Title :
Multidimensional probability density function approximations for detection, classification, and model order selection
Author :
Kay, Steven M. ; Nuttall, Albert H. ; Baggenstoss, Paul M.
Author_Institution :
Dept. of Electr. & Comput. Eng., Rhode Island Univ., Kingston, RI, USA
fDate :
10/1/2001 12:00:00 AM
Abstract :
This paper addresses the problem of calculating the multidimensional probability density functions (PDFs) of statistics derived from known many-to-one transformations of independent random variables (RVs) with known distributions. The statistics covered in the paper include reflection coefficients, autocorrelation estimates, cepstral coefficients, and general linear functions of independent RVs. Through PDF transformation, these results Can be used for general PDF approximation, detection, classification, and model order selection. A model order selection example that shows significantly better performance than the Akaike and MDL method is included
Keywords :
cepstral analysis; correlation methods; function approximation; probability; random processes; signal classification; signal detection; statistical analysis; Akaike method; MDL method; PDF transformation; autocorrelation estimates; cepstral coefficients; general PDF approximation; general linear functions; independent random variables; many-to-one transformations; model order selection; multidimensional PDF approximations; probability density function; reflection coefficients; signal classification; signal detection; statistics; Autocorrelation; Colored noise; Function approximation; Gaussian noise; Multidimensional systems; Probability density function; Random variables; Statistical distributions; Statistics; Testing;
Journal_Title :
Signal Processing, IEEE Transactions on