Accession Number : AD0683575

Title :   DETERMINING THE STATISTICAL CHARACTERISTICS OF DISCERNIBLE IMAGES IN THE SELF-INSTRUCTION MODE,

Corporate Author : FOREIGN TECHNOLOGY DIV WRIGHT-PATTERSON AFB OHIO

Personal Author(s) : Milenkii,A. V.

Report Date : 04 OCT 1968

Pagination or Media Count : 20

Abstract : The need to employ the learning process (also termed self-learning or learning without a teacher) arises in many important practical cases where a priori information on patterns is insufficiently complete or insufficiently reliable and when, for one reason or another, the customary teaching procedure cannot be organized. In such cases the division of pattern realizations into classes is based on intuitively introduced measures of compactness. A more rigorous approach, however, is that of estimating the statistical characteristics of the recognized patterns with respect to the totality of the incoming realizations and then classifying them in accordance with these estimates on the basis of Bayes decision rules. Such an approach makes it possible to optimize the division and to use many of the findings obtained with the aid of the theory of statistical decisions in a broad class of problems involving limited a priori information.

Descriptors :   (*PROGRAMMED INSTRUCTION, PATTERN RECOGNITION), (*PATTERN RECOGNITION, STATISTICAL ANALYSIS), STATISTICAL DISTRIBUTIONS, DECISION THEORY, PROBABILITY, USSR

Subject Categories : Humanities and History
      Bionics

Distribution Statement : APPROVED FOR PUBLIC RELEASE