37 of 42 people found the following review helpful:
5.0 out of 5 stars
Another great DSP text by Manolakis!, April 2, 2000
By A Customer
This review is from: Statistical and Adaptive Signal Processing: Spectral Estimation, Signal Modeling, Adaptive Filtering and Array Processing (Hardcover)
I believe this book is destined to become the "classic" graduate text used to teach statistical and adaptive digital signal processing.
If you enjoyed the introductory text "Digital Signal Processing" by Proakis and Manolakis (Prentice-Hall 1996), I think you will enjoy this book by Manolakis, Ingle, and Kogon. It is written in a similar style, with an introduction to each chapter previewing the material to be covered, a logical development of the material including examples, and a conclusion summarizing the high points of the material covered.
At chapter's end, there is a set of well thought out exercises ranging from easy to difficult. There are no answers to the problems in the back of the book, but there are enough examples in each chapter that one should be able to tackle most of the exercises. Some of the exercises require MATLAB. The authors have written some custom MATLAB functions which are available from the publisher as an e-Mail attachment.
I would say this book is written at the graduate level and requires knowledge of several disciplines: 1) DSP- At the level of Proakis + Manolakis intro text (cited above). 2) Linear Algebra- Cramer's rule, LDU factorization, eigenvalues, eigenvectors, Hermitian and Unitary matrices, etc. 3) Statistics- Random variables, averages, variances, estimators, sampling distributions, auto- and cross- correlations. I had no previous knowledge of stochastic processes, and was able to pick up enough from Chapter 3 to get through the rest of the book.
This book is, above all, a mathematical text written for engineers. It describes the theory and equations underlying statistical filters.
There is a lot of meat in each section. I typically had to read each section an average of 3 times for it to sink in.
With help from Figure 1.2.8 of the book, it covers the following material:
Chapter 1- Introduction to applications of spectral estimation, signal modeling, adaptive filtering, and array processing.
Chapter 2- Review of discrete-time signal processing.
Chapter 3- Review of random vectors and signals: properties, linear transformations, and estimation.
Chapter 4- Random signal models with rational system functions (AR, MA, ARMA, ARIMA).
Chapter 5- Nonparametric spectral estimation.
Chapter 6- Optimum filters and predictors -- matched filters (including Wiener) and eigenfilters.
Chapter 7- Algorithms and structures for optimum filtering (including algorithms of Levinson, Levinson-Durbin, Schur, Kalman, ...)
Chapter 8- Least-squares filtering and prediction (normal equations, orthogonalization, SVD).
Chapter 9- Signal modeling and parametric spectrum estimation.
Chapter 10- Adaptive filters: Design, performance, implementation, and applications (includes steepest descent, LMS, NLMS, CRLS, QR-RLS, fast RLS, fast Kalman, RLS lattice-ladder, ...).
Chapter 11- Array processing: theory, algorithms, and applications.
Chapter 12- Higher order statistics, blind deconvolution and equalization, fractional and fractal random signal models.
Appendix B includes the clearest, most graphic example of LaGrange multipliers I have ever seen!
Note that this book deliberately leaves out the following topics because it is NOT meant to be a text that covers ALL of ADVANCED DSP: Multirate DSP, Wavelets, etc.
I highly recommend this book to anyone involved in spectral estimation, signal modeling, adaptive filtering, or array processing.
Help other customers find the most helpful reviews
Was this review helpful to you? Yes
No
19 of 20 people found the following review helpful:
2.0 out of 5 stars
avoid this book, March 21, 2002
By A Customer
This review is from: Statistical and Adaptive Signal Processing: Spectral Estimation, Signal Modeling, Adaptive Filtering and Array Processing (Hardcover)
This book was the text for the first part of a sequence on statistical signal processing which I took. We covered chapters 1-7, chapters 4-7 in great detail.
This book almost never explains things well. It has a lot of detail and a lot of repetition, but the essence is usually poorly explained. For every important concept, like the Levinson-Durban algorithm or Yule-Walker equations, I had to read other books to figure them out. Stoica has more insight in 2 pages on the Y-W equations then Manolakis has in a dozen. Also the structure and flow of the detailed developments is astonishingly bad. For example, there are algorithms with steps out of order.
Another problem is the huge number of mistakes. It will take you about an hour per chapter to fix each chapter using the publishers errata sheet. But there are errors not included on the errata list, so watch out.
The few good things about this book include a very detailed table of contents, and useful introductory discussions for each chapter and chapter 1.
This book is a disaster and reads like a so-so first draft. Shame on the publisher for not enforcing more quality. Instead of this loser, I recommend Adaptive Filters by Haykin, Spectral Analysis by Stoica, and Mathematical Methods for Signal Processing by Moon and Stirling among others.
Help other customers find the most helpful reviews
Was this review helpful to you? Yes
No
11 of 11 people found the following review helpful:
2.0 out of 5 stars
Broad coverage but not focuss., November 9, 2003
This review is from: Statistical and Adaptive Signal Processing: Spectral Estimation, Signal Modeling, Adaptive Filtering and Array Processing (Hardcover)
I buy this book about 3 years ago (2000).
My aim was to get a better understanding on statistical dsp.
I got the lecture on advanced dsp on my master degree. I must confess that for me this is not an easy subject to master. Therefore a clear and well explained book on this subject is a very important for me.
But I was dissapointed when I got this book!
Yes, it is broad of coverage, but the content is not focuss.
The connection between previous and next parts of discussion and chapters mostly does not show a clear link.
Yes, it is full of facts, but I need more than bulk of facts: THE WAY OF THINKING, why we do and why we don't do.
It didn't help me to master the subject.
For the reader who want an easy to read and clear in explaination as well as good reasoning and examples, I would suggest to go for another book such as Steven M Kay (Volume 1, Estimation Theory). For me this is a lot better investment of time and money!.
Thank you for reading my review.
Help other customers find the most helpful reviews
Was this review helpful to you? Yes
No