<i>Digital Spectral Analysis</i> provides a single source that offers complete coverage of the spectral analysis domain. This self-contained work includes details on advanced topics that are usually presented in scattered sources throughout the literature.<br>The theoretical principles necessary for
Digital Spectral Analysis: parametric, non-parametric and advanced methods
- Publisher
- Wiley-ISTE
- Year
- 2011
- Tongue
- English
- Leaves
- 388
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Digital Spectral Analysis provides a single source that offers complete coverage of the spectral analysis domain. This self-contained work includes details on advanced topics that are usually presented in scattered sources throughout the literature.
The theoretical principles necessary for the understanding of spectral analysis are discussed in the first four chapters: fundamentals, digital signal processing, estimation in spectral analysis, and time-series models.
An entire chapter is devoted to the non-parametric methods most widely used in industry.
High resolution methods are detailed in a further four chapters: spectral analysis by stationary time series modeling, minimum variance, and subspace-based estimators.
Finally, advanced concepts are the core of the last four chapters: spectral analysis of non-stationary random signals, space time adaptive processing: irregularly sampled data processing, particle filtering and tracking of varying sinusoids.
Suitable for students, engineers working in industry, and academics at any level, this book provides a rare complete overview of the spectral analysis domain.
β¦ Table of Contents
Content:
Chapter 1 Fundamentals (pages 1β22):
Chapter 2 Digital Signal Processing (pages 23β65):
Chapter 3 Introduction to Estimation Theory with Application in Spectral Analysis (pages 67β104):
Chapter 4 Time?Series Models (pages 105β121):
Chapter 5 Non?Parametric Methods (pages 123β142):
Chapter 6 Spectral Analysis by Parametric Modeling (pages 143β168):
Chapter 7 Minimum Variance (pages 169β206):
Chapter 8 Subspace?Based Estimators and Application to Partially Known Signal Subspaces (pages 207β249):
Chapter 9 Multidimensional Harmonic Retrieval: Exact, Asymptotic, and Modified Crame?ReRao Bounds (pages 251β286):
Chapter 10 Introduction to Spectral Analysis of Non?Stationary Random Signals (pages 287β299):
Chapter 11 Spectral Analysis of Non?uniformly Sampled Signals (pages 301β316):
Chapter 12 SpaceβTime Adaptive Processing (pages 317β360):
Chapter 13 Particle Filtering and Tracking of Varying Sinusoids (pages 361β375):
π SIMILAR VOLUMES
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This book deals with these parametric methods, first discussing those based on time series models, Capon's method and its variants, and then estimators based on the notions of sub-spaces. However, the book also deals with the traditional "analog" methods, now called non-parametric methods, which are
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