AnIntroductionto StatisticalSignalProcessing
4.18 Stationarity 249 4.19 Asymptotically uncorrelated processes 255 4.20 Problems 258 5 Second-order theory 275 5.1 Linear filtering of random processes 276 5.2 Linear systems I/O relations 278 5.3 Power spectral densities 284 5.4 Linearly filtered uncorrelated processes 286 5.5 Linear modulation 292 5.6 White noise 296 5.7 ⋆Time averages 299
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