| Introduction | |
| Detection Theory in Signal Processing | |
| The Detection Problem | |
| The Mathematical Detection Problem | |
| Hierarchy of Detection Problems | |
| Role of Asymptotics | |
| Some Notes to the Reader | |
| Summary of Important PDFs | |
| Fundamental Probability Density Functionshfil Penalty - M and Properties | |
| Quadratic Forms of Gaussian Random Variables | |
| Asymptotic Gaussian PDF | |
| Monte Carlo Performance Evaluation | |
| Number of Required Monte Carlo Trials | |
| Normal Probability Paper | |
| MATLAB Program to Compute Gaussian Right-Tail Probability and its Inverse | |
| MATLAB Program to Compute Central and Noncentral c 2 Right-Tail Probability | |
| MATLAB Program for Monte Carlo Computer Simulation | |
| Statistical Decision Theory I | |
| Neyman-Pearson Theorem | |
| Receiver Operating Characteristics | |
| Irrelevant Data | |
| Minimum Probability of Error | |
| Bayes Risk | |
| Multiple Hypothesis Testing | |
| Neyman-Pearson Theorem | |
| Minimum Bayes Risk Detector - Binary Hypothesis | |
| Minimum Bayes Risk Detector - Multiple Hypotheses | |
| Deterministic Signals | |
| Matched Filters | |
| Generalized Matched Filters | |
| Multiple Signals | |
| Linear Model | |
| Signal Processing Examples | |
| Reduced Form of the Linear Model1 | |
| Random Signals | |
| Estimator-Correlator | |
| Linear Model1 | |
| Estimator-Correlator for Large Data Records | |
| General Gaussian Detection | |
| Signal Processing Example | |
| Detection Performance of the Estimator-Correlator | |
| Statistical Decision Theory II | |
| Composite Hypothesis Testing | |
| Composite Hypothesis Testing Approaches | |
| Performance of GLRT for Large Data Records | |
| Equivalent Large Data Records Tests | |
| Locally Most Powerful Detectors | |
| Multiple Hypothesis Testing | |
| Asymptotically Equivalent Tests - No Nuisance Parameters | |
| Asymptotically Equivalent Tests - Nuisance Parameters | |
| Asymptotic PDF of GLRT | |
| Asymptotic Detection Performance of LMP Test | |
| Alternate Derivation of Locally Most Powerful Test | |
| Derivation of Generalized ML Rule | |
| Deterministic Signals with Unknown Parameters | |
| Signal Modeling and Detection Performance | |
| Unknown Amplitude | |
| Unknown Arrival Time | |
| Sinusoidal Detection | |
| Classical Linear Model | |
| Signal Processing Examples | |
| Asymptotic Performance of the Energy Detector | |
| Derivation of GLRT for Classical Linear Model | |
| Random Signals with Unknown Parameters | |
| Incompletely Known Signal Covariance | |
| Large Data Record Approximations | |
| Weak Signal Detection | |
| Signal Processing Example | |
| Derivation of PDF for Periodic Gaussian Random Process | |
| Unknown Noise Parameters | |
| General Considerations | |
| White Gaussian Noise | |
| Colored WSS Gaussian Noise | |
| Signal Processing Example | |
| Derivation of GLRT for Classical Linear Model for s 2 Unknown | |
| Rao Test for General Linear Model with Unknown Noise Parameters | |
| Asymptotically Equivalent Rao Test for Signal Processing Example | |
| NonGaussian Noise | |
| NonGaussian Noise Characteristics | |
| Known Deterministic Signals | |
| Deterministic Signals with Unknown Parameters | |
| Signal Processing Example | |
| Asymptotic Performance of NP Detector for Weak Signals | |
| BRao Test for Linear Model Signal with IID NonGaussian Noise | |
| Summary of Detectors | |
| Detection Approaches | |
| Linear Model | |
| Choosing a Detector | |
| Other Approaches and Other Texts | |
| Model Change Detection | |
| Description of Problem | |
| Extensions to the Basic Problem | |
| Multiple Change Times | |
| Signal Processing Examples | |
| General Dynamic Programming Approach to Segmentation | |
| MATLAB Program for Dynamic Programming | |
| Complex/Vector Extensions, and Array Processing | |
| Known PDFs | |
| PDFs with Unknown Parameters | |
| Detectors for Vector Observations | |
| Estimator-Correlator for Large Data Records | |
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