Title :
A classifier for feature vectors whose prototypes are a function of multiple continuous parameters
Author :
Mcfee, John E. ; Das, Yogadhish
Author_Institution :
Defence Res. Establ. Suffield, Ralston, Alta., Canada
fDate :
7/1/1988 12:00:00 AM
Abstract :
A fast, compact continuous-parameter (CP) classifier, suitable for a 16-bit microprocessor, is developed for classes which consist of a prototype manifold which is a function of one or more continuous parameters. The classification method consists of approximating the manifold by a number of unit cells and assigning a test vector to the closest cell using a Euclidean distance measure. An experiment is described in which computer-generated magnetic dipole moments are used as feature vectors to classify a set of homogeneous ferrous spheroids. The CP classifier provides accurate estimates of the orientation angles of the test object with error equal to a small fraction of the design set increment (1° out of 15°)
Keywords :
computerised pattern recognition; vectors; Euclidean distance; computerised pattern recognition; feature vector classifier; multiple continuous parameters; Computer errors; Euclidean distance; Magnetic moments; Magnetic noise; Microprocessors; Prototypes; Testing; Uncertainty; Vectors; Voting;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on