Read Online and Download Ebook Fundamentals of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay
It will not take even more time to download this Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay It won't take even more money to print this e-book Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay Nowadays, individuals have been so clever to use the innovation. Why do not you use your device or various other tool to save this downloaded soft data publication Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay Through this will let you to always be gone along with by this e-book Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay Naturally, it will be the very best buddy if you review this publication Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay till finished.
Fundamentals of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay
After couple of time, lastly guide that we as well as you wait for is coming. So eased to get this fantastic publication readily available to present in this web site. This is guide, the DDD. If you still really feel so hard to get the published publication in guide store, you can join with us once again. If you have ever before obtained guide in soft documents from this book, you can quickly get it as the referral currently.
This is why we recommend you to consistently see this web page when you require such book Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay, every book. By online, you could not getting guide shop in your city. By this online library, you could find guide that you actually wish to check out after for long period of time. This Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay, as one of the advised readings, oftens be in soft documents, as all book collections right here. So, you might also not get ready for few days later on to receive and check out the book Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay.
While the other people in the establishment, they are unsure to discover this Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay directly. It might require more times to go store by shop. This is why we expect you this website. We will certainly supply the most effective way and referral to get the book Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay Even this is soft documents book, it will be convenience to carry Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay wherever or save at home. The distinction is that you might not require move guide Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay area to place. You could need just duplicate to the other gadgets.
As soon as more, checking out behavior will certainly constantly provide useful benefits for you. You could not need to spend lots of times to review guide Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay Just set apart numerous times in our extra or leisure times while having dish or in your office to read. This Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay will certainly show you brand-new thing that you can do now. It will certainly assist you to improve the high quality of your life. Event it is just an enjoyable book Fundamentals Of Statistical Signal Processing, Volume II: Detection Theory By Steven M. Kay, you can be healthier and also a lot more fun to delight in reading.
From the Inside Flap
Preface
This text is the second volume of a series of books addressing statistical signal processing. The first volume, Fundamentals of Statistical Signal Processing: Estimation Theory, was published in 1993 by Prentice-Hall, Inc. Henceforth, it will be referred to as Kay-I 1993.
This second volume, entitled Fundamentals of Statistical Signal Processing: Detection Theory, is the application of statistical hypothesis testing to the detection of signals in noise. The series has been written to provide the reader with a broad introduction to the theory and application of statistical signal processing. Hypothesis testing is a subject that is standard fare in the many books available dealing with statistics.
These books range from the highly theoretical expositions written by statisticians to the more practical treatments contributed by the many users of applied statistics.
This text is an attempt to strike a balance between these two extremes. The particular audience we have in mind is the community involved in the design and implementation of signal processing algorithms. As such, the primary focus is on obtaining optimal detection algorithms that may be implemented on a digital computer. The data sets are therefore assumed to be samples of a continuous-time waveform or a sequence of data points. The choice of topics reflects what we believe to be the important approaches to obtaining an optimal detector and analyzing its performance.
As a consequence, some of the deeper theoretical issues have been omitted with references given instead. It is the author's opinion that the best way to assimilate the material on detection theory is by exposure to and working with good examples. Consequently, there are numerous examples that illustrate the theory and others that apply the theory to actual detection problems of current interest.
We have made extensive use of the MATLAB scientific programming language (Version 4.2b) Footnote: MATLAB is a registered trademark of The MathWorks, Inc. for all computer-generated results. In some cases, actual MATLAB programs have been listed where a program was deemed to be of sufficient utility to the reader.
Additionally, an abundance of homework problems has been included. They range from simple applications of the theory to extensions of the basic concepts. A solutions manual is available from the author. To aid the reader, summary sections have been provided at the beginning of each chapter. Also, an overview of all the principal detection approaches and the rationale for choosing a particular method can be found in Chapter 11.
Detection based on simple hypothesis testing is described in Chapters 3--5, while that based on composite hypothesis testing (to accomodate unknown parameters) is the subject of Chapters 6--9.
