<span>Advanced Methods in Biomedical Signal Processing and Analysis</span><span> presents state-of-the-art methods in biosignal processing, including recurrence quantification analysis, heart rate variability, analysis of the RRI time-series signals, joint time-frequency analyses, wavelet transforms
Advances in Processing and Pattern Analysis of Biological Signals
β Scribed by Will Gersch (auth.), Isak Gath, Gideon F. Inbar (eds.)
- Publisher
- Springer US
- Year
- 1996
- Tongue
- English
- Leaves
- 429
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
In recent years there has been rapid progress in the development of signal processing in general, and more specifically in the application of signal processing and pattern analysis to biological signals. Techniques, such as parametric and nonparametric spectral estimation, higher order spectral estimation, time-frequency methods, wavelet transform, and identifiΒ cation of nonlinear systems using chaos theory, have been successfully used to elucidate basic mechanisms of physiological and mental processes. Similarly, biological signals recorded during daily medical practice for clinical diagnostic procedures, such as electroenΒ cephalograms (EEG), evoked potentials (EP), electromyograms (EMG) and electrocardioΒ grams (ECG), have greatly benefitted from advances in signal processing. In order to update researchers, graduate students, and clinicians, on the latest developments in the field, an International Symposium on Processing and Pattern Analysis of Biological Signals was held at the Technion-Israel Institute of Technology, during March 1995. This book contains 27 papers delivered during the symposium. The book follows the five sessions of the symposium. The first section, Processing and Pattern Analysis of Normal and Pathological EEG, accounts for some of the latest developments in the area of EEG processing, namely: time varying parametric modeling; non-linear dynamic modeling of the EEG using chaos theory; Markov analysis; delay estimation using adaptive least-squares filtering; and applications to the analysis of epileptic EEG, EEG recorded from psychiatric patients, and sleep EEG.
β¦ Table of Contents
Front Matter....Pages i-ix
Front Matter....Pages xi-xi
Some New Tools for EEG Modeling and Analysis....Pages 1-19
Signal Processing of EEG: Evidence for Chaos or Noise. An Application to Seizure Activity in Epilepsy....Pages 21-31
Markovian Analysis of EEG Signal Dynamics in Obsessive-Compulsive Disorder....Pages 33-44
EEG Sleep Staging Using Vectorial Autoregressive Models....Pages 45-55
Processing of Epileptic EEG....Pages 57-69
Simultaneous EEG Recordings from Olfactory and Limbic Brain Structures: Limbic Markers during Olfactory Perception....Pages 71-84
Front Matter....Pages N1-N1
Single Sweep Analysis of Evoked and Event Related Potentials....Pages 85-102
Spatio-Temporal Source Estimation of Evoked Potentials by Wavelet-Type Decomposition....Pages 103-122
Modeling and Estimation of Amplitude and Time Shifts in Single Evoked Potential Components....Pages 123-136
Testing for Synchronization in Evoked Potentials Using Higher Order Spectra Technique....Pages 137-144
Analyses of Transient and Time-Varying Evoked Potentials for Detection of Brain Injury....Pages 145-165
Front Matter....Pages N3-N3
Detection and Quantification of Correlations in Neural Populations by Coherence Analysis....Pages 167-182
System Identification of Spiking Sensory Neurons Using Realistically Constrained Nonlinear Time Series Models....Pages 183-194
Temporal Encoding of Visual Features by Cortical Neurons....Pages 195-204
Coherent Dynamics in the Frontal Cortex of the Behaving Monkey....Pages 205-224
Front Matter....Pages N5-N5
Analysis of Heart Rate Variability....Pages 225-234
The Heart Rate Variability Signal....Pages 235-249
ECG Arrythmia Analysis: Design and Evaluation Strategies....Pages 251-272
Fundamental Analyses of Ventricular Fibrillation Signals by Parametric, Nonparametric, and Dynamical Methods....Pages 273-295
Fetal ECG Detection and Applications....Pages 297-305
Front Matter....Pages N5-N5
Processing, Feature Extraction and Classification of Body Surface Potential Maps....Pages 307-318
Front Matter....Pages N7-N7
Source Characteristics from Inverse Modeling of EMG Signals....Pages 319-338
The EMG as a Window to the Brain: Signal Processing Tools to Enhance the View....Pages 339-356
Multi-Channel EMG Processing....Pages 357-374
Estimation of Human Elbow Joint Mechanical Transfer Function during Steady State and during Cyclical Movements....Pages 375-390
Characterizing and Modeling Human Arm Movements: Insights into Motor Organization....Pages 391-411
Processing and Pattern Analysis of Handwriting Movements....Pages 413-420
Back Matter....Pages 421-424
β¦ Subjects
Biomedical Engineering
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