Biomedical Signal Processing and Signal Modeling
Wiley Series in Telecommunications and Signal Processing (Series Nr. 1)

1. Edition January 2001
XVI, 520 Pages, Hardcover
Wiley & Sons Ltd
Short Description
Biomedical signal processing deals with: topics related to the acquisition and processing of biomedical signals for extracting information; and topics related to the interpretation of the nature of the physical processes that created the signals or how a given process alters the characteristics of a signal.
A biomedical engineering perspective on the theory, methods, and applications of signal processing This book provides a unique framework for understanding signal processing of biomedical signals and what it tells us about signal sources and their behavior in response to perturbation. Using a modeling-based approach, the author shows how to perform signal processing by developing and manipulating a model of the signal source, providing a logical, coherent basis for recognizing signal types and for tackling the special challenges posed by biomedical signals-including the effects of noise on the signal, changes in basic properties, or the fact that these signals contain large stochastic components and may even be fractal or chaotic. Each chapter begins with a detailed biomedical example, illustrating the methods under discussion and highlighting the interconnection between the theoretical concepts and applications. The author has enlisted experts from numerous subspecialties in biomedical engineering to help develop these examples and has made most examples available as Matlab or Simulink files via anonymous ftp. Without the need for a background in electrical engineering, readers will become acquainted with proven techniques for analyzing biomedical signals and learn how to choose the appropriate method for a given application.
Memory and Correlation.
The Impulse Response.
Frequency Response.
Modeling Continuous-Time Signals as Sums of Sine Waves.
Responses of Linear Continuous-Time Filters to Arbitrary Inputs.
Modeling Signals as Sums of Discrete-Time Sine Waves.
Noise Removal and Signal Compensation.
Modeling Stochastic Signals as Filtered White Noise.
Scaling and Long-Term Memory.
Nonlinear Models of Signals.
Assessing Stationarity and Reproducibility.
Appendix.