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Multi-Pitch Estimation [Pehme köide]

Periodic signals can be decomposed into sets of sinusoids having frequencies that are integer multiples of a fundamental frequency. The problem of finding such fundamental frequencies from noisy observations is important in many speech and audio applications, where it is commonly referred to as pitch estimation. These applications include analysis, compression, separation, enhancement, automatic transcription and many more. In this book, an introduction to pitch estimation is given and a number of statistical methods for pitch estimation are presented. The basic signal models and associated estimation theoretical bounds are introduced, and the properties of speech and audio signals are discussed and illustrated. The presented methods include both single- and multi-pitch estimators based on statistical approaches, like maximum likelihood and maximum a posteriori methods, filtering methods based on both static and optimal adaptive designs, and subspace methods based on the principles of subspace orthogonality and shift-invariance. The application of these methods to analysis of speech and audio signals is demonstrated using both real and synthetic signals, and their performance is assessed under various conditions and their properties discussed. Finally, the estimators are compared in terms of computational and statistical efficiency, generalizability and robustness.
Synthesis Lectures on Speech & Audio Processing iii
Contents ix
Preface xiii
Symbols and Notation xv
Abbreviations xvii
Fundamentals
1(24)
Introduction
1(1)
Related Work
2(1)
Some Applications
3(3)
Signal Models
6(6)
Covariance Matrix Model
12(2)
Speech and Audio Signals
14(4)
Other Signal Models
18(1)
Parameter Estimation Bounds
19(3)
Evaluation of Pitch Estimators
22(3)
Statistical Methods
25(32)
Introduction
25(1)
Maximum Likelihood Estimation
25(2)
Noise Covariance Matrix Estimation
27(2)
White Noise Case
29(4)
Some Maximum A Posteriori Estimators
33(5)
MAP Model and Order Selection
38(3)
Fast Multi-Pitch Estimation
41(3)
Expectation Maximization
44(3)
Another Related Method
47(2)
Harmonic Fitting
49(2)
Some Results
51(3)
Discussion
54(3)
Filtering Methods
57(24)
Introduction
57(1)
Comb Filtering
57(3)
Filterbank Interpretation of NLS
60(2)
Optimal Filterbank Design
62(2)
Optimal Filter Design
64(3)
Asymptotic Analysis
67(2)
Inverse Covariance Matrix
69(3)
Variance and Order Estimation
72(2)
Fast Implementation
74(2)
Some Results
76(4)
Discussion
80(1)
Subspace Methods
81(30)
Introduction
81(1)
Signal and Noise Subspace Identification
81(2)
Subspace Properties
83(1)
Pre-Whitening
84(1)
Rank Estimation using Eigenvalues
85(3)
Angles between Subspaces
88(4)
Estimation using Orthogonality
92(7)
Robust Estimation
99(2)
Estimation using Shift-Invariance
101(5)
Some Results
106(2)
Discussion
108(3)
Amplitude Estimation
111(10)
Introduction
111(1)
Least Squares Estimation
111(1)
Capon- and APES-like Amplitude Estimates
112(5)
Some Results and Discussion
117(4)
A The Analytic Signal
121
Bibliography
125
About the Authors
139