Title :
Compound Sequential Probability Ratio Test for the Classification of Statistically Dependent Patterns
Author :
Hussain, A.B.Shahidul
Author_Institution :
Bell-Northern Research Laboratory
fDate :
4/1/1974 12:00:00 AM
Abstract :
A sequential test procedure for the classification of statistically dependent patterns is developed. The test is based on the optimum (Bayes) compound decision theory and the theory of Wald´s sequential probability ratio test (SPRT). The compound sequential probability ratio (SPRT) is shown to be recursively computable at every instant of the decision process. A two-class recognition problem with first-order Markov dependence among the pattern classes is considered for the purpose of comparing the performance of the CSPRT with that of Wald´s SPRT. It is shown that when the pattern classes are statistically dependent the CSPRT requires, on the average, fewer features per pattern than Wald´s equally reliable SPRT. Finally, the results of computer simulated recognition experiments using CSPRT and other sequential and nonsequential decision schemes are discussed in detail.
Keywords :
Compound decision theory, dependent pattern classes, sequential classification of patterns, sequential probability ratio test (SPRT).; Communication systems; Computational modeling; Computer simulation; Costs; Decision theory; Particle measurements; Pattern recognition; Probability; Sequential analysis; Time measurement; Compound decision theory, dependent pattern classes, sequential classification of patterns, sequential probability ratio test (SPRT).;
Journal_Title :
Computers, IEEE Transactions on
DOI :
10.1109/T-C.1974.223955