Other chapters address detection in nonGaussian noise (Chapter 10), detection of model changes (Chapter 12), and extensions for complex/vector data useful in array processing (Chapter 13). This book is an outgrowth of a one-semester graduate level course on detection theory given at the University of Rhode Island. It includes somewhat more material than can actually be covered in one semester. We typically cover most of Chapters 1--10, leaving the subjects of model change detection and complex data/vector data extensions to the student. It is also possible to combine the subjects of estimation and detection into a single semester course by a judicious choice of material from Volumes I and II.
The necessary background that has been assumed is an exposure to the basic theory of digital signal processing, probability and random processes, and linear and matrix algebra. This book can also be used for self-study and so should be useful to the practicing engineer as well as the student.
The author would like to acknowledge the contributions of the many people who over the years have provided stimulating discussions of research problems, opportunities to apply the results of that research, and support for conducting research.
Thanks are due to my colleagues L. Jackson, R. Kumaresan, L. Pakula, and P. Swaszek of the University of Rhode Island, and L. Scharf of the University of Colorado.
Exposure to practical problems, leading to new research directions, has been provided by H. Woodsum of Sonetech, Bedford, New Hampshire, and by D. Mook and S. Lang of Sanders, a Lockheed-Martin Co., Nashua, New Hampshire.
The opportunity to apply detection theory to sonar and the research support of J. Kelly of the Naval Undersea Warfare Center, J. Salisbury, formerly of the Naval Undersea Warfare Center, and D. Sheldon of the Naval Undersea Warfare Center, Newport, Rhode Island are also greatly appreciated.
Thanks are due to J. Sjogren of the Air Force Office of Scientific Research, whose support has allowed the author to investigate the field of statistical signal processing. A debt of gratitude is owed to all my current and former graduate students. They have contributed to the final manuscript through many hours of pedagogical and research discussions as well as by their specific comments and questions. In particular, P. DjuriĆ{c} of the State University of New York proofread much of the manuscript, and S. Talwalkar of Motorola, Plantation, Florida proofread parts of the manuscript and helped with the finer points of MATLAB.
Steven M. Kay University of Rhode Island Kingston, RI 02881 Email: kay@ele.uri
From the Back Cover
The most comprehensive overview of signal detection available. This is a thorough, up-to-date introduction to optimizing detection algorithms for implementation on digital computers. It focuses extensively on real-world signal processing applications, including state-of-the-art speech and communications technology as well as traditional sonar/radar systems. Start with a quick review of the fundamental issues associated with mathematical detection, as well as the most important probability density functions and their properties. Next, review Gaussian, Chi-Squared, F, Rayleigh, and Rician PDFs, quadratic forms of Gaussian random variables, asymptotic Gaussian PDFs, and Monte Carlo Performance Evaluations. Three chapters introduce the basics of detection based on simple hypothesis testing, including the Neyman-Pearson Theorem, handling irrelevant data, Bayes Risk, multiple hypothesis testing, and both deterministic and random signals. The author then presents exceptionally detailed coverage of composite hypothesis testing to accommodate unknown signal and noise parameters. These chapters will be especially useful for those building detectors that must work with real, physical data. Other topics covered include:
About the Author
STEVEN M. KAY is Professor of Electrical Engineering at the University of Rhode Island and a leading expert in signal processing.
Fundamentals of Statistical Signal Processing, Volume II: Detection Theory
By Steven M. Kay PDF
Fundamentals of Statistical Signal Processing, Volume II: Detection Theory
By Steven M. Kay EPub
Fundamentals of Statistical Signal Processing, Volume II: Detection Theory
By Steven M. Kay Doc
Fundamentals of Statistical Signal Processing, Volume II: Detection Theory
By Steven M. Kay iBooks
Fundamentals of Statistical Signal Processing, Volume II: Detection Theory
By Steven M. Kay rtf
Fundamentals of Statistical Signal Processing, Volume II: Detection Theory
By Steven M. Kay Mobipocket
Fundamentals of Statistical Signal Processing, Volume II: Detection Theory
By Steven M. Kay Kindle