Title :
Proper complex random processes with applications to information theory
Author :
Neeser, Fredy D. ; Massey, James L.
Author_Institution :
Signal & Inf. Process. Lab., ETH-Zentrum, Zurich, Switzerland
fDate :
7/1/1993 12:00:00 AM
Abstract :
The covariance of complex random variables and processes, when defined consistently with the corresponding notion for real random variables, is shown to be determined by the usual complex covariance together with a quantity called the pseudo-covariance. A characterization of uncorrelatedness and wide-sense stationarity in terms of covariance and pseudo-covariance is given. Complex random variables and processes with a vanishing pseudo-covariance are called proper. It is shown that properness is preserved under affine transformations and that the complex-multivariate Gaussian density assumes a natural form only for proper random variables. The maximum-entropy theorem is generalized to the complex-multivariate case. The differential entropy of a complex random vector with a fixed correlation matrix is shown to be maximum if and only if the random vector is proper, Gaussian, and zero-mean. The notion of circular stationarity is introduced. For the class of proper complex random processes, a discrete Fourier transform correspondence is derived relating circular stationarity in the time domain to uncorrelatedness in the frequency domain. An application of the theory is presented
Keywords :
channel capacity; entropy; frequency-domain analysis; information theory; intersymbol interference; random processes; time-domain analysis; Gaussian channel capacity; ISI; affine transformations; circular stationarity; complex covariance; complex random variables; complex random vector; complex-multivariate Gaussian density; differential entropy; discrete Fourier transform; fixed correlation matrix; frequency domain; maximum-entropy theorem; proper complex random processes; pseudo-covariance; time domain; uncorrelatedness; wide-sense stationarity; AWGN; Additive white noise; Baseband; Entropy; Information theory; Intersymbol interference; Probability density function; Random processes; Random variables; Vectors;
Journal_Title :
Information Theory, IEEE Transactions on