Title :
A class of upper bounds on probability of error for multihypotheses pattern recognition (Corresp.)
fDate :
11/1/1969 12:00:00 AM
Abstract :
A class of upper bounds on the probability of error for the general multihypotheses pattern recognition problem is obtained. In particular, an upper bound in the class is shown to be a linear functional of the pairwise Bhattacharya coefficients. Evaluation of the bounds requires knowledge of a priori probabilities and of the hypothesis-conditional probability density functions. A further bound is obtained that is independent of a priori probabilities. For the case of unknown a priori probabilities and conditional probability densities, an estimate of the latter upper bound is derived using a sequence of classified samples and Kernel functions to estimate the unknown densities.
Keywords :
Pattern recognition; Abstracts; Feature extraction; Information theory; Integral equations; Intersymbol interference; Kernel; Noise reduction; Pattern recognition; Probability density function; Upper bound;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.1969.1054374