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Signal Processing for Neuroscientists, A Companion Volume: Advanced Topics, Nonlinear Techniques and Multi-Channel Analysis


Signal Processing for Neuroscientists, A Companion Volume: Advanced Topics, Nonlinear Techniques and Multi-Channel Analysis

Paperback by van Drongelen, Wim (Department of Pediatrics, University of Chicago, Chicago, IL, USA)

Signal Processing for Neuroscientists, A Companion Volume: Advanced Topics, Nonlinear Techniques and Multi-Channel Analysis

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£43.34

ISBN:
9780323165143
Publication Date:
27 Aug 2010
Language:
English
Publisher:
Elsevier - Health Sciences Division
Pages:
186 pages
Format:
Paperback
For delivery:
Estimated despatch 22 - 27 May 2024
Signal Processing for Neuroscientists, A Companion Volume: Advanced Topics, Nonlinear Techniques and Multi-Channel Analysis

Description

The popularity of signal processing in neuroscience is increasing, and with the current availability and development of computer hardware and software, it is anticipated that the current growth will continue. Because electrode fabrication has improved and measurement equipment is getting less expensive, electrophysiological measurements with large numbers of channels are now very common. In addition, neuroscience has entered the age of light, and fluorescence measurements are fully integrated into the researcher's toolkit. Because each image in a movie contains multiple pixels, these measurements are multi-channel by nature. Furthermore, the availability of both generic and specialized software packages for data analysis has altered the neuroscientist's attitude toward some of the more complex analysis techniques. This book is a companion to the previously published Signal Processing for Neuroscientists: An Introduction to the Analysis of Physiological Signals, which introduced readers to the basic concepts. It discusses several advanced techniques, rediscovers methods to describe nonlinear systems, and examines the analysis of multi-channel recordings.

Contents

1. Lomb's Algorithm and the Hilbert Transform 2. Modeling 3. Volterra Series 4. Wiener Series 5. Poisson-Wiener Series 6. Decomposition of Multi-Channel Data 7. Causality References

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