Patent ID: 7305132

Claim:
A method for classifying measured data into N classes, the measured data in each of the N classes having a class-conditional probability distribution, comprising: projecting the class-conditional probability distributions of the measured data into a likelihood space, in which the projected class-conditional probability distributions are estimated, and in which P X (X|C 1 ), P X (X|C 2 ), . . . , P X (X|C N ) represent true distributions of the measured data from each of the N classes, the subscripted X of the probability P represents a random vector, the X within the parentheses represents a specific instance of the random vector X, and the probability P represents the probability that the random vector X takes the value X, given that the value X of the random vector X belongs to class C i , where i is an integer from 1 to N, and estimates of the true distributions are {tilde over (P)} X (X|C 1 ), {tilde over (P)} X (X|C 2 ), . . . , {tilde over (P)} X (X|C N ), and the likelihood projection of the random vector X is an operation L N (X), resulting in an N-dimensional likelihood vector Y X , and the likelihood vector Y X is Y X =L N (X)=[log({tilde over (P)} X (X|C 1 )) log({tilde over (P)} X (X|C 2 )) . . . log({tilde over (P)} X (X|C N ))]; and classifying the projected class-conditional probability distributions in the likelihood space according to a discriminant classifier in the likelihood space.