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Statistical Signal Processing of Complex-Valued Data

Statistical Signal Processing of Complex-Valued Data

Statistical Signal Processing of Complex-Valued Data

The Theory of Improper and Noncircular Signals
Peter J. Schreier , University of Newcastle, New South Wales
Louis L. Scharf , Colorado State University
March 2010
Hardback
9780521897723

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    Complex-valued random signals are embedded in the very fabric of science and engineering, yet the usual assumptions made about their statistical behavior are often a poor representation of the underlying physics. This book deals with improper and noncircular complex signals, which do not conform to classical assumptions, and it demonstrates how correct treatment of these signals can have significant payoffs. The book begins with detailed coverage of the fundamental theory and presents a variety of tools and algorithms for dealing with improper and noncircular signals. It provides a comprehensive account of the main applications, covering detection, estimation, and signal analysis of stationary, nonstationary, and cyclostationary processes. Providing a systematic development from the origin of complex signals to their probabilistic description makes the theory accessible to newcomers. This book is ideal for graduate students and researchers working with complex data in a range of research areas from communications to oceanography.

    • Systematic development from the origin of complex signals to their probabilistic description makes the theory of complex signals accessible to new-comers
    • Covers the three main branches of signal processing - detection, estimation, and signal analysis - for an all-inclusive account of the main applications
    • Shows why complex-valued descriptions are more powerful and insightful, enabling readers to rephrase their results for new interpretations and insights

    Reviews & endorsements

    "This book must be in the personal library of everyone who deals with random complex variables."
    Guy Jumarie, Mathematical Reviews

    See more reviews

    Product details

    April 2010
    Adobe eBook Reader
    9780511686696
    0 pages
    0kg
    55 b/w illus. 3 tables
    This ISBN is for an eBook version which is distributed on our behalf by a third party.

    Table of Contents

    • 1. The origins and uses of complex signals
    • 2. Introduction to complex random vectors and processes
    • 3. Second-order description of complex random vectors
    • 4. Correlation analysis
    • 5. Estimation
    • 6. Performance bounds for parameter estimation
    • 7. Detection
    • 8. Wide-sense stationary processes
    • 9. Nonstationary processes
    • 10. Cyclostationary processes
    • Appendix A. Rudiments of matrix analysis
    • Appendix B. Complex differential calculus (Wirtinger calculus)
    • Appendix C. Introduction to majorization.
      Authors
    • Peter J. Schreier , Universität-Gesamthochschule Paderborn, Germany

      Peter J. Schreier is a Senior Lecturer in the School of Electrical Engineering and Computer Science, The University of Newcastle, Australia. He received his Ph.D. in electrical engineering from the University of Colorado at Boulder in 2003. He currently serves on the Editorial Board of the IEEE Transactions on Signal Processing, and on the IEEE Technical Committee of Machine Learning for Signal Processing.

    • Louis L. Scharf , Colorado State University

      Louis L. Scharf is Professor of Electrical and Computer Engineering and Statistics at Colorado State University. He received his Ph.D. from the University of Washington at Seattle in 1969. He has since received numerous awards for his research contributions to statistical signal processing, including an IEEE Distinguished Lectureship, an IEEE Third Millennium Medal, and the Technical Achievement and Society Awards from the IEEE Signal Processing Society. He is a Life Fellow of the IEEE.