction Machine Learning Medical Imaging Nonlinear Filtering and Prediction Signal Analysis Signal Processing Time-Frequency

Editors and affiliations

  • Iyad Obeid
    • 1
  • Ivan Selesnick
    • 2
  • Joseph Picone
    • 3
  1. 1.ECE DepartmentTemple UniversityPhiladelphiaUSA
  2. 2.Tandon School of EngineeringNew York UniversityBrooklynUSA
  3. 3.ECE DepartmentTemple UniversityPhiladelphiaUSA

About the editors

Iyad Obeid, PhD, is an associate professor of Electrical and Computer Engineering at Temple University with a secondary appointment in the Department of Bioengineering. His research interests include neural signal processing, biomedical signal processing, and medical instrumentation. His research in these fields has been funded by NIH, NSF, DARPA, and the US Army. Together with Dr. Picone, he is the co-founder of the Neural Engineering Data Consortium, whose goal is to provide large, well curated neural signal data to the biomedical research community. In addition to earlier work on brain machine interfaces, Dr. Obeid’s current research has expanded to include non-parametric unsupervised machine learning as well as concussion and injury assessment instrumentation built using commercial off the shelf sensors.

Ivan Selesnick, PhD, is a professor of Electrical and Computer Engineering at NYU Tandon School of Engineering. He received the BS, MEE, and PhD degrees in Electrical Engineering from Rice University, and joined Polytechnic University in 1997 (now NYU Tandon School of Engineering). He received an Alexander von Humboldt Fellowship in 1997 and a National Science Foundation Career award in 1999. In 2003, he received the Jacobs Excellence in Education Award from Polytechnic University. Dr. Selesnick’s research interests are in signal and image processing, wavelet-based signal processing, sparsity techniques, and biomedical signal processing. He became an IEEE Fellow in 2016, and has been an associate editor for the IEEE Transactions on Image Processing, IEEE Signal Processing Letters, IEEE Transactions on Signal Processing, and IEEE Transactions on Computational Imaging.

Joseph Picone, PhD, is a professor of Electrical and Computer Engineering at Temple University, where he directs the Institute for Signal and Information Processing and is the Associate Director of the Neural Engineering Data Consortium. His primary expertise is in statistical modeling with applications in signal processing, specifically acoustic modeling in speech recognition. A common theme throughout his research career has been a focus on fundamentally new statistical modeling paradigms. He has been an active researcher in various aspects of speech processing for over 35 years. He currently collaborates with the Temple School of Medicine and has previously collaborated with many academic institutions (e.g., the Linguistic Data Consortium, Johns Hopkins), government agencies (e.g., Department of Defense, DARPA) and companies (e.g., MITRE, Texas Instruments). The National Science Foundation, DoD, DARPA and several commercial interests have funded his research. He has published over 200 technical papers and holds 8 patents.

Bibliographic information