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Signal processing for neuroscientists : introduction to the analysis of physiological signals / Wim van Drongelen.
- Format:
- Book
- Author/Creator:
- Drongelen, Wim van.
- Language:
- English
- Subjects (All):
- Signal processing--Digital techniques.
- Signal processing.
- Neurosciences--Data processing.
- Neurosciences.
- Neurology--Mathematical models.
- Neurology.
- Physiology--Mathematical models.
- Physiology.
- Physical Description:
- 1 online resource (308 p.)
- Edition:
- 1st ed.
- Place of Publication:
- Burlington, Mass. : Academic Press, c2007.
- Language Note:
- English
- Summary:
- Practical information that covers the field of signal processing relevant to neuroscientists and biomedical engineers in a compact format.
- Contents:
- Front cover
- Signal Processing for Neuroscientists
- Copyright page
- Preface
- Table of contents
- Chapter 1: Introduction
- 1.1 OVERVIEW
- 1.2 BIOMEDICAL SIGNALS
- 1.3 BIOPOTENTIALS
- 1.4 EXAMPLES OF BIOMEDICAL SIGNALS
- 1.5 ANALOG-TO-DIGITAL CONVERSION
- 1.6 MOVING SIGNALS INTO THE MATLAB ANALYSIS ENVIRONMENT
- APPENDIX 1.1
- Chapter 2: Data Acquisition
- 2.1 RATIONALE
- 2.2 THE MEASUREMENT CHAIN
- 2.3 SAMPLING AND NYQUIST FREQUENCY IN THE FREQUENCY DOMAIN
- 2.4 THE MOVE TO THE DIGITAL DOMAIN
- APPENDIX 2.1
- Chapter 3: Noise
- 3.1 INTRODUCTION
- 3.2 NOISE STATISTICS
- 3.3 SIGNAL-TO-NOISE RATIO
- 3.4 NOISE SOURCES
- APPENDIX 3.1
- APPENDIX 3.2
- APPENDIX 3.3
- APPENDIX 3.4
- Chapter 4: Signal Averaging
- 4.1 INTRODUCTION
- 4.2 TIME LOCKED SIGNALS
- 4.3 SIGNAL AVERAGING AND RANDOM NOISE
- 4.4 NOISE ESTIMATES AND THE ± AVERAGE
- 4.5 SIGNAL AVERAGING AND NONRANDOM NOISE
- 4.6 NOISE AS A FRIEND OF THE SIGNAL AVERAGER
- 4.7 EVOKED POTENTIALS
- 4.8 OVERVIEW OF COMMONLY APPLIED TIME DOMAIN ANALYSIS TECHNIQUES
- Chapter 5: Real and Complex Fourier Series
- 5.1 INTRODUCTION
- 5.2 THE FOURIER SERIES
- 5.3 THE COMPLEX FOURIER SERIES
- 5.4 EXAMPLES
- APPENDIX 5.1
- APPENDIX 5.2
- Chapter 6: Continuous, Discrete, and Fast Fourier Transform
- 6.1 INTRODUCTION
- 6.2 THE FOURIER TRANSFORM
- 6.3 DISCRETE FOURIER TRANSFORM AND THE FFT ALGORITHM
- 6.4 UNEVENLY SAMPLED DATA
- Chapter 7: Fourier Transform Applications
- 7.1 SPECTRAL ANALYSIS
- 7.2 TOMOGRAPHY
- APPENDIX 7.1
- Chapter 8: LTI Systems, Convolution, Correlation, and Coherence
- 8.1 INTRODUCTION
- 8.2 LINEAR TIME INVARIANT (LTI) SYSTEM
- 8.3 CONVOLUTION
- 8.4 AUTOCORRELATION AND CROSS-CORRELATION
- 8.5 COHERENCE
- APPENDIX 8.1
- Chapter 9: Laplace and z-Transform
- 9.1 INTRODUCTION
- 9.2 THE USE OF TRANSFORMS TO SOLVE ODEs.
- 9.3 THE LAPLACE TRANSFORM
- 9.4 EXAMPLES OF THE LAPLACE TRANSFORM
- 9.5 THE Z-TRANSFORM
- 9.6 THE Z-TRANSFORM AND ITS INVERSE
- 9.7 EXAMPLE OF THE z-TRANSFORM
- APPENDIX 9.1
- APPENDIX 9.2
- APPENDIX 9.3
- Chapter 10: Introduction to Filters: The RC Circuit
- 10.1 INTRODUCTION
- 10.2 FILTER TYPES AND THEIR FREQUENCY DOMAIN CHARACTERISTICS
- 10.3 RECIPE FOR AN EXPERIMENT WITH AN RC CIRCUIT
- Chapter 11: Filters: Analysis
- 11.1 INTRODUCTION
- 11.2 THE RC CIRCUIT
- 11.3 THE EXPERIMENTAL DATA
- APPENDIX 11.1
- APPENDIX 11.2
- APPENDIX 11.3
- Chapter 12: Filters: Specification, Bode Plot, and Nyquist Plot
- 12.1 INTRODUCTION: FILTERS AS LINEAR TIME INVARIANT (LTI) SYSTEMS
- 12.2 TIME DOMAIN RESPONSE
- 12.3 THE FREQUENCY CHARACTERISTIC
- 12.4 NOISE AND THE FILTER FREQUENCY RESPONSE
- Chapter 13: Filters: Digital Filters
- 13.1 INTRODUCTION
- 13.2 IIR AND FIR DIGITAL FILTERS
- 13.3 AR, MA, AND ARMA FILTERS
- 13.4 FREQUENCY CHARACTERISTIC OF DIGITAL FILTERS
- 13.5 MATLAB IMPLEMENTATION
- 13.6 FILTER TYPES
- 13.7 FILTER BANK
- 13.8 FILTERS IN THE SPATIAL DOMAIN
- APPENDIX 13.1
- Chapter 14: Spike Train Analysis
- 14.1 INTRODUCTION
- 14.2 POISSON PROCESSES AND POISSON DISTRIBUTIONS
- 14.3 ENTROPY AND INFORMATION
- 14.4 THE AUTOCORRELATION FUNCTION
- 14.5 CROSS-CORRELATION
- APPENDIX 14.1
- APPENDIX 14.2
- Chapter 15: Wavelet Analysis: Time Domain Properties
- 15.1 INTRODUCTION
- 15.2 WAVELET TRANSFORM
- 15.3 OTHER WAVELET FUNCTIONS
- 15.4 TWO-DIMENSIONAL APPLICATION
- APPENDIX 15.1
- Chapter 16: Wavelet Analysis: Frequency Domain Properties
- 16.1 INTRODUCTION
- 16.2 THE CONTINUOUS WAVELET TRANSFORM (CWT)
- 16.3 TIME FREQUENCY RESOLUTION
- 16.4 MATLAB WAVELET EXAMPLES
- Chapter 17: Nonlinear Techniques
- 17.1 INTRODUCTION
- 17.2 NONLINEAR DETERMINISTIC PROCESSES.
- 17.3 LINEAR TECHNIQUES FAIL TO DESCRIBE NONLINEAR DYNAMICS
- 17.4 EMBEDDING
- 17.5 METRICS FOR CHARACTERIZING NONLINEAR PROCESSES
- 17.6 APPLICATION TO BRAIN ELECTRICAL ACTIVITY
- References
- Index.
- Notes:
- Bibliographic Level Mode of Issuance: Monograph
- Includes bibliographical references (p. 297-300) and index.
- ISBN:
- 1-280-74695-5
- 9786610746958
- 0-08-046775-X
- OCLC:
- 476032337
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