Title :
The Hilbert space geometry of the stochastic Rihaczek distribution
Author :
Scharf, Louis L. ; Friedlander, Benjamin ; Flandrin, Patrick ; Hanssen, Alfred
Author_Institution :
Dept. of ECE & Stats., Colorado State Univ., Ft. Collins, CO, USA
Abstract :
Beginning with the Cramer-Loeve spectral representation for a nonstationary discrete-time random process, one may derive the stochastic Rihaczek distribution as a natural time-frequency distribution. This distribution is within one Fourier transform of the time-varying correlation and the frequency-varying correlogram, and within two of the ambiguity function. But, more importantly, it is a complex Hilbert space inner product, or cross-correlation, between the time series and its one-term Fourier expansion. To this inner product we may attach an illuminating geometry. Moreover, the Rihaczek distribution determines a time-varying Wiener filter for estimating the time series from its local spectrum, the error covariance of the estimator, and the related time-varying coherence. The squared coherence is the magnitude-squared of the complex Rihaczek distribution, normalized by its time and frequency marginals. It is this squared coherence that determines the time-varying localization of the time series in frequency. Most of these insights extend to the characterization of time-varying and random channels, in which case the stochastic Rihaczek distribution is a fine-grained characterization of the channel that complements the coarse-grained characterization given by the ambiguity function.
Keywords :
Fourier transforms; Hilbert spaces; Wiener filters; correlation methods; covariance analysis; parameter estimation; random processes; signal representation; spectral analysis; stochastic processes; time series; time-frequency analysis; time-varying channels; time-varying filters; Cramer-Loeve spectral representation; Fourier transform; ambiguity function; coarse-grained characterization; complex Hilbert space; cross-correlation; discrete-time process; error covariance; fine-grained characterization; illuminating geometry; inner product; local spectrum; magnitude-squared distribution; nonstationary random process; one-term Fourier expansion; random channels; squared coherence; stochastic Rihaczek distribution; time series estimation; time-frequency distribution; time-varying Wiener filter; time-varying channels; time-varying coherence; Contracts; Fourier transforms; Geometry; Hilbert space; Physics; Random sequences; Random variables; Stochastic processes; Time frequency analysis; Wiener filter;
Conference_Titel :
Signals, Systems and Computers, 2001. Conference Record of the Thirty-Fifth Asilomar Conference on
Conference_Location :
Pacific Grove, CA, USA
Print_ISBN :
0-7803-7147-X
DOI :
10.1109/ACSSC.2001.987018