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Published byMercy Robertson Modified over 8 years ago
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Random Signals Basic concepts Bibliography Oppenheim’s book, Appendix A. Except A.5. We study a few things that are not in the book.
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Motivation Most signals that we process can be considered to be random. Examples: speech, audio, video, digital communication signals, medical, biological and economic signals. speech Electrocardiogram
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Is this a random signal?
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Mathematical models All signals that we process have finite length. However, it is often useful to consider them as being of infinite length. random signals finite-length – random vectors infinite-length – random processes (stochastic processes)
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A finite-length signal can be considered as an N-dimensional vector realizations of x Finite-length signals
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Full description
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The whole is not just the sum of its parts No
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Example
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Independent random variables
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Second-order description Mean vector (Auto)covariance matrix Notation: In some cases, this description is all we need.
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Also often used: (Auto)correlation matrix Relationship with autocovariance: Note: In Statistics, correlation has a different meaning than here!
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Properties of autocovariance and autocorrelation matrices
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Covariance of independent variables Independence
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Cross-covariance and cross-correlation
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Normal (Gaussian) distribution for real variables constant quadratic form
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Infinite-length signals Their characterization is more difficult than for finite-length random signals. realizations of a stochastic process
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Second-order description Mean Autocovariance function A process is Gaussian if the joint distribution of any set of samples is Gaussian. A Gaussian process is completely characterized by its second-order description. Gaussian processes [Autocorrelation function]
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Stationary processes
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Ergodic processes time average ensemble average mean-square convergence
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Autocorrelation of stationary processes
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Properties of the autocorrelation function
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Power spectrum of stationary processes
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Cross-correlation and cross-covariance
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White noise
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Non-white (colored) noise We can create correlation among the samples by filtering white noise. Autoregressive (AR) process (only poles) Moving-average (MA) process (only zeros) Autoregressive, moving-average (ARMA) process (poles and zeros) pink noise
